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Project number: Project name: Project acronym: Theme: Start date: 265138 New methodologies for multi-hazard and multi-risk assessment methods for Europe MATRIX ENV.2010.6.1.3.4 Multi-risk evaluation and mitigation strategies 01.10.2010 End date: 30.09.2013 (36 months) Deliverable D5.1: State-of-the-art in multi-risk assessment Version: Complete – under review Responsible partner: AMRA Month due: M12 Month delivered: M20 Primary authors(a): ALEXANDER GARCIA-ARISTIZABAL and WARNER MARZOCCHI 01.12.2011 _______________________________ _________________ Signature Date ( (a) see the Acknowledgments section for a full list of people contributing to this document) Reviewer: GORDON WOO 01.12.2011 _______________________________ _________________ Signature Date Authorised: Jochen Zschau 31.05.12 _______________________________ _________________ Signature Date 1 Dissemination Level PU Public Restricted to other programme participants (including the Commission PP Services) Restricted to a group specified by the consortium (including the Commission RE Services) CO Confidential, only for members of the consortium (including the Commission Services) X 2 Abstract The multi-risk concept refers to a complex variety of combinations of risk (i.e. various combinations of hazards and various combinations of vulnerabilities) and for this reason it requires a review of existing concepts of risk, hazard, exposure and vulnerability, within a multi-risk perspective. A multi-risk approach entails a multi-hazard and a multivulnerability perspective. The multi-hazard concept may refer to (1) the fact that different sources of hazard might threaten the same exposed elements (with or without temporal coincidence), or (2) one hazardous event can trigger other hazardous events (cascade effects). On the other hand, the multi-vulnerability perspective may refer to (1) a variety of exposed sensitive targets (e.g. population, infrastructure, cultural heritage, etc.) with possible different vulnerability degree against the various hazards, or (2) time-dependent vulnerabilities, in which the vulnerability of a specific class of exposed elements may change with time as consequence of different factors (as, for example, wearing, the occurrence of other hazardous events, etc.). In this document we consider the main applications and research initiatives in the field of multi-risk, considering both reports from European funded projects (and derived papers) and also other international initiatives (reports and papers). From the bibliographic review performed it emerges that most –if not all- of the initiatives on multi-risk assessment have developed methodological approaches that consider the multi-risk problem in a partial way, since their analyses basically concentrate on risk assessments for different hazards threatening the same exposed elements. Within this framework, the main emphasis has been towards the definition of procedures for the homogenization of spatial and temporal resolution for the assessment of different hazards. For vulnerability instead, being a wider concept, there is a stronger divergence over its definition and assessment methods; considering physical vulnerability issues, a more or less generalized agreement on the use of vulnerability functions (fragility curves) has been reached, which facilitate the application of such a kind of multi-risk analysis, however, for other kinds of vulnerability assessment (e.g. social, environmental, etc.) it is less clear how to integrate them within a multi-risk framework. In this framework the final multi-risk index is generally estimated as a simple aggregation of the single indices estimated for different hazards; other approaches consider a single hazard at a time and multiple exposed elements (e.g. buildings, people, etc.) for the vulnerability, which are combined and weighted according to expert opinion and subjective assignment of weights. The choice of the methodology strongly depends on both the scale of the study and the availability of information (for hazard and vulnerability assessment). Worthy of note, many of the approaches found define theoretical frameworks for the multi-risk assessment that, when applied to real cases, are generally simplified; this is due to the difficulty to obtain the detailed information needed; it is also interesting to point out that many of the reports discuss the importance of the interaction among hazards and cascading of events for a fully multi-hazard perspective, however little effort has been made to define a rigorous methodology. Keywords: Multi-risk, literature review, state-of-the-art 3 Acknowledgments The research leading to these results has received funding from the European Community’s Seventh Framework Programme [FP7/2007-2013] under grant agreement n° 265138. Different partners from the MATRIX project have collaborated in the preparation of this report. For instance, the primary review of all the project reports, papers, etc. performed here have been done by many people from different groups; here we include the entire list of people who participated (alphabetical order of institutions): - AMRA: Alexander Garcia-Aristizabal, Warner Marzocchi; - ASPINALL: Gordon Woo; - BRGM: Arnaud Reveillere, John Douglas, Gonéri Le Cozannet; - CEABN-ISA: Francisco Rego, Conceicao Colaco; - GFZ: Kevin Fleming, Sergiy Vorogushyn; - NGI: Farrokh Nadim, Bjørn Vidar Vangelsten; - TU-Delft: Wouter ter Horst 4 Table of contents Abstract ......................................................................................................................................... 3 Acknowledgments ........................................................................................................................ 4 Table of contents .......................................................................................................................... 5 List of Figures ............................................................................................................................... 7 List of Tables ................................................................................................................................. 9 1. Introduction .......................................................................................................................... 10 2. Summary of the main multi-risk initiatives (global, medium, local) ................................. 13 2.1 Large-scale approaches .............................................................................................................. 13 2.1.1 United Nations Development Program (UNDP, 2004) approach: The Disaster Risk Index (DRI)............................................................................................................................................. 13 2.1.2 The World Bank approach: Natural Disaster Hotspots: A Global Risk analysis (e.g. Dilley et al., 2005). ................................................................................................................................ 15 2.2 Medium-scale approaches .......................................................................................................... 18 2.2.1 EC-TIGRA project: “Multi-hazard risk assessment and zoning: an integrated approach for incorporating natural disaster reduction into sustainable development” (e.g. Del Monaco et al., 1999)............................................................................................................................. 18 2.2.2 The European Multi-Hazard Risk Assessment Project (TEMRAP), (European Commission, 2000) ............................................................................................................................... 19 2.2.3 The Spatial Effects and Management of Natural and Technological Hazards in Europe (ESPON) project (Schmith-Thomé, P. Ed., 2005) ............................................................. 22 2.2.4 The Applied multi-risk mapping of natural hazards for impact assessment (ARMONIA) project (ARMONIA, 2007). ............................................................................................ 26 2.2.5 The Federal Emergency Management Agency initiatives: “Multi-hazard identification and risk assessment” (FEMA, 1997) and “Understanding your risks: identifying hazards and estimating losses” (FEMA, 2001). ...................................................................................................... 34 2.2.6 2.3 The natural- and conflict-related hazards in Asia-Pacific project (OCHA, 2009) ........ 38 Regional’ to ‘Local’ scale approaches ....................................................................................... 40 2.3.1 The “Natural Risk Assessment” (NARAS) project (e.g. Marzocchi et al., 2009) ......... 40 2.3.2 The “Risque Naturel Transverse” (RISK-NAT) project (e.g., Carnec et al., 2005; Douglas 2005, Douglas 2007) ............................................................................................................ 45 2.3.3 The comparative multi-risk assessments for the city of Cologne, Germany (e.g. Grunthal et al., 2006; Kleist et al., 2006; Merz and Thieken, 2009) .............................................. 45 2.3.4 The regional-level multi-risk project in the Piedmont region, Italy: “A methodological approach for the definition of multi-risk maps at regional level: first application” (Carpignano et al., 2009) ................................................................................................................................................ 49 2.3.5 The regional-level initiative of integration of natural and technological risks in Lombardy region, Italy (e.g. Lari et al., 2009) ................................................................................... 53 5 2.3.6 A conceptual model for “Reconsidering the risk assessment concept: Standardizing the impact description as a building block for vulnerability assessment” (Hollenstein, 2005) .. 54 2.3.7 The Cities project for geohazards in Australian urban communities (e.g. Grander et al., 1999; Granger and Haine, 2001); ................................................................................................ 55 2.3.8 A multi-hazard risk assessment for the Turrialba city, Costa Rica (e.g., Van Wasten et al., 2002); ........................................................................................................................................... 59 2.3.9 The Central American Probabilistic Risk Assessment (CAPRA) approach (http://www.ecapra.org);....................................................................................................................... 62 2.3.10 The ‘Regional RiskScape’ project in New Zealand: “Quantitative multi-risk analysis for Natural hazards: a framework for multi-risk modelling.” (Schmidt et al., 2011) .......................... 67 2.3.11 3. 4. Multi-risk initiatives in volcanic areas ................................................................................. 70 Summary of the main results: general maps, risk indices and risk curves ..................... 73 3.1 General considerations ................................................................................................................ 73 3.2 Scale constraints ........................................................................................................................... 74 3.3 Presentation of results: general risk maps, risk curves and risk indices. ............................. 74 3.4 Final remarks, limitations and gaps ........................................................................................... 77 References ........................................................................................................................... 79 6 List of Figures Figure 1.1 Yearly number of (a) multi-hazard and (b) multi-risk related papers published in indexed journals ........................................................................................................................................................... 10 Figure 2.1 physical exposure and relative vulnerability to floods in the period 1980-2000 ............... 15 Figure 2.2 Global distribution of flood risk: mortality (a), total economic loss (b), and economic loss as proportion of GDP density (c) (source: Dilley et al., 2005)................................................................ 18 Figure 2.3 Possible approaches to develop a global economic risk ..................................................... 20 Figure 2.4 (a) aggregated hazard map (based on 15 hazard indicators); (b) Integrated vulnerability map; (c) aggregated risk .............................................................................................................................. 24 Figure 2.5 Integrated vulnerability index ................................................................................................... 25 Figure 2.6 ARMONIA function between hazard types intensity (x-axis) vs. average damage of exposed elements (y-axis) according to scale of analysis ..................................................................... 28 Figure 2.7 ARMONIA function between hazard types intensity (x-axis) vs. probability of damage for different categories of exposed elements (y-axis) according to scale of analysis .............................. 28 Figure 2.8 (a) Hypothetical vulnerability functions relating the intensity of a hazard to a risk metric; (b) Aggregating risk from multi-hazards to assess the average annual risk (source: ARMONIA, 2007). Note: the above curves are hypothetical probability versus risk metric curves to illustrate the method by which risk metrics from different natural hazards can be combined ................................. 30 Figure 2.9 ARMONIA methodology for producing a risk index for a particular hazard ...................... 31 Figure 2.10 Diagram to show hazard levels and indices as a function of probability and intensity . 31 Figure 2.11 Flow chart showing the method used for producing vulnerability and consequence indices............................................................................................................................................................. 32 Figure 2.12 Methodology employed in the ARMONIA Decision Support System (DSS) .................. 33 Figure 2.13 HAZUZ-MH multi-hazard analysis levels ............................................................................. 36 Figure 2.14 Final output of the multi-risk analysis done for the city of Cologne, Germany (Grünthal et al., 2006): Risk curves of the hazards due to windstorms, floods and earthquakes for the city of Cologne for losses concerning buildings and contents in the sectors private housing, commerce and industry (reference year: 2000). .......................................................................................................... 46 Figure 2.15 Sub-tasks for each step of the risk assessment process .................................................. 47 Figure 2.16 (from Merz & Thieken, 2009). The left figure is similar to one from Grünthal et al. ( 2006) for floods with, in addition, a cluster of curves corresponding to the evaluation and propagation of uncertainties through the loss estimation. The contribution of different steps is illustrated on the right figure. ....................................................................................................................... 49 Figure 2.17 The vulnerability model proposed by Carpignano et al. (2009)........................................ 50 Figure 2.18 How the combination of scenarios (i) and damage indicators (j) determine the risk indices Rj,i as used by Carpignano et al. (2009). .................................................................................... 51 Figure 2.19 Example of an aggregated risk map edited by the Civil Protection Department for delivery infrastructures which are exposed to five hazard scenarios: seismic event, industrial accident, flood, landslide and forest fire (Carpignano et al. 2009). ....................................................... 53 Figure 2.20 Comparison of percent building and contents damage from earthquake and cyclone wind ................................................................................................................................................................. 58 Figure 2.21 Comparison of percent building and contents damage from storm tide inundation and flood ................................................................................................................................................................ 59 Figure 2.22 Specific risk curve for flooding (left) and seismic (right). X-axis is annual exceedance probability; Y-axis is estimated damage in Costa Rican currency ........................................................ 62 Figure 2.23 Modelling method of hazards based on triggering events ................................................ 64 7 Figure 2.24 Theoretical framework and model for holistic approach of disaster risk (from Carreño et al., 2007) ........................................................................................................................................................ 67 Figure 2.25 Example output for a risk assessment for the Hawke’s Bay area using the RiskScape software. (a) 1931 historical earthquake event applied to calculate building losses in terms of reconstruction costs (scenaro); (b) 1,000-year design storm event applied to calculate building damages, here expressed as damage ratio (% destroyed); (c) Flood inundation from a Tutaekuri Meeanee river breach scenario applied to calculate building damages, here expressed as damage ratio (% destroyed). ...................................................................................................................................... 69 Figure 2.26 Frequency distributions (% of affected area exceeding certain loss) of total building damage (as reconstruction costs per km2) for the earthquake, flood and storm scenarios for Hawke’s Bay building assets. The earthquake scenario has more higher damages (~70% of damages>$10,000/km2; ~5% of damages>$1,000,000/km2); the flood scenario has more lower damages (for ~50% of the area, damages are negligible; for the rest of the area, the damages vary exponentially between $100,000/km2 and $100 Mio/km2); the storm scenario has similar frequency characteristics compared to the earthquake scenario with higher frequency of damages between $10,000/km2 and $1Mio/km2 (~80% of damages>$10,000/km2, almost 100% of damages < $10 Mio/km2) ............................................................................................................................ 70 Figure 2.27 Diagram of the vulnerability assessment principle used in Thierry et al., 2006 ............. 72 Figure 3.1 Summary of the most important typologies of results of multi-risk methodologies found in literature: (a) example of global distribution of flood risk (expected mortality, from Dilley et al., 2005) ), for details see Figure 2.2 in this document; (b) example of an aggregated risk map from the ESPON methodology (from Schmith-Thomé, P. Ed., 2005); for details see Figure 2.4 in this document; (c) combination of scenarios (i) and damage indicators (j) to determine the risk indices Rj,i (from Carpignano et al., 2009), for details see Figure 2.18 and Figure 2.19; (d) diagram of a proposed ARMONIA function between hazard types intensity (x-axis) vs. average damage of exposed elements (y-axis) according to scale of analysis (from ARMONIA, 2007, for details see Figure 2.6 of this document); (e) comparison of risk curves for the hazards due to windstorms, floods and earthquakes (from Grünthal et al., 2006), for details see Figure 2.14 in this document; (f) risk ranking (from Marzocchi et al., 2009 [Note: the sketch of the risk curves is from ARMONIA, 2007]).............................................................................................................................................................. 77 8 List of Tables Table 2.1 Synthesis of the hazard assessment for floods ...................................................................... 19 Table 2.2 Typological classification of natural hazards in Europe following the TEMRAP approach ......................................................................................................................................................................... 21 Table 2.3 Potential spatial field of application (X mark) of suggested procedures following the state of the art on multi-hazard risk assessment ............................................................................................... 29 Table 2.4 Risk index with the same weighting factor for all hazards .................................................... 41 Table 2.5 Procedures used for single-risk assessment (hazard and vulnerability approaches) in the Casalnuovo case-study of NARAS project ............................................................................................... 44 Table 2.6 parameters used for the hazard assessment (Grunthal et al., 2006) ................................. 48 Table 2.7 Summary of vulnerability assessment methodologies .......................................................... 48 Table 2.8 list of generic components that may characterize the hazard impact intensity (I) ............ 54 Table 2.9 Considered hazards in the Cities project for geohazards in Australian urban communities (e.g. Grander et al., 1999) ....................................................................................................................................... 56 Table 2.10 Intensity parameters considered of the different hazards .................................................. 64 9 1. Introduction The main objective of Task 5.1 of the WP5 of the MATRIX project is to perform a review and to summarize the existing methods and procedures for multi-risk assessment. The goal is to establish the state-of-the-art and to identify both the gaps in knowledge and the possible shortcomings of existing methodologies. This initiative is strongly linked to the Task 3.1 of the WP3 (review of multi-hazard assessment procedures) that is mostly focused on reviewing the state-of-the-art of multi hazard assessment, with particular attention to the work undertaken in previous European projects. From those two tasks, two deliverables are expected as products: D5.1 (State-of-the-art in multi-risk assessment) and D3.1 (Review of existing procedures: review of the existing procedures for multi-risk assessment (with emphasis on multi-hazard procedures)). Given that a multi-risk approach entails a multi-hazard perspective, we have found that the state-of-the-art on both multi-hazard and multi-risk procedures in general share common sources. For this reason, it was decided to keep within deliverable D5.1 the most general discussion on existing multi-risk procedures (and then the correlated multi-hazard approaches), as within D3.1 we concentrate on the specific strategies adopted as ‘multi-hazard’ analyses. The first activity of Task T5.1 (in coordination with T3.1) was to collect the information about the most important past projects and scientific publications in which the multi-risk (and usually the implicit multi-hazard) assessment problem has been approached. For instance, the growing awareness of the need to develop multi-risk approaches has led to the development of different projects in Europe and in different countries with the aim of realizing tools and procedures for successful land planning and management of territory, trying to homogenize existing methodologies within a unique approach. This growing interest on multi-risk procedures is also evident in the scientific literature, which is evidenced if we count the number of publications in indexed journals in which the arguments “multi-hazard” and “multi-risk” have been considered (See Figure 1.1). (a) (b) 2010 2009 year of publication Year of publication 2010 2008 2007 2006 2005 2003 2008 2006 2004 2001 1999 1997 1997 1984 1982 0 2 4 6 8 Number of published papers (ISI journals) Multi-hazard 10 0 2 4 6 8 10 12 Number of published papers (ISI journals) Multi-risk Figure 1.1 Yearly number of (a) multi-hazard and (b) multi-risk related papers published in indexed journals From a conceptual point of view, the multi-risk concept refers to a complex variety of combinations of risk (i.e. various combinations of hazards and various combinations of vulnerabilities) and for this reason it requires a review of existing concepts of risk, hazard, exposure and vulnerability, within a multi-risk perspective (e.g. Carpignano et al., 2009). A multi-risk approach entails a multi-hazard and a multi-vulnerability perspective. The multihazard concept may refer to (1) the fact that different sources of hazard might threaten the same exposed elements (with or without temporal coincidence), or (2) one hazardous event can trigger other hazardous events (cascade effects). On the other hand, the multivulnerability perspective may refer to (1) a variety of exposed sensitive targets (e.g. population, infrastructure, cultural heritage, etc.) with possible different vulnerability degree 10 against the various hazards, or (2) time-dependent vulnerabilities, in which the vulnerability of a specific class of exposed elements may change with time as consequence of different factors (as, for example, wearing, the occurrence of other hazardous events, etc.). In this document we consider the main applications and research initiatives in the field of multi-risk, considering both reports from European funded projects (and derived papers) and also other international initiatives (reports and papers). For instance, a series of European funded projects, as well as different practical applications in different states worldwide, have been found. The different approaches may be distinguished, arbitrarily, as a function of the considered scale (note that some approaches may be traverse different scales): - ‘Large’ scale approaches: at this level, multi-risk procedures generally emphasize the areas with the relative highest risks, highlighting wide (country- or continentsize) areas that are more affected by different hazards that others. These largescale maps are generally based on a simple hazard aggregation (a multi-hazard perspective) and generally represent a simple risk indicator. Within this group we can find the multi-hazard/risk (worldwide) maps developed by the following: o The United Nations Development Program (UNDP, 2004), in which the risk indicator is represented as an average risk of deaths; o The Munich Re maps (http://www.munichre.com), in which hazards are described worldwide for different intensities of the phenomena, and the risk indicator is expressed as average or potential losses; o The World Bank approach, (Dilley et al., 2005), in which a series of risk indices are calculated and presented as hotspots in maps, as for example, the multi-hazard mortality risk hotspots. - ‘Medium’ scale approaches: at this level we can include many of the European initiatives on multi-risk assessment. The most important past projects we can find are as follows: o the EC-TIGRA project (e.g. Del Monaco et al., 1999): “Multi-hazard risk assessment and zoning: an integrated approach for incorporating natural disaster reduction into sustainable development”; o The TEMRAP project (European Commission, 2000): “The European MultiHazard Risk Assessment Project”; the ESPON project (Schmith-Thomé, P. Ed., 2005): “The Spatial Effects and Management of Natural and Technological Hazards in Europe”; o The ARMONIA project (2007): “Applied multi-risk mapping of natural hazards for impact assessment”. Different international projects can be also included within this group, as for example: the Federal Emergency Management Agency initiative (e.g. FEMA, 1997): “Multi-hazard identification and risk assessment”, a regional- to localscale approach in which an interesting decision support system (HAZUS) was developed; and the natural- and conflict-related hazards in Asia-Pacific project (OCHA, 2009), in which a risk index was developed considering for its calculation seven (natural and man-made) hazards. 11 - ‘Regional’ to ‘Local’ scale approaches: at this level, different specific initiatives can be found in literature. In Europe, for example, we found: o The European-funded NARAS project (2006): “Natural Risk Assessment” (e.g. Marzocchi et al., 2009), in which a general discussion of multi-risk assessment with an application to the Casalnuovo municipality, Italy, was performed; o The RISK-NAT (Risque Naturel Transverse) project (e.g., Carnec et al., 2005; Douglas 2005, Douglas 2007); o The comparative multi-risk assessments for the city of Cologne, Germany (e.g. Grunthal et al., 2006; Kleist et al., 2006; Merz and Thieken, 2009) within the DFNK (German Research Network Natural Disasters) project; o A regional-level multi-risk project in the Piedmont region, Italy (Carpignano et al., 2009); o The regional-level initiative of integration of natural and technological risks in Lombardy region, Italy (e.g. Lari et al., 2009); o The distributed framework for multi-risk assessment, an initiative in the framework of the MEDIGRID project, with the aim of to model the effects of forest fires on hydrology and sediment yield (e.g. Bovolo et al., 2009); Among other international (extra European) initiatives we found: the Cities project for geohazards in Australian urban communities (e.g. Grander et al., 1999); a multi-hazard risk assessment for the Turrialba city, Costa Rica (e.g., Van Wasten et al., 2002); the Central American Probabilistic Risk Assessment (CAPRA) approach (http://www.ecapra.org); and the ‘Regional RiskScape’ project in New Zealand (e.g. Schmidt et al., 2011). Finally, three initiatives of kind of multi-risk assessment but considering just volcanic areas (a single or multiple volcanic sources generating different kinds of volcanic-related hazards) have been found: the “Explosive Eruption Risk and Decision Support for EU Populations Threatened by Volcanoes” (EXPLORIS) project (e.g., Hincks et al., 2006); a volcanic risk ranking initiative for the Auckland region, New Zealand (e.g. Magill and Blong, 2005a,b) and the GRINP project at Mount Cameroon volcano (e.g. Thierry et al., 2008); 12 2. Summary of the main multi-risk initiatives (global, medium, local) In this section, we perform a summary of some of the main multi-risk methodologies described in the introductory part. Following the same division scheme, they are presented following the large, medium and regional to local scale classification. 2.1 Large-scale approaches 2.1.1 United Nations Development Program (UNDP, 2004) approach: The Disaster Risk Index (DRI). The pilot DRI, presented in the UNDP (2004) report, enables the measurement and comparison of relative levels of physical exposure to hazard, vulnerability and risk between countries. The DRI is the concept that disaster risk is not caused by hazardous events per se, but rather is historically constructed through human activities and processes. As such the risk of death in a disaster is only partially dependent on the presence of physical phenomenon such as earthquakes, tropical cyclones and floods. In the DRI, risk refers exclusively to the risk of loss of life and excludes other facets of risk, such as risk to livelihood and to the economy. The formula used for modelling risk combines its three components; risk is a function of hazard occurrence probability, the element at risk (population) and vulnerability. The equation below was made for modelling disaster risk: R = H • Pop • Vul (approach 1) Where: R is the risk (in terms of number of killed people); H is the hazard, which depends on the frequency and strength of a given hazard; Pop is the population living in a given exposed area; Vul is the vulnerability and depends on the socio-political-economical context of the population. Hazard multiplied by the population was used to calculate physical exposure. R = PhExp • Vul (approach 2) Where PhExp is the physical exposure, i.e. the frequency and severity multiplied by exposed population. Physical exposure was obtained by modelling the area affected by each recorded event. Event frequency was computed by counting the number of events for the given area, divided by the number of years of observation (in order to achieve an average frequency per year). Using the area affected, the number of people in the exposed population was extracted using a Geographical Information System (GIS). The population affected multiplied by the frequency of a hazard event for a specified magnitude provided the measure for physical exposure. In the DRI, vulnerability refers to the different variables that make people less able to absorb the impact and recover from a hazard event. These may be economic (such as lack of reserves or low asset levels); social (such as the absence of social support mechanisms or weak social organization); technical (such as poorly constructed, unsafe 13 housing); and environmental (such as the fragility of ecosystems). Due to the hazard specificity of people’s vulnerability, it is not conceptually possible to arrive at a global multihazard indicator of vulnerability. Rather the vulnerability indicators suggested by the DRI are always hazard specific. We can calculate the relative vulnerability of a country to a given hazard by dividing the number of people killed by the number exposed. When more people are killed with respect to the number exposed, the relative vulnerability to the hazard in question is higher. To estimate the total risk: RiskTot =Σ(RiskFlood + RiskEarthquake + RiskVolcano + RiskCyclone + ...Riskn ) The multi-hazard risk for a country required calculating an estimate of the probability of the occurrence and severity of each hazard, the number of persons affected by it, and the identification of the population’s vulnerability and coping capacities. This is very ambitious and not achievable with present data constraints. However the aim is to provide an approach built on existing data that will be refined in subsequent runs of the DRI. (See study cases) - - - - Scale: The DRI has been developed with a global level of observation and a national level of resolution, allowing comparison between countries. Considered hazards: earthquakes, tropical cyclones and floods. They also tried to work with droughts however due to the lack of reliable data, this hazard was excluded from the final results. However, they have included it in the final multi-risk equation. Added value: The DRI enables the calculation of the average risk of death per country in large- and medium-scale disasters associated with earthquakes, tropical cyclones and floods, based on data from 1980 to 2000. It also enables the identification of a number of socio-economic and environmental variables that are correlated with risk to death and which may point to causal processes of disaster risk. In the DRI, countries are indexed for each hazard type according to their degree of physical exposure, their degree of relative vulnerability and their degree of risk. Limitations: It represents a synoptic methodology principally addressed to global policies with very low reliability at the local scale. It considers a limited number of hazards and it does not consider possible cascade effects. The DRI only represents the primary hazard events as recorded in global disaster databases, even when in some cases the majority of loss may be associated with a range of different hazard types triggered by the primary event. Uncertainties: not discussed An example of the results of this approach is shown in Figure 2.1, which shows the physical exposure and relative vulnerability to floods in the period 1980-2000 (source: UNDP, 2004) 14 Figure 2.1 physical exposure and relative vulnerability to floods in the period 1980-2000 2.1.2 The World Bank approach: Natural Disaster Hotspots: A Global Risk analysis (e.g. Dilley et al., 2005). The Natural Disaster Hotspots (NDH) project generated a global disaster risk assessment and a set of more localized or hazard-specific case studies. In the report the global risks of two disaster-related outcomes is assessed: mortality and economic losses. They estimate risk levels by combining hazard exposure with historical vulnerability for two indicators of elements at risk: (1) gridded population and (2) Gross Domestic Product (GDP) per unit area, for six major natural hazards: earthquakes, volcanic eruptions, landslides, floods, drought, and cyclones. By calculating relative risks for each grid cell rather than for countries as a whole, it is possible to estimate risk levels at sub-national scales. A set of accompanying case studies, available separately, explores risks from particular hazards or for localized areas in more detail, using the same theoretical framework as the global analysis. The global analysis undertaken in this project is limited by issues of scale as well as by the availability and quality of data (e.g. for a number of hazards they had only 15- to 25-year records of events for the entire globe and relatively crude spatial information for geolocating these events; on the other hand, data on historical disaster losses, and particularly on economic losses, are also limited). However, it is discussed that while the data are inadequate for understanding the absolute levels of risk posed by any specific hazard or combination of hazards, they are adequate for identifying areas that are at relatively higher single- or multiple-hazard risk; for example, they can identify those areas that are at higher risk of flood losses than others and at higher risk of earthquake damage than others or at higher risk of both. Within the constraints summarized above (among others), in this project three indices of disaster risk were developed: - Disaster-related mortality risk, assessed for global gridded population; Risk of total economic losses, assessed for global gridded GDP per unit area; and 15 - Risk of economic losses expressed as a proportion of the GDP per unit area and for each grid cell. Since the objective of this analysis is to identify hotspots where natural hazard impacts may be large, it includes the large proportion of the Earth’s land surface that is sparsely populated and not intensively used. They have therefore chosen to mask out grid cells with population densities less than 5 persons per square kilometre (cells with less than about 105 residents) and without significant agriculture. Even if all residents of such cells were exposed and highly vulnerable to a hazard, total casualties would still be relatively small in absolute terms, and the potential agricultural impact would be limited. Masking these cells reduces data processing requirements and ensures that the large number of very low risk cells do not dominate the results. In addition, hazard reporting and frequency data are likely to be poorest in rural, sparsely populated areas, so masking could help to reduce anomalies caused by poor data. Next, they used historical losses as recorded in EM-DAT (the ‘International Disaster Database’) across all events from 1981-2000 for each hazard type to obtain mortality and economic loss weights for each hazard for each region for four economic wealth classes within regions. The weights are an aggregate index of relative losses within each region and country wealth class for each hazard over the 20-year period. The risk assessment procedure for both mortality and economic losses can be summarized as follows: - - - The appropriate measure of total global losses from 1981-2000 from EM-DAT (in the mortality case, the number of fatalities) is extracted by hazard h: Mh. Using the GIS data on the extent of each hazard, they compute the total population estimated to live in the area affected by that hazard in the year 2000: Ph. A simple mortality rate for the hazard is computed: rh = Mh/Ph. Assuming that the 1981-2000 period was representative, this rate is an estimate of the proportion of persons killed during a 20-year period in the area exposed to that hazard. Since the numbers are very small, they are expressed per 100,000 persons in 2000. Future revisions of the index could construct a mortality rate for the 20-year period based on annual rates which are computed using yearly mortality and population figures. As the results are intended only as an index of disaster risk, however, they believe that the computational simplification of using only end-of-period population is justified. For each GIS grid cell i that falls into a hazard zone h, the location-specific expected mortality is computed by multiplying the global hazard-specific mortality rate by the population in that grid cell: Mhi = rh*Pi. It is done for all six hazards, then a mortality weighted multi-hazard index value is computed for each grid cell: . This first estimate represents an un-weighted index value that assumes that mortality rates are globally uniform and that hazard severity has no influence on the relative distribution of mortality. Denoting the various combinations of region and country-wealth status by j, then the estimated mortality in a given grid cell is Mhij=rhj*Pi. The global hazard data compiled for the analysis measures the degree of hazard in terms of frequency in most, although not all, cases. The various degree of hazard measures are used to redistribute the total regional mortality from EM-DAT across 16 - - - the grid cells in the area of the region exposed to each hazard. For example, if a grid cell were hit four times by a severe earthquake during the 20-year period, the regional mortality rate is multiplied by four to yield an accumulated mortality for that grid cell. More generally, if the degree of hazard measure is denoted by W, and assuming that the weighting scheme is identical across region/wealth-class combinations j, the accumulated mortality in the grid cell is: M’hij = rhj*Whi*Pi. Since the degree of hazard is not always measured on the same scale across hazards, simply adding up the resulting values would result in an index that could be unduly dominated by a hazard that happens to be measured on a scale with larger values. In the methodology therefore they deflate the weighted hazardspecific mortality figures uniformly, so that the total mortality in each region adds up to the total recorded in EM-DAT. The resulting weighted mortality from hazard h in grid cell i and region/wealth-class combination j is thus: , where n is the number of grid cells in the area exposed to hazard h. A mortality-weighted multi-hazard disaster risk hotspot index can be then calculated as the sum of the adjusted single-hazard mortalities in the grid cell across the six hazard types: . To avoid literal interpretation of the multi-hazard disaster risk hotspot index as the number of persons expected to be killed in a 20-year period and in recognition of the many limitations of the underlying data, they convert the resulting measure into an index from one to ten using a classification of the global distribution of unmasked grid cell values into deciles. Figure 2.2 is an example of the results for the global distribution of flood risk. 17 Figure 2.2 Global distribution of flood risk: mortality (a), total economic loss (b), and economic loss as proportion of GDP density (c) (source: Dilley et al., 2005) 2.2 Medium-scale approaches 2.2.1 EC-TIGRA project: “Multi-hazard risk assessment and zoning: an integrated approach for incorporating natural disaster reduction into sustainable development” (e.g. Del Monaco et al., 1999). The TIGRA project aimed to develop an integrated approach considering the state of natural environment in terms of climate (floods, landslides, coastal, etc.) and geophysical (earthquakes, volcanic eruptions, etc.) events, the state of anthropogenic system (exposure and related vulnerability), the mutual relationships, and the mitigation strategies. The aim of the project was to homogenize existing methodologies on individual perils within a unique approach. It was developed as a feasibility project for understanding the possibility to realize tools and procedures for a successful land planning and management of territory. For any typology of hazard, a specific summary of the methodology has been provided, demonstrating how different natural phenomena may be constrained in a process grid. The assessment of each considered hazard is synthesized using common steps, identifying the event typology, the input information (scale, data inventory, predisposing areas, triggering events, long term evaluation, monitoring and geoindicators), the modelling procedures, and the output (the kind of assessment or ‘prediction’); Table 2.1 is an example of the proposed synthesis for the case of floods. 18 Table 2.1 Synthesis of the hazard assessment for floods As an important added value, it is possible to define multi-hazard risk assessment by means of economic indices reporting the expected economic losses resulting from each individual procedure applied to single hazards. At a regional scale (e.g. municipality area as elementary cell) the proposed result can be defined in a “susceptibility risk assessment”, i.e. the possibility to suffer economic losses from natural events (0 – 1); at a local scale (elementary cell represented by single exposed objects such as single or aggregated buildings or infrastructures) risk is represented by expected economic losses for each exposed element. 2.2.2 The European Multi-Hazard Risk Assessment Project (TEMRAP), (European Commission, 2000) The aim of The European Multi-hazard Risk Assessment Project, TEMRAP, was to develop an integrated methodology on multi-hazard and risk assessment, on the basis of different experiences carried out in several European countries on natural disasters. The project was mainly focused on the identification of natural hazards, profile hazards, evaluation of their potential consequences, and mapping/zoning data on a GIS based system. The approach was to be undertaken at a regional scale in Western Italy (macrozoning) and refined in the urban area of Genoa (microzoning). This approach is based on a comprehensive investigation of the environment and human structures and infrastructures in order to define the most suitable mitigation strategy for any specific target. From the analysis of potential users it clearly arose that data input, methodologies and output are strongly dependent on final users demand; in such a way three main areas were defined: - Federal/regional land planning and protection: susceptibility approach; Local planning and protection: hazard approach; Site mitigation: site engineering approach. The TEMRAP project was focused on underlining a common strategy among different natural events, although the methodology for internal data elaboration and manipulation is clearly different. The most reliable models can be implemented for climate-related hazards (i.e. floods, landslides, strong winds) whereas geophysical hazards need to be investigated individually. 19 TEMRAP Multi-hazard/risk assessment approach: The investigation developed in the project highlighted the difficulties in defining a simple approach given by overlapping different hazard probability maps. Even if an inventory map synthesizing all phenomena can be easily produced, at both local and regional scales, many conceptual problems arise when different probabilities of occurrence in the future (hazard) are assessed for the same specific elementary unit of territory. Nevertheless, it is suggested that the only way of producing a synoptic view of expected losses can be expressed in terms of economic indices that summarize the contribution of individual risk procedures. Figure 2.3 provides one of the possible approaches to develop a global economic risk. Figure 2.3 Possible approaches to develop a global economic risk In practical terms, the expected potential unitary losses are expressed in the following way: where: is the typology of phenomenon; the probability of occurrence; the composed vulnerability; a coefficient of exposure to hazard, and the expected potential unitary losses. At a regional scale the above formula can be defined in terms of per capita product (pcp), where the expected losses are computed as: Where are the per capita expected losses, and, consequently, multiplying by population we can obtain the total loss by municipality. The first step of the process is related to the definition of hazard, namely the event probability at a local scale (or susceptibility at a regional scale); this is performed using standard methodologies for each typology of hazard (separately), even following the same chain to get the same type of result (probability of occurrence or susceptibility of occurrence). In general, all the natural hazards were grouped in two main categories such as geophysical dynamics and climate dynamics, within which they can be further characterized by rapid onset and slow onset parameters (e.g. see Table 2.2). 20 Geophysical and Meteo-climate Rapid onset Slow onset Volcanic eruption Heavy rainfall Strong wind Landslide Flood Earthquake Karst Fire Coastal dynamic Subsidence Sea level change Table 2.2 Typological classification of natural hazards in Europe following the TEMRAP approach In TEMRAP, it is stated that environmental risk studies require a typical multidisciplinary approach, as a fundamental tool of analysis to recognize the link among various hazard processes and types (e.g. common triggering factors). Only through multilevel approaches is it possible to act over the original causes in an organic and effective way, in the attempt to resolve the product of the single effects separately from the others. In the TEMRAP project the analysis of the distinct triggering factors affecting all potential hazards, in a study area, has permitted users to identify them as the key to define the different levels of risk; such an approach allows one to overcome the difficulty to define multi-hazard, as an early step leading to risk analysis. Seismic events, for example, are often followed by landslides that can produce greater damage than that caused by earthquakes. Therefore, a correct land planning strategy should consider a seismic microzoning coupled with a study of earthquake-induced landslides. Another example is given by heavy rainfall: such events generally affect mountainous areas, from river catchments areas to alluvial fans and coastal zones. The multi-risk approach applied in the study area has stressed some common triggering factors for different natural disaster events. For the vulnerability, the main propose in the context of TEMRAP project was the selection of crucial indicators to help assess social and economic vulnerability. Social and economic parameters referred in very general terms to the response of a human system when hit by extreme natural events. The impact of this response can be considered as the ability (or inability) to cope with emergency management, and in terms of resources for reconstruction, for re-establishing normal patterns of life. In the first two phases, the goal was to assess what the reaction of the social and economic system would be, how well or how poorly would be the confrontation with physical damage and infrastructure disruption. In the last phase, parameters might make explicit existing opportunities for rebuilding. The TEMRAP methodological approach for social an economic vulnerability may be summarized as: - - To identify a limited set of social and economic parameters to assess how sound is the social and economic structure of a region at risk for emergency response (e.g. relative number of the very old and very young -the most difficult to evacuate in case of need-; fluctuation of the population during the year (e.g. coinciding with holidays); the ratio between concentrated, large settlements and dispersed ones (this is a very important variable with respect to emergency operations). To identify another set of social and economics parameters to assess existing human resource and economic opportunities for reconstruction and for reducing 21 - pre-event vulnerabilities (e.g. demographic trend over the last 30 years -so as to assess if the area is going to be abandoned or if it is developing-; ratio of the active population with respect to the total; number of factories of different dimensions with respect to the total; number of the provinces and the regions -so as to have an idea of the robustness of economic activities in the different areas-; ratio of owned dwellings; distribution of workers in economic sectors, etc.). To identify set of parameters refers to the use and occupancy of buildings (e.g. ratio between occupied and not occupied houses; ratio of non-occupied houses used as vacation houses; age and quality of buildings). As final remarks, in the TEMRAP methodology multi-risk analysis is theoretically possible by integrating the impact of the various types of hazard within the socio-economic setting of the study area; multi-hazard mapping is heavily constrained by typical dimensions of the natural event, data availability, and methods of analysis and scales of representation, however, multi-hazard analysis is possible only for disasters triggered by common factors. 2.2.3 The Spatial Effects and Management of Natural and Technological Hazards in Europe (ESPON) project (Schmith-Thomé, P. Ed., 2005) In the context of the European Spatial Planning Observation Network (ESPON) not all hazards are relevant. Therefore relevant hazards were selected according to specified risk criteria. The selection of hazards was done in three steps, defining the risk type, the spatial relevance and a possible impact of climate change. The risk typology focuses on the risk perspective instead of the hazard perspective. This broadens the possibility of describing the interactions between hazards and the societal reaction and response to hazards (for example aspects of risk perception). Both aspects have to be considered in a risk management process. The German Advisory Council on Global Change (WBGU) criteria served as a basis for the classification and characterization of risks. This categorization of risks into certain types, however, does not enable the extraction of those risks that are relevant to the ESPON context from the great number of possible risks. For example, murder, drug abuse or road accidents definitely belong to the highest risks in Europe, while a meteorite impact, although unlikely, could destroy large parts, if not all, of Europe. But since these risks do not have a clear spatial relationship, the selection of risks excludes certain risks by a spatial filter. The spatial filter screens risks according to their spatial character. The occurrence of spatially relevant hazards is limited to a certain disaster area that is regularly or irregularly prone to hazards (e.g. river flooding, storm surges, volcanic eruptions). Spatially nonrelevant hazards can occur more or less anywhere (e.g. car accidents, meteorite impacts). On the basis of these criteria, the hazards considered as of higher relevance for the EU 27+2 area in the ESPON context were selected. Of these, floods, flash floods, storm surges, avalanches, landslides, droughts, forest fires, winter storms, and extreme temperatures are assumed to be influenced by climate change. Hazards are natural extreme events or technological accident phenomena that can lead to threats and damages among the population, the environment and/or material assets. The origin of hazards can be purely natural (e.g. earthquakes) or technological (e.g. accidents in a chemical production plant), as well as a mixture of both (e.g. sinking of an oil tanker in a winter storm and subsequent coastal pollution). Natural extreme events usually become 22 a hazard when human beings or material assets are threatened. All so-called natural hazards occur on a more or less regular basis, as they are phenomena that belong to natural processes. Being part of natural processes they do not pose any threat to the natural system itself, as Nature is used to recover from natural hazards and adapt its life forms to it. In extreme cases when humans influence natural hazards, e.g. arson in the case of forest fires, these hazards are not purely natural any longer and can cause severe damages to the nature itself. Technological hazards pose threats to human assets and the nature, as they can have impacts and cause pollution that are not natural processes. Also, technological hazards can have very long lasting non-natural effects (e.g. oil spills and nuclear fallout). The focus of the ESPON report lies on representing the natural and technological hazards in administrative regions, on NUTS3 level (Nomenclature of Units for Territorial Statistic), of the ESPON space. Since all of the EU 27+2 regions are populated and bear human assets, all natural and technological phenomena that can be hazardous to human life, properties, and the nature are defined as hazards. All hazard maps follow the same classification of hazard intensity in five classes. In cases where it was not possible to distinguish between five hazard classes, the same classification range (very low: 1, to very high: 5) is kept, with fewer classes in between very low and very high. Whenever a multitude of hazards has to be considered in risk management, the question of weighting the relevance of certain hazards appears. The Delphi method was adapted for the specific use of hazard weighting and was tested several times in four case study areas (the Dresden Region and the Ruhr District in Germany, The Centre Region of Portugal and Regional council of Itä-Uusimaa in Finland) in the scope of the ESPON Hazards project. To avoid distortion by regional bias, experts with a clear European perspective were chosen; also the geographical provenance of experts was considered. Six of these experts had southern European provenance and six represented central north European areas. Results of the Delphi survey are represented by more or less calibrated average values of the responses from the expert panel. During each round experts had the possibility to alter the estimation after taking consideration of the average value from the previous round. Ideally, the final estimation represents the so far final ‘opinion’ on the weight of each hazard. The biggest emphasis was clearly on natural hazards (73.9 %) with floods (15.6 %), forest fires (11.4 %) and earthquakes (11.1 %) on the top of estimations. Technological hazards in total received 26.1 % with major accidents hazards weighted highest (8.4 %). The aggregated hazard map (Figure 2.4(a)) shows that the highest hazard classes form a kind of a scorpion-shape covering parts of southern, western, central and eastern Europe. The two arms and the claws of this high hazard scorpion start off on the coastal areas of the United Kingdom and the Iberian Peninsula, respectively, and the head is found in central and southern Germany. The tail is then more scattered towards eastern Europe, and finally turns southwards ending in Greece. Some hotspots are located outside of this "high hazard scorpion", i.e. central Italy and parts of southern Scandinavia. Most of the NUTS3 areas have a medium and some a low aggregated hazard. Besides scattered spots, only few large areas have a very low aggregated hazard, mainly in northern Europe and central-south France. 23 (a) (b) (c) Figure 2.4 (a) aggregated hazard map (based on 15 hazard indicators); (b) Integrated vulnerability map; (c) aggregated risk In the map analysis one has to take into account that the 15 hazards used for these maps are based on current knowledge that is comparable among all EU 27+2 countries. The technological hazards are represented by only 4 hazard types. The maps thus serve as an overview on the entire area, but regional and local analyses always have to take the best available data into account. Vulnerability and risk: In order to determine a risk factor, the ESPON Hazards project acknowledges damage potential and coping capacity as the two main sides of regional vulnerability. Within the ESPON context, Risk is defined as a “combination of the probability (or frequency) of occurrence of a natural hazard and the extent of the consequences of the impacts. A risk is a function of the exposure of assets and the perception of potential impacts as perceived by a community or system. Risk = Hazard potential x Vulnerability”. Vulnerability is understood as “the degree of fragility of a (natural or socio-economic) community or a (natural or socio-economic) system towards natural hazards”. It is a set of conditions and processes resulting from physical, social, economic and environmental factors, which increase the susceptibility of the impact and the consequences of natural hazards. Vulnerability is determined by the potential of a natural hazard, the resulting risk and the potential to react to and/or to withstand it, i.e. its adaptability, adaptive capacity and/or coping capacity. The overall regional vulnerability is thus measured as a combination of damage potential and coping capacity. The following formula is used: Vulnerability = Damage potential + Coping capacity, and for both damage potential and coping capacity a set of indicators was chosen. The following four chosen vulnerability components are hazard independent: - The (high) regional GDP/capita measures the value of endangered physical infrastructure and the extent of possible damage to the economy, according to insurance company's point of view. - Population density measures the amount of people in danger; - The proportion of fragmented natural areas to all natural areas presumes that small and fragmented areas are more vulnerable, since they are likely to be totally destroyed if a hazard strikes; 24 - The (low) national GDP/capita measures the capacity of people or regions to cope with a catastrophe. In the ESPON Hazards -project the national GDP/capita was used to indicate coping capacity, since the presumption was that coping capacity is weak in poor countries and strong in rich countries. It was further presumed that there are no marked differences in coping capacity inside a country. Due to the fact that fragmented natural areas only refer to a specific part of the ecological dimension, the indicator was only given the percentage value of 10. The other three indicators thus received the value of 30%. Figure 2.5 shows the integrated vulnerability index with the four feasible indicators. Using this information, an integrated vulnerability map was created over the EU + 2 area. Figure 2.5 Integrated vulnerability index Combining the hazard and integrated vulnerability information, the aggregated risk map (Figure 2.4(c)) was created. The final map is an integrated risk map that is a combination of the vulnerability map (Figure 2.4(b)) and the aggregated hazard map (Figure 2.4(a)). The risk maps follow a legend that displays the hazard values on the y-axis and the integrated vulnerability described above on the x axis. All fields with the same sum (e.g. 4, i.e. fields 3+1, 2+2 and 1+3) have the same risk towards a certain hazard. The different shades of the same colour allow distinguishing between a higher intensity of a hazard or a higher degree of vulnerability, respectively. The aggregated risk map shows a similar pattern as the aggregated hazard map, even though the scorpion shape of high risk has moved towards medium risk (classes 6, 7, and 8). The Pentagon Area displays the highest agglomeration of high risk, and the largest parts with low risk are found in northern Europe. Spatial patterns of hazards were studied by combining individual hazards on NUTS3 level. The hazard interaction map is based on physical processes between hazards. In addition to the development of the overall hazards interaction map, several hazard combinations were studied on a European scale. In summary, the ESPON approach can be a valid tool in order to define preliminary strategies and policies at a European level, however, the limited series of homogeneous data available could under-estimate or over-estimate the actual distribution of hazards and their potential impact on European countries. 25 2.2.4 The Applied multi-risk mapping of natural hazards for impact assessment (ARMONIA) project (ARMONIA, 2007). The overall aim of the research project ARMONIA (Applied multi Risk Mapping of Natural Hazards for Impact Assessment) was to develop a new approach to producing integrated multi-risk maps to achieve more effective spatial planning procedures in areas prone to natural disasters in Europe. Amongst other things, the output of the ARMONIA project was conceived to harmonize (1) the methodologies for hazard and risk assessment for different types of potentially disastrous events and (2) the different processes of risk mapping in order to standardize data collection, data analysis, monitoring, outputs and terminology in a form useful to end users (multi-hazard risk assessment). ARMONIA comprised the following steps: (1) analysis of the state-of-the-art for spatial planning and mapping of risk from natural hazards; (2) development of a methodology for harmonized integrated maps; (3) development of a harmonized knowledge base of terminology; (4) integration of harmonized risk maps with spatial planning decision processes in the form of a decision support framework; and 5) implementation, integration and analysis of a case study simulation. Theoretical approach of multi-risk analysis and mapping: The main scope of the project was to produce a methodology that capably combines multiple risks on a meaningful basis, taking into account all the basic and indispensable parameters of risk analysis, such as hazard (where, when and how intense/severe a natural event can be), exposure (typologies of elements at risk located in a hazardous area), vulnerability (degree of potential damage expected by each relevant element at risk vs. natural event occurrence), risk (degree of total damage due to the occurrence of one or more different natural events in a given area). Generically, risk assessment can define the level of expected damage for a given new stock and then to define the required building regulation. In the case of existing goods we consider the conventional formulation of risk (e.g. UN-ISDR): R = H x EL Where: EL = Va x V and R = Risk, Expected losses (of lives, persons injured, property damaged and economic activity disrupted) due to a particular hazard of intensity (magnitude) “I” for a given area and reference period; H = Hazard, the threatening event, or the probability of occurrence of an intensity (magnitude) “I” phenomenon, potentially damaging, within a given time period and area (e.g. water level, discharge, stagnation); EL= Expected loss for the threatening event, of an intensity (magnitude) “I”; Va = Value of exposed elements (elements at risk); V = Vulnerability, degree of loss due to the occurrence of a particular hazard of intensity “I” affecting an exposed element or a group of exposed elements, also a-dimensional percentage of Va lost as consequence of a hazard of intensity (magnitude) “I”. In the project reports it is stated that multi-hazard (and multi-risk) cannot be the simple combination (e.g. by superimposition of individual hazard maps and summation of hazard degrees) of hazard categories together by assuming equivalence between a ‘high’ flood hazard and a ‘high’ earthquake hazard. A feasible approach way may be combining 26 different risk estimates but only if a common and meaningful risk metric which works between and across multiple forms of risk can be identified. The best way to solve the problem has been envisaged in vulnerability analysis as key element that links together the natural event, in terms of type and ‘dimension’, with the exposed elements, both structural and non-structural. Recent perspectives on risk and hazard management have emphasized the need to take into consideration distinct forms of vulnerability, and in ARMONIA, a wide range of potentially exposed elements and vulnerabilities was identified, and the ways in which some of these may be represented through indices constructed from census and other spatial data in area, line and point form were proposed. One of the results achieved in ARMONIA is the definition of the possibility of mapping multi-hazard/risk scenarios, considering the cumulative consequences (i.e. economic loss, victims) of different natural events affecting the same exposed element. Theoretically, a rigorous multi-risk mapping procedure is based on the following steps: Step 1: identification of individual hazards for ARMONIA main spatial scales (strategic regional, local general, local site); Step 2: assessment of vulnerability functions for any individual category of natural event, having as input the event location, intensity or severity parameters hazard category and as output an average expected damage; Step 3: assessment of fragility curves, when possible, for any individual category of hazard, obtaining the probability of damage (e.g. for seismic hazard the % of cracks in walls, the % of not statically safe buildings, the % of collapsing buildings) for given categories of exposed elements defined by spatial planners; Step 4: analysis of risk for any individual category of hazard; Step 5: harmonization of different individual values of damage (risk), likely in terms of fragility curves (probability of different damages for the same exposed element), for the same return period. Finally, for the realization of multi-risk maps, it becomes essential to construct vulnerability curves having as input (x-axis) the individual hazard (e.g. intensity, magnitude, category) and as output (y-axis) the average loss, possibly defined as probability of occurrence (fragility curve). In fact, vulnerability can be expressed as the degree of loss to a given element at risk, or a set of such elements (i.e. a system), resulting from the occurrence of a natural or technological phenomenon of a given size. The induced aggravation (e.g. caused by an earthquake, pollution, explosion, and landslide) should be expressed in terms of a number of accessible and pertinent parameters when used for vulnerability analysis. The choice of the most appropriate techniques to be used depends on the size of the project area, the resources available and the data already collected. The reduction of vulnerability may be studied in the general framework of a disaster resilience assessment process. Vulnerability as well as resilience can be conceptualized along the four interrelated dimensions: - Physical (e.g. destruction of a historical hotel); Human, social and functional (e.g. life loss, employment, lodging); Economical (e.g. reconstruction cost); 27 - Identity-related issues (e.g. impact on the image of the town, tourism). In practical terms, the main expected result is the construction of vulnerability functions, possibly related with fragility functions, having a different x-axis for any natural event typology and a common y-axis. Therefore, it would be possible to define all the risk with the same factor. Figure 2.2.4-1 gives an example of the proposed vulnerability structure, hereby considered as the correct conjunction point between hazard and risk; in a preliminary stage the investigation could be restricted to the vulnerability function (Figure 2.6), instead of defining a comprehensive fragility scenario (Figure 2.7) Figure 2.6 ARMONIA function between hazard types intensity (x-axis) vs. average damage of exposed elements (y-axis) according to scale of analysis Figure 2.7 ARMONIA function between hazard types intensity (x-axis) vs. probability of damage for different categories of exposed elements (y-axis) according to scale of analysis For the ARMONIA researchers, a multi-risk approach should be based on the production of single and rigorous hazard maps. These maps have the main scope to depict all considered risks to orient the spatial planning process and should contain the following information in hazard analysis: (1) site or area of occurrence and potential development of 28 natural events; (2) intensity/severity/magnitude of the potentially disastrous event through parametric scales; (3) return time of event, possibly related to potential triggering factors; (4) hazard analysis should take into account minor, but more frequent events, as well as major expected events characterized by highest intensity/lowest frequency since the latter are the most potentially disastrous. On the other hand, it should be taken in account that exposure and vulnerability factors are fundamental in risk analysis. These are often underevaluated or neglected in most current scientific and practical applications. The measure of risk, that can be the expected loss or level of damage, can be represented in qualitative or quantitative ways, depending on the spatial scales, such as: - costs to be spent for reconstruction; damage index; mixed quantitative/qualitative description of the expected damage, calculated by means of probabilistic risk assessment and/or scenario approaches according to spatial planning decisions and requirements. Vulnerability and risk should be evaluated possibly in a deterministic/parametric manner or qualitatively in case of systemic and organizational vulnerability. In any case, mapping exposure and vulnerability can be considered as the minimum standard since complex or complete models of vulnerability are actually inapplicable. Exposure and vulnerability levels have to be referred to each typology of hazard in relation with the potential intensity of events, especially at a local scale. Following the investigation and the state of art analysis performed in the project, it was defined that harmonization of natural hazard processes for land use planning and management can be developed in the following way: 1. synthetic indicator of heuristic degree of multiple hazards affecting a given territory (e.g. high, medium, low) or integer number of affecting natural hazards or simplified multiple layers (hazards) of a summary map; 2. an integrated indicator of damage/losses, summing up, for a given time period (or heuristically), multiple risks, individually evaluated; 3. a holistic approach of managing different hazards (e.g. to investigate contemporaneously all the hazards affecting a given territory); 4. domino effects (e.g. landslide induced by earthquake). Table 2.3 gives the potential spatial field of application for every identified procedure, according to the state of art. Regional strategic 1 2 3 4 synthetic indicator of heuristic degree of multiple hazards integrated indicator of damage/losses holistic approach of managing different hazards (multi-layer) domino effects Local General Local detail X X X X X X X X Table 2.3 Potential spatial field of application (X mark) of suggested procedures following the state of the art on multi-hazard risk assessment 29 Notes about the ‘draft’ ARMONIA methodology: practical application. The ARMONIA methodology was applied in the Arno River basin in Italy, and at a national level in England and Wales as a means to validate the methods developed as part of the project. This exercise allowed the authors to identify a number of practical problems, gaps and limitations of the ARMONIA methodology; in this way the ‘draft’ methodology is outlined. The key question that was required to be addressed as part of the ARMONIA methodology is how to map risks from multiple natural hazards. Conceptually it is simple to map and aggregate risk from a number of different natural hazards by assessing the annual average risk for a particular risk metric for a particular hazard. However, for this approach to be implemented the following need to be available: (1) The extent and intensity of the hazard for a number of different return periods (i.e. annual probabilities) ranging from “frequent” events (e.g. 1 in 2 year events) to “rare” events such as those with a 1 in 1,000 year return period; (2) Vulnerability functions for each hazard relating the intensity of the hazard to the risk. It is often the case that where such functions are available they are specific to geographical areas or countries. The theoretical method for assessing risk in this manner is shown in Figure 2.8 (note that these are purely hypothetical vulnerability curves that have been used to illustrate how assess the risk generated by natural hazards can be quantified). (a) (b) Figure 2.8 (a) Hypothetical vulnerability functions relating the intensity of a hazard to a risk metric; (b) Aggregating risk from multi-hazards to assess the average annual risk (source: ARMONIA, 2007). Note: the above curves are hypothetical probability versus risk metric curves to illustrate the method by which risk metrics from different natural hazards can be combined The ‘draft’ ARMONIA methodology looks to overcome the lack of detailed vulnerability functions relating hazard intensity to a quantitative risk metric by using a variety of indices to assess the risk for a particular natural hazard. These indices are as follows: - Hazard indices; - Consequence indices for different receptors or exposed elements (e.g. building, people and infrastructure). It should be noted that the consequence indices comprise a measure of vulnerability and exposure. These are combined to give a consequence index. 30 The hazard and consequence indices are combined to produce a risk index for each hazard. The draft ARMONIA methodology allows a weighting factor that must total 20 to be applied to each consequence index by the relevant stakeholder. Figure 2.9 shows the way in which risk is assessed using the draft ARMONIA methodology. It should be noted that the draft ARMONIA methodology produces a combined risk score for each individual natural hazard. It does not allow the risk from multiple natural hazards to be combined. Figure 2.9 ARMONIA methodology for producing a risk index for a particular hazard -Development of hazard indices: It is recommended that an approach that takes into account both intensity and probability of the hazard is used. Such an approach is shown diagrammatically in Figure 2.10. The intensity scales could be used in conjunction with four return periods corresponding to a high, medium, low and very low probability. These return periods could be as follows (for example): - <1 in 25 years 1 in 25 to 1 in 100 years >1 in 100 years to 1 in 300 years >1 in 300 years High; Medium; Low; Very low. Figure 2.10 Diagram to show hazard levels and indices as a function of probability and intensity 31 Figure 2.10 provides four classes and indices of hazard. For example a medium hazard with an index of 2 can result from a hazard with a low to medium intensity and a probability of occurrence ranging from low to high. The draft ARMONIA methodology requires hazards to be classified into non-dimensionalized indices. In practice hazards classified into more than 10 categories become difficult to clearly display within a GIS environment. The conversion of hazard data that represents a wide variety of units into integer values may lead an end-user to interpret equal scores as representing an equal level of hazard for different hazard types. For example, a flood with a “Class 2 hazard” should have the same intensity and probability as a “Class 2 seismic hazard” if multi-hazard risk maps are to be comparable. Note that a more suitable universal method of classifying hazards would be to given the annual probability of exceedance of a given hazard intensity. This is a useful measure since it returns a value between 0 and 1 and is thus more readily compared across hazard types. -Development of Consequence indices: As part of the draft ARMONIA methodology, consequence indices have been developed for a number of receptors (i.e. exposed elements): (1) People; (2) Buildings; (3) Road network; (4) Agriculture; and (5) Other buildings (e.g. commercial and industrial areas, airports). Consequence indices have been developed at a regional level only for the following hazards: Earthquakes, Floods, Landslides, Volcanoes, and Forest fires. The general process for computing the consequence indices is shown in Figure 2.11. Figure 2.11 Flow chart showing the method used for producing vulnerability and consequence indices Finally, for the (multi) risk assessment, a Decision Support System (DSS) was developed: The “Multi Risk Land Use Management Support System (MURLUMSS) DSS architecture”, which encompasses the developed methodology. The DSS takes a consequence index (where consequence = vulnerability x exposure) and average hazard index in each census 32 area and integrates them to produce a risk score between a theoretical minimum of zero and maximum of 1. Figure 2.12 details the steps taken in the DSS to produce a risk score for each census area. The DSS uses only one hazard per risk score but may use an unlimited number of consequence indices. The weighting procedure allows stakeholder participation through the subjective relative valuation of receptors within the risk score. The risk score is normalized between the theoretical maximum and minimum possible considering a census area under worst case conditions (highest hazard and consequence indices). The minimum theoretical risk depends on whether all the census areas contain receptors (i.e. exposed elements). Figure 2.12 Methodology employed in the ARMONIA Decision Support System (DSS) Risk analyses within the DSS are carried out through the implementation of a Multiple Criteria Evaluation (MCE) ranking process. In the ranking process every criterion under consideration is ranked in the order of the decision maker’s preference. To generate criterion values for each evaluation unit, the risk for each receptor is weighted according to its estimated significance. In the draft ARMONIA methodology the total weighting score assigned to each risk index must total 20. The higher the weighting factor the more prominence is given to the risk value for the receptor (For example, if three receptors (e.g. people, buildings and roads) were being considered the end user may choose to weight the risk factors for each of these as follows: people=12, buildings=5, and roads=3). In conclusion, the draft ARMONIA methodology does not allow multi-risk maps to be produced. The methodology does allow the consequences of a particular hazard on 33 different receptors (e.g. buildings, people) to be combined to produce a risk index for a particular hazard. However, it is not clear whether such a risk index that combines a number of social, economic and other risk metrics is of use to decision makers. On the other hand, there is a high degree of subjectivity regarding the weighting and combining of the vulnerability indices. There is no guidance in the methodology as to how these weightings have been derived and how they affect the risk indicators. Finally, there is no consideration of uncertainty in the draft ARMONIA methodology. 2.2.5 The Federal Emergency Management Agency initiatives: “Multi-hazard identification and risk assessment” (FEMA, 1997) and “Understanding your risks: identifying hazards and estimating losses” (FEMA, 2001). The primary mission of the Federal Emergency Management Agency (FEMA) is to reduce the risk of loss of life and property in the United States, and to protect U.S. institutions from the disastrous effects of natural and technological hazards. FEMA accomplishes this mission by leading, coordinating with, and supporting specialists at every level of government (Federal, State and local) and the private sector in the development of a comprehensive, risk-based emergency management program of mitigation, preparedness, response, and recovery. Identification of hazards and assessment of risks affecting the United States and its territories are important steps in the process of reducing the impacts of disasters. These steps help lay the foundation for the judicious allocation of finite resources to support mitigation initiatives. HAZUS, The national risk assessment (loss estimation) methodology under development by FEMA in cooperation with the National Institute for Building Sciences, is intended to achieve this objective. Based on the hazard identification and risk assessment research and evaluation conducted for the “multi-hazard identification and risk assessment” report (FEMA, 1997), the findings include: - - - - Improvements are needed in the characterization of all hazards because there are inconsistencies in the amount and quality of data available for each hazard; Hazards must be better defined because of inconsistencies in definitions used by Federal, State, and local government agencies and private-sector entities involved in evaluating and mitigating hazards; A model methodology for risk assessment for all hazards should be established, and the level of sophistication associated with current methodologies should be enhanced; A more uniform technique to quantify numerically the risk of each hazard, on an annual-percent-chance exceedance basis, should be developed to allow for a more equitable comparison of risks for multiple hazards; The results of risk assessments should serve as the basis for the prioritized administration of mitigation programs and funding; and Methods for evaluating the benefits and costs of mitigation programs should be enhanced to include quantitative and qualitative elements. The standard risk assessment (loss estimation) methodology developed jointly by FEMA and the National Institute of Building Sciences (NIBS) is nationally applicable and 34 standardized. As originally developed, the methodology, referred to as Hazard United States (HAZUS), is used to assess the risk of, and to estimate the potential losses from, earthquakes. It incorporates the better features of previously developed loss estimation methodologies and overcomes many shortcomings. HAZUS is an integrated geographic information system designed for the personal computer. It was developed based on several criteria: standardization; user-friendly design and display; accommodation of user needs; accommodation of different levels of funding; revisable results; state-of-the-art models and parameters; balance; flexibility in earthquake ground shaking intensities; and non-proprietary methods and data. The HAZUS framework includes six major modules: Potential Earth Science Hazard; Inventory; Direct Damage; Induced Damage; Direct Losses; and Indirect Losses. The modules are interdependent: the output from one module acts as input to another. The modular approach allows estimates based on simplified models and limited inventory data. More refined estimates based on more extensive inventory data and detailed analyses can be produced. Limited studies can be conducted, which may be desirable because of budgetary and inventory constraints. FEMA initiated development of HAZUS specifically for direct and indirect economic and social losses from earthquakes and secondary hazards triggered by earthquakes such as fires and floods due to dam or levee failure. HAZUZ-MH is a nationally applicable standardized methodology and software program that contains models for estimating potential losses from earthquakes, floods, and hurricane winds. NIBS maintains committees of wind, flood, earthquake and software experts to provide technical oversight and guidance to HAZUS-MH development. Loss estimates produced by HAZUS-MH are based on current scientific and engineering knowledge of the effects of hurricane winds, floods, and earthquakes. Estimating losses is essential to decision-making at all levels of government, providing a basis for developing mitigation plans and policies, emergency preparedness, and response and recovery planning. HAZUS-MH uses state-of-the-art geographic information system (GIS) software to map and display hazard data and the results of damage and economic loss estimates for buildings and infrastructure. It also allows users to estimate the impacts of hurricane winds, floods, and earthquakes on populations. HAZUS-MH provides for three levels of analysis (Figure 2.13): - - - A Level 1 analysis yields a rough estimate based on the nationwide database and is a good way to begin the risk assessment process and prioritizing high-risk communities. A Level 2 analysis requires the input of additional or refined data and hazard maps that will produce more accurate risk and loss estimates. Assistance from local emergency management personnel, city planners, GIS professionals, and others may be necessary for this level of analysis. A Level 3 analysis yields the most accurate estimate of loss and typically requires the involvement of technical experts such as structural and geotechnical engineers who can modify loss parameters based on to the specific conditions of a community. This level analysis will allow users to supply their own techniques to study special conditions such as dam breaks and tsunamis. Engineering and other expertise is needed at this level. 35 Figure 2.13 HAZUZ-MH multi-hazard analysis levels Three data input tools have been developed to support data collection. The Inventory Collection Tool (InCAST) helps users collect and manage local building data for more refined analyses than are possible with the national level data sets that come with HAZUS. InCAST has expanded capabilities for multi-hazard data collection. HAZUS-MH includes an enhanced Building Inventory Tool (BIT) that allows users to import building data and is most useful when handling large datasets, such as tax assessor records. The Flood Information Tool (FIT) helps users manipulate flood data into the format required by the HAZUS flood model. HAZUS-MH can perform multi-hazard analysis by providing access to the average annualized loss and probabilistic results from the hurricane wind, flood, and earthquake models and combining them to provide integrated multi-hazard reports and graphs. HAZUS-MH also contains a third-party model integration capability that provides access and operational capability to a wide range of natural, man-made, and technological hazard models (nuclear and conventional blast, radiological, chemical, and biological) that will supplement the natural hazard loss estimation capability (hurricane wind, flood, and earthquake) in HAZUS-MH. Furthermore, FEMA has also developed a companion tool called HAZUS-MH Risk Assessment Tool (RAT) to help you produce your risk assessment outputs for earthquakes, floods, and hurricanes. This tool was developed as a third-party model to support HAZUS-MH and is used to display the outputs from the HAZUS-MH risk assessment in an easy-to-use format. The RAT pulls natural hazard data, inventory data, and loss estimate data into pre-formatted summary tables and text. These summaries can support the presentation of data to decision-makers and other stakeholders and in the mitigation plan. Among the bibliographic material produced by FEMA, different “how-to” guides have been produced, covering different topics as (1) getting started with the mitigation planning process including important considerations for how you can organize to develop a plan; (2) identifying hazards and assessing losses to your community and state; (3) setting mitigation priorities and goals for your community; (4) evaluating potential mitigation measures through the use of benefit-cost analysis and other techniques; (5) creating a mitigation plan and implementation strategy; (6) implementing the mitigation plan including project funding and revising the plan periodically as changes in the community occur; and 36 (7) incorporating special circumstances in hazard mitigation planning for historic structures, among other topics (e.g. FEMA, 2001). The FEMA guides (e.g. FEMA, 2001) are designed to provide the type of information US states and communities need to initiate and maintain a planning process that will result in safer communities. These guides have been carefully prepared so as to be applicable to states and communities of various sizes and varying ranges of financial and technical resources. They describe the creation of a composite multi-hazard map. Such a map showing a composite of the areas of highest loss may be produced in various ways. The map may indicate areas affected by multiple hazards as high loss potential areas and the areas with one or no hazards as moderate or low potential loss. Another mapping alternative is to identify areas with multiple critical facilities, major employers, repetitively damaged structures, and infrastructure as high potential loss areas. The FEMA report is intended to be an easy-to-understand guide for the field practitioner. There is a clear audience for such a guide, and this report on identifying hazards and estimating losses meets its stated objective in being simply and attractively written, with colourful diagrams and in-set boxes to concentrate the attention of readers on the key concepts needed for risk understanding. As a document designed for ready communication to decision-makers, it is commendable. The FEMA “how-to” guides note the importance of compiling the results of work into a written report to be presented to citizens and elected officials. The results of a risk assessment will likely draw interest from a wide range of sectors in the community or state. Business owners and residents will want to know what the results of the risk assessment mean for them and what to do next. The FEMA report stresses the opportunity to use the results of the risk assessment as a tool to galvanize the community and to secure interest and support for the remainder of the hazard mitigation planning process. The risk assessment can thus be an effective tool for public education, disaster response and recovery, and economic development. Applications of the various steps in the risk assessment process are illustrated through the invention of a fictional community, the Town of “Hazardville”. Located in the imaginary State of Emergency, Hazardville is developing a natural hazard mitigation plan, which includes an estimate of potential losses. Hazardville is a small community with limited resources and multiple hazards. The town has just established its mitigation planning team, the Town of Hazardville Organization for Risk Reduction (THORR). A novel entertaining way of putting across key messages is via a fictional periodical, ‘The Hazardville Post’. The FEMA (2001) report concludes with the statement that the loss estimate is the foundation upon which a state or local mitigation plan is developed. With it, an official should be able to identify what areas of your community or state are susceptible to each hazard, where the highest losses would occur, how much a hazard may cost were it to occur, and how the lives and quality of life in a community or state might be affected in the aftermath of a disaster. This establishes a factual basis for developing a mitigation strategy for a community or state, and constitutes important data necessary to support future mitigation decisions. 37 2.2.6 The natural- and conflict-related hazards in Asia-Pacific project (OCHA, 2009) This report presents the results of a study that aimed to quantify the risk posed by earthquake, flood (and storm surge), landslide, cyclone and tropical storm, tsunami, drought, and social unrest in form of intrastate armed conflict in the Asia-Pacific countries. The study was commissioned by the United Nations Office for Coordination of Humanitarian Affairs, OCHA Regional Office for Asia and the Pacific, Bangkok; and financed by the Norwegian Ministry of Foreign Affairs. A semi-quantitative approach adopted for the risk assessment was the same for all countries in the study area to ensure consistent modelling for the whole region. The main outcomes of the study were: - Hazard maps that show the geographical hotspot areas for single hazards and for multi-hazards on a regional (sub-national) level; Estimates of the exposed population to selected hazards; Tabulated indices that attempt to rank the countries in terms of risk level; and Recommendations for preventive actions in terms of how vulnerability can be reduced and/or how coping capacity could be improved. In the development of hazard maps, each natural hazard was classified into four categories in term of its severity: negligible, low, medium and high. A key challenge in the study was the quantification of the coping capacity of different countries in dealing with these risks. Quantification of the coping capacity was essential in designing the appropriate risk mitigation strategies. In many situations there is interaction and strong correlation between the risks posed by natural hazards and armed conflict. This interaction, however, was not evaluated in the study. During the course of the study it became apparent that with the present level of knowledge and availability of high quality data (or lack thereof), it is not possible to estimate the risk in terms of expected mortality for all hazards. Therefore, the exposed population was used as proxy for risk. The estimation of the exposed population was based on a weighted average of the people living in areas with different hazard severity categories, combined with spatial characteristics of the hazard in question. Methodology: Each of the natural hazards considered in this project, as well as the conflict hazard, is assessed in a different manner. This cannot be avoided because the spatial and temporal scales and the frequency of occurrence vary over several orders of magnitude for the different hazards considered. However, it does make it a challenge to compare the risk associated with the different hazards, and to compare the risk profiles of countries that are exposed to different types of hazard. The authors warn that the procedure outlined in the project will probably not work very well for “very low probability – extremely high consequence” events. Hazard mapping: For each of the hazards considered in the study, 4 classes or categories were defined on the basis of the computed hazard intensity and frequency, or on the basis of an estimated hazard category: 38 0: Non-existent or negligible (white) 1: Low (green) 2: Medium (amber) 3: High (red) For some of the natural hazards all the information is condensed into a single index. For example for earthquakes, the Modified Mercalli Intensity (MMI) with a return period of 475 years was used. For these hazards, it is relatively straightforward to classify the hazard into 4 categories. For others, for example river flood and tropical cyclone, two parameters (intensity and frequency) were used to define the hazard. Calculation of exposed population and Risk Index: For each country in the study area, the equivalent population exposed to each hazard was defined as 100% of the population living in Hazard Category 3, plus 30% of the population living in Hazard Category 2, plus 10% of the population living in Hazard Category 1. For landslides, which have a limited spatial extent even within a pixel of 30 arc_sec ×30 arc_sec, and for civil conflict, which is impossible to resolve spatially to the same resolution as natural hazards, a correction factor of 0.10 was applied to the equivalent exposed population. An attempt was made to develop a global risk index for ranking the countries in the study area. In general, it is logical for the risk index to have the following format: Risk Index = function of Coping Capacity Index where are weighting factors that designate the relative importance of different hazards, is the equivalent population exposed to hazard “ ”, is the ratio of to the total population, is the number of fatalities caused by hazard “ ” within a reference time frame, and , which is a vulnerability indicator, is some function of the number of fatalities divided by the equivalent exposed population. The Coping Capacity Index for a given country is different for the different hazards. However, in the project t was not possible to gather enough data in this study to come up with meaningful coping capacity indices for different hazards and the aggregate index for all hazards was used in the calculations. The following equation for Risk Index was used in the study: Risk Index = Coping Capacity Index The seven hazards considered in the calculation of the risk index were river flood, earthquake, tropical cyclone (including storm surge), drought, precipitation-induced landslide, tsunami and civil conflict. The following points should be noted about the calculated risk index: - The fatality data for different natural hazards were obtained from the EM-DAT database for the time period 1980-2007. Fatalities due to civil conflict were based on PRIO Battle Death data 1980-2005 and UCDP Battle Death data 2006-07. Battle death data for Pakistan are not available and were roughly guessed for the calculations. 39 - The weighting factors wi in the equation for the Risk Index are specified by the user. The aggregate Coping Capacity Index varies from 2.06 to 4.83 (higher values indicating higher coping capacity). These values were rescaled for use in the Risk Index equation as follows: Rescaled Coping Capacity Index = Coping Capacity Index - The value of - The factor “1000” used in the Risk Index equation is purely for scaling purposes. The values of exposed population to tsunami hazard are based on the population data from the Year 2000. was reset equal to 0.02 if it exceeded 0.02 The calculation of the Risk Index involves assigning weighting factors (importance factors) by the user to the different hazards; the index, directly or indirectly, accounts for percent of population exposed to different natural hazards and civil conflict, vulnerability, and coping capacity. Table 2.4 is an example of the values of the Risk Index computed for the countries in the study area using a specific set of weighting factors (i.e. with same weighting factor for all hazards). The computed Risk Index is not very stable for the island nations of the Pacific because of their small size and population. These island nations should not be directly compared with the other nations in the study area. 2.3 Regional’ to ‘Local’ scale approaches 2.3.1 The “Natural Risk Assessment” (NARAS) project (e.g. Marzocchi et al., 2009) This project aims at contributing to the improvement and diffusion of these innovative methodologies by: - Disseminating and discussing the results obtained by EU funded projects dealing with risk problems; - Promoting the development of early warning methods for seismic risk mitigation; - Stimulating the development of quantitative probabilistic methodologies of evaluation of risks and different emergency scenarios using improved stochastic methods; - Promoting information and education actions in the schools aimed at increasing consciousness of natural risks among young people; In the pursuit of these objectives,there have been organized small workshops and meetings wherein the possible actions to be implemented were discussed in depth and the results reached by the relevant EU projects funded in the framework of FP5 and FP6 were reviewed. The main outcomes of the NaRAs activities have been summarized in three books, which deal with the state of the art of Seismic Early Warning, the implementation of multi-risk approach, and seismology teaching at schools respectively. 40 Country Bangladesh Philippines Indonesia Myanmar Nepal Papua New Guinea Japan Pakistan Bhutan Sri Lanka Malaysia New Zealand Viet Nam Dem People's Rep of Korea Cambodia Thailand India China Timor-Leste Lao People's Democratic Republic Brunei Darussalam Republic of Korea Australia Maldives Singapore Mongolia Island nations of the Pacific Micronesia (Federated States of) Vanuatu Solomon islands Samoa Palau Tonga Fiji Nauru Kiribati Tuvalu Country Risk Index 9.7 9.3 7.2 6.4 6.2 5.3 5.2 5.1 3.8 3.6 3.5 3.5 3.1 2.6 2.5 2.2 2.1 2.0 1.9 1.9 1.8 1.7 1.2 1.2 0.9 0.8 Index 10.7 7.8 6.0 4.7 4.5 4.4 4.2 3.2 2.3 2.3 Table 2.4 Risk index with the same weighting factor for all hazards In a report on the multi-risk approach (Marzocchi, 2009), a quantitative procedure for multi-risk assessment is presented, intended to make easier the comparison among different threats and to account for possible triggering effects. In the document only the major threats typical for Southern Europe were considered, which were the objectives of the NARAS Project. Forest fires, snow avalanches, wind storms, heat waves are not specifically considered, although the general methodology proposed can be applied to evaluate risk related to these adverse events. The document is divided in three parts: in the first part, the principles and rationales that underlie the presented procedure for multi-risk assessment are explained; in part 2, a short 41 description of the most advanced procedures generally adopted to estimate individually natural and anthropogenic risks representing major threats for Southern Europe is provided; and in part 3, they tackle directly the problem of multi-risk assessment applying innovative procedures and protocols to the case study of Casalnuovo , a town close to Naples (Italy). The multi-risk problem is split in two distinct phases: in a first phase, the whole set of risks is homogenized to facilitate their comparison ranking. The common unit for comparing the hazards is the risk of having a number of casualties; in the second phase, they explore in detail possible “triggering” effects, showing how they can increase significantly the risk in a specific site. In practice, cascading events are illustrated in a scenario approach: one hazard creates an amplification of the risk for another hazard and changes the final risk evaluation result. Procedure for multi-risk assessment: The purpose of multi-risk analyses is basically to establish a ranking of the different types of risk taking into account possible cascade effects i.e. the situation for which an adverse event triggers one or more sequential events (synergistic event). The procedure for environmental risks assessment that includes the risk of multi-hazards synergy is illustrated in this paragraph by identifying the main steps to be followed to estimate the multi-risk index. The main steps are those usually utilized to perform an environmental risk assessment with some peculiar differences: 1. the estimate of the multi-risk index has to take into account possible cascade and/or triggered related adverse events; 2. A common time frame and area under threat must be used; 3. A reference expected damage has to be defined “a priori”. The general procedure for multi-hazard assessment is reported in the following scheme. One peculiar aspect of this procedure is the creation of a set of scenarios correlating adverse events from different sources. For each “risk scenario”, adverse events, phenomena and damage will be correlated in a series-parallel sequence of happenings through an “event-tree”. Each branch of the event tree will be quantified by a probabilistic analysis of the “history” of the events, the vulnerability and the exposed values of the specified targets. At last a final risk will be estimated. The procedure is summarized as follows: 1. Identification of hazards/risk sources: 1.1. Risk sources identification (nature and location). 1.2. Characterization of adverse events and its propagation path. 1.3. Definition of possible single and multi-hazard scenarios starting by a given top event and evaluating the possible triggering of other events. 2. Exposure and Vulnerability analysis: 2.1. Definition of exposure. 2.2. Phenomenon intensity distribution (e.g. ground acceleration, pressure waves, distribution of chemical substance concentration for various areas, thermal flow, etc.). 42 2.3. Identification of vulnerable elements (population at risk, strategic infrastructures, historical structures, buildings). 3. Risk estimate: 3.1. Definition of the type of damage (e.g. reversible/irreversible damage to humans; lethality; reversible/irreversible damage to the environment, damages to structures, infrastructures, lifelines, economic damages, etc.). 3.2. Estimate of the entity of damage. 3.3. Probabilistic estimate of risk of each adverse event and of multi-risk. 3.4. Comparison between the multi-risk value and the “acceptable risk”. For the multi-risk comparison it is useful the identification of a common reference damage for all the single risks, for instance the risk of having a number of casualties. In fact once the kind and intensity of the reference damage has been selected, different risks can be ranked on the basis of their probability to originate the reference damage. This may overcome the problem of assigning a monetary value to human life. This is needed if we want to compare risks to damage structures or infrastructures with risks for human life. The sequence of proposed steps is preceded by the characterization of the investigated area and by fixing the time interval of reference: the extent of the area is defined case by case, since the nature of the surrounding areas (type and number of vulnerable territorial and environmental elements) and the extension of the consequences due to the events may induce to expand or reduce the investigated area. The referring time interval is chosen depending on the final goal of the risk analysis; for instance, the time interval can be set to decades for land use planning, or few hours/days to manage an on-going emergency. Multi-risk assessment of a case-study: Casalnuovo (Italy) The case-study of the Casalnuovo municipality, developed during the NARAS project, is used to describe a possible procedure for multi-risk assessment. The Table 2.5 presents the procedure used for single risk assessment. Ranking the risks: The ranking of risks requires that each typology is calculated using the same boundary conditions. First of all it is necessary to define a common timeframe, and the specific kind of damage we are interested in. For the sake of example, in this report they set the timeframe to one year and focus the risk analysis on a damage consisting of human life loss. After the specific analysis and calculations, the annual risk for human life is ranked as follows: As a result, it is stated that the volcanic risk is much higher than others, due to the proximity of the Vesuvius volcano (about 12 km). 43 Hazard Earthquakes Hazard assessment Probabilistic Seismic Hazard Analysis from the INGV. The value used is the PGA having 10% chance of being exceeded in 50 years. River floods Landslide Volcanic risk Map from the River Basin Authority Bayesian event trees based on Marzocchi et al. research works (2004, 2008). The ash load is the only volcanic phenomenon considered for Casalnuovo industrial An event tree methodology is applied to a LPG storage plant. It may lead to several phenomena, among which jet fires. Vulnerability The damage state (DS) of buildings is evaluated using fragility curves corresponding to local typologies. There is no causality in DS0, D1, D2 or DS3 buildings. 0.5% of the occupants are dead in DS4 or DS5 buildings. Statistical evaluation based on historical data. Probability of collapse is a function of ash load. The number of casualties in collapsed buildings is evaluated similarly to the evaluation in the DS4/5 buildings after an earthquake. Death probabilities are associated with the intensity measure characterizing the phenomenon. Thermal flow is used for jet fires. (e.g. death probability reaches 1 when a person is exposed to a thermal flow over 12.5 kW/m2) environmental Event tree for a release of leachate from a landfill. 4 toxic substances are considered and the can impact health through contaminated water ingestion. The population exposed are the people working in the area Slope Factor in mg/(kg.day): dose to which a person can be exposed daily, per body weight, for each of the 4 substances. Table 2.5 Procedures used for single-risk assessment (hazard and vulnerability approaches) in the Casalnuovo case-study of NARAS project Multi-risk due to triggering effects: The following scenario approach is used: Volcano (risk source) → Eruption (event) → Ash fall (phenomenon) → building collapse (damage) → Structural failure of civil infrastructures in the industrial plant (damage that allows the “activation” of the risk source “LPG plant”) → Toxic release / fire / explosion (event) → Substance leakage / Thermal Flow / Pressure Wave (phenomenon) → Environmental air, soil, water contamination (damage that becomes risk source if exposure pathways are active) → contaminant migration (event) → absorption by plants roots and/or inlet into superior organism by direct exposition routes (ingestion, inhalation, dermal 44 contact) (phenomenon) → casualties, acute health damage, chronic health damage (damage). From this cascading sequence of events, it is concluded that the 10 cm ash load does not threaten human life in a single risk approach, but it has an effect once the cascading events are considered, as it increases the pipe-bridge probability of collapse, which leads to casualties once the change is propagated down through the event tree. In conclusion, in a single risk approach, this study considers a large number of hazards, both natural and technological, and compares the associated risks quantitatively, using a common damage unit (the probable number of casualties). This metric helps in the homogenization of the results, however, a limitation of the approach used may be outlined, since, for example, the death estimation in building collapsing under ash load is similar to the one of buildings collapsing under earthquake ground motions, whereas this may be different in terms of duration and potential pre-event evacuation. The use of a multi-risk approach (which considers the possible cascading events) accounts for scenarios that are not seen in a single risk methodology and leads to different loss assessment results. 2.3.2 The “Risque Naturel Transverse” (RISK-NAT) project (e.g., Carnec et al., 2005; Douglas 2005, Douglas 2007) These documents discuss multi-risk assessments in general based on a literature review and no case studies are presented. It is noted that hazard assessment for various natural perils have considerable similarities in terms of, for example, the use of hazard maps for a given return period and the separation of the evaluation into the assessment of ‘event’ parameters characterizing the event in general (e.g. earthquake magnitude) and ‘site’ parameters characterizing the impact of the event at a given point (e.g. peak ground acceleration). In the Douglas (2007) article, an interesting discussion about the use of fragility curves is performed; it contrasts the situation for earthquake risk evaluation (and to some extent, hurricanes) where fragility curves, to predict the damage level given a certain level of ‘site’ parameter, are commonly employed with other types of hazardous events (e.g. landslides) where fragility curves are uncommon and rarely used. It is noted that this means that quantitative risk evaluations are rarely made for these types of perils, which impedes the study of the relative contributions from different hazards to the overall risk at a site. It is argued that physical vulnerability is poorly modelled for these perils for many reasons: the cause of human casualties (from the event itself rather than by building damage); lack of observational data on the hazard, the elements at risk and the induced damage; the complexity of the structural damage mechanisms; the temporal and geographical scales; and the ability to modify the hazard level. This encourages efforts to be made to follow examples for earthquake risk evaluation to improve risk (and not just hazard) evaluations for other phenomena. 2.3.3 The comparative multi-risk assessments for the city of Cologne, Germany (e.g. Grunthal et al., 2006; Kleist et al., 2006; Merz and Thieken, 2009) 45 Three different types of natural hazards (wind storms, river floods and earthquakes) are quantitatively compared in terms of direct economic losses for the city of Cologne, Germany. The aleatory variability of the natural hazards is taken into account by evaluating hazard levels corresponding to annual probability of exceedance. The final result is the direct economic losses against the annual probability as presented in Figure 2.14. Figure 2.14 Final output of the multi-risk analysis done for the city of Cologne, Germany (Grünthal et al., 2006): Risk curves of the hazards due to windstorms, floods and earthquakes for the city of Cologne for losses concerning buildings and contents in the sectors private housing, commerce and industry (reference year: 2000). The approach follows the following steps: 1. Hazard assessment; 2. Asset inventory (common for all three hazards); 3. Vulnerability assessment. This then leads to: 4. The loss estimation; 5. The quantitative risk comparison (final result) Each of these steps may be divided in sub-tasks, as presented below: 46 2 – Asset inventory 1 – Hazard assessment - Choice of a intensity measure i1 for which data is available Collection of historical data for i1 Choice of an extrapolation distribution law Exceedance probability Relating i1 to another intensity measure i2 which is more related to the losses - Distinction of several land uses Spatial use mapping €/m2 value for each sector based on the fixed assets value, discounted in 2000 €s. Map of the land uses and reconstruction cost per kind of land use Hist. Data Extrapolation i1 3 – Vulnerability assessment - Law relating the expected losses to the intensity measure i2 Estimation of the damage ratio Figure 2.15 Sub-tasks for each step of the risk assessment process Hazard assessment The methodology implies the choice of an intensity measure for which historical data is available. Large events are interesting from a risk management point of view but may not have occurred during the observation period. Distribution functions are therefore used to extrapolate the limited data to the long return time periods. An expert has to choose the distribution function as different ones may show the same good agreement with the data but lead to very different extreme values. Another intensity measure , which is better correlated to the losses, may also be introduced and related to . The parameters presented on Table 2.6 are used for each three hazards. Asset inventory Several land uses (e.g. agricultural, private housing …) are distinguished as they have different economical values. They also have different vulnerabilities to floods. Among these sectors, three categories are considered for the direct economic loss estimation: private housing, commerce and industry. It represents 33% of the surface and 83% of the value of the city. Assets of residential buildings are provided by Kleist et al. (2006). 47 Hazard Intensity measure i1 : available in the historical data set i1 Historical data Extrapolation set law Windstorm Mean wind velocity River floods Annual Maximum Series : annual maximum flow rate of the Rhine PGA? Earthquake Hourly wind speeds, 10 min averaged 1971-2000 Daily gauge from 1880 to 1999 Gumbel type I Pearson type III Not detailed, based on Grünthal & Wahlröm, 2006. Different combinations of 14 seismic sources zones are used. Logic tree technique. Intensity measure i2 relevant for the loss estimation i2 Correlation Spatial between i1 and variation i2 Peak Empirical model No gusts (3s) using local velocity parameters Water level and inundation areas Seismic intensity -river discharge water levels - water levels inundation areas : (Digital Elevation Models) Consider a “soft to stiff sedimentary” soil. Yes Negligible. No local site effect Table 2.6 parameters used for the hazard assessment (Grunthal et al., 2006) Vulnerability (Table 2.7) Hazard Windstorm River floods Earthquake Methodology Empirical damage function developed by Munich Re relating Loss ratio to gust speed - The inundation area is divided in 50mx50m cells, which are supposed to belong to a unique economical sector. - Damage ratio function depending on the economic sector and the inundation depth are used. - Field survey and vulnerability classification (EMS-98) of 800 buildings in a test area. - Fragility functions from Raschke, 2003 (apparently). Table 2.7 Summary of vulnerability assessment methodologies The methodology described is intended for a local (city) scale. The Spatial resolutions used are: Grid for the damage function to windstorms: 0.1°x0.1°; Digital elevation model for floods: 50m grid size. As an added value of the methodology, the loss estimation through a common loss unit (chosen to be the direct economic losses) makes the risks associated to different natural hazards quantitatively comparable. However, it should be underlined that whether the choice of the direct loss is the most appropriate is questionable. In fact, the effect of different hazards has different time characteristics. For instance, the recovery of constructions is not the same of that of agricultural land or trees. Different return periods, for different hazards, make it also difficult to integrate the cost over a given period of time. Besides these aspects that need attention, the presented results are interesting. In general it is preferable to cover the whole loss estimation process: probabilistic hazard assessment, vulnerability assessment and loss estimation. That will ease a quantitatively 48 comparison of two different hazards, or even damages to buildings: earthquakes will mostly create structural damages to the structures, whereas floods will first impact the equipment and goods. However, for some hazards, the evaluation of the vulnerability is not easy and in that case it may be acceptable, as a first approach, to go directly from the hazard assessment to the loss estimation if reliable and enough information from the past (similar) events does exist. On the other hand, some limitations can be mentioned: first, as written, “the risk curves were calculated only for the most probable estimates, i.e. uncertainties were not considered.” (Grünthal et al., 2006); for instance, in Grünthal et al. (2006), the statistical uncertainty of the hazard is considered by expressing it for a range of return time periods. Other uncertainties (epistemic…) are presented for the seismic hazard and are mentioned (choice of a distribution function) for floods and windstorms, but are not propagated after the hazard step. In Merz and Thieken (2009), uncertainties for the flood risk are considered and propagated though the loss estimation process (e.g. see Figure 2.16). Figure 2.16 (from Merz & Thieken, 2009). The left figure is similar to one from Grünthal et al. ( 2006) for floods with, in addition, a cluster of curves corresponding to the evaluation and propagation of uncertainties through the loss estimation. The contribution of different steps is illustrated on the right figure. Second, the three considered hazards are among the ones that can be assessed statistically; it may be more difficult to include other types of hazards in this framework because they are usually assed using scenario-based deterministic methods. Finally, only potential direct and tangible damages are considered, which is only a part of the total losses. 2.3.4 The regional-level multi-risk project in the Piedmont region, Italy: “A methodological approach for the definition of multi-risk maps at regional level: first application” (Carpignano et al., 2009) The aim of the paper is to describe the methodology behind the production of regionalscale multi-risk maps. In the paper it is suggested that the shift from single to multi-risk approaches is one where there is a change from a hazard-centred perspective (singletype) to a territorial one, meaning a piece of territory composed of elements at risk that are vulnerable in different ways to various sources of hazard. They therefore divide the multirisk approach into multi-hazard and multi-vulnerability approaches. 49 The methodology was defined in accordance with the current literature and various pieces of legislation with regards to natural and technological risk management, in particular the “Guidelines for the editing of communal plans of civil protection – Piedmont Region” (Piedmont Region, 2004). In the paper there was little written about the methodologies used in defining the hazards, referring simply to various Italian and European legislations. The conceptual model for vulnerability and risk assessment followed is summarized by Figure 2.17. Figure 2.17 The vulnerability model proposed by Carpignano et al. (2009) An initiating event, IE, triggers a sequence (scenario) which results in consequences, C, over an area П. The potential damage, Dp, is for exposed elements, E, the exposure being a function of territorial density. Vulnerability, V, converts Dp to real damage, Dm. Vulnerability is a function of susceptibility, S, and coping capacity Cc. Expressing the model displayed in Figure 2.17 mathematically considering different sources of hazard (seismic, industrial, flood, landslide, forest fire) resulting in different scenarios (earthquake, industrial explosion, industrial fire, industrial toxic release, flood, landslide, forest fire) which causes a mitigated type of damage (e.g., deaths, injuries, collapsed buildings etc.), with eight indicators of damage being defined. Considering i as representing a scenario and j a type of damage gives mitigated damage DM,j,i. This leads to an i × j matrix which is used to display the risk indices Rj,i (Figure 2.18). 50 Figure 2.18 How the combination of scenarios (i) and damage indicators (j) determine the risk indices Rj,i as used by Carpignano et al. (2009). Each hazard is assessed by a historical analysis of past events and of land characteristics (e.g., presence of industries, rivers etc.). The natural hazards are done from a statistical point of view, while the industrial hazards are from an analytical basis. These analyses thus determine the likelihood of an event of intensity m in terms of frequency or probability (m being dependent upon the hazard of concern). Hence risk Rj,i is expressed as: where represents the probability of scenario . This may be shown by Figure 2.18, where the lists of scenarios and damages are given, as well as the risk matrix, with those combination of scenario and damage that are not relevant being marked in grey. The mitigated damage is derived from the potential damage, modified by the susceptibility and coping capacity. The potential damage in turn is found by combining impact area maps with the maps of exposed elements (target density maps). The impact area maps are derived from various sources based on the requirements of Italian legislation which results in hazard zoning for each of the hazards considered. Vulnerability assessment is discussed at some length. Calling upon a scenario i, damage j from an intensity m, two components are calculated, susceptibility (S j,i,m) and coping capacity (Cc,j,i). The corresponding vulnerability (Vj,i,m) is given by: where is the optimal level of reduction of the original susceptibility, where in this case, the Piedmont authorities consider the optimal level to be the total reduction of susceptibility, hence, . This gives a coping capacity equal to 1 (or 100%) or complete mitigation. By contrast, a value of 0 means that there is no damage reduction. 51 Susceptibility in this work refers to the probability of damage imputing to intrinsic characteristics of territory and its elements, e.g., land topography dictates what areas will be flooded. Estimating is carried out using information from the literature and experience from natural events and industrial accidents. This requires searching for correlations between intensity of events and the percentage of potential damage (e.g., for seismic risk, correlation of building susceptibility to intensity values and building categories). Coping capacity as defined in this work deals with activities devoted to mitigating the effects of accidents/natural disasters that guarantee the safety of people and assets. The values of the coping capacity parameters (dealing with monitoring networks, instruments, finances, etc.) were assessed in accordance with expert judgement (civil protection technicians, based on a questionnaire). Civil protection factors, which are used to evaluate coping capacity, were derived from the questionnaire and were grouped into civil protection components which were (see the paper’s Table 3): - Monitoring system, defined by their characteristics (preventative, manual, etc.); Alert system, defined by their characteristics (manual, instrumental, etc.), human resources etc.; Protection measures for population, plans, procedures, training etc.; Protection measures for infrastructures, quality, procedures, training etc.; Assistance measures, accommodation, sanitation etc. The coping capacity was then determined as the sum of performance degrees of each factor weighted by importance. It was then found with respect to a scenario and type of damage as comp comp where comp fact fact such that comp is the importance level of the civil protection component, is the comp performance level of the civil protection component, fact is the importance of level of the civil protection factor and fact is the performance level of the civil protection factor. The cumulative risk is calculated by: where represents the total risk for a type j of damage summed over all scenarios i, with the total risk given by where R is the aggregated risk index and is the weight attributed to j by stakeholders. The results themselves are presented in the form of maps of where the risk for each municipality is expressed in terms of the number of standard deviations from the regional average, showing what parts of the region are subject to greater risk than others for a given type of damage. In the application on the Piedmont Region, Italy, earthquakes, industrial activities (e.g. chemical-industrial plants and transportation of dangerous goods), floods, landslides, and 52 forest fires were the hazards considered for the analysis. These are then investigated in terms of seven scenarios (referred to as in the above discussion): seismic events, explosions, fires, toxic release, floods, landslides, and forest fires. Figure 2.19 is an example of an aggregated risk map. Cascade effects are mentioned but not considered in the presented methodology, but it does discuss a summation of the risk resulting from the different hazards considered. However it is more a sum of single-risk assessments. As added value, we can mention that the outline of the concepts of multi-risk is useful; the description of how vulnerability may be broken down into other components is well outlined. The main value is the provision of summing multiple single risks arising from a variety of hazard scenarios and damage types. Figure 2.19 Example of an aggregated risk map edited by the Civil Protection Department for delivery infrastructures which are exposed to five hazard scenarios: seismic event, industrial accident, flood, landslide and forest fire (Carpignano et al. 2009). 2.3.5 The regional-level initiative of integration of natural and technological risks in Lombardy region, Italy (e.g. Lari et al., 2009) The methodology, intended to be applied at a regional scale, integrates information with different degrees of accuracy into an indicator based approach, in order to develop a regional scale multi-risk assessment and to identify “hot spot” risk areas for more detailed analysis. A relative physical risk indicator based on hazard, vulnerability and exposure was developed with an aggravating factor used to account for societal coping capacity. Weighting methods (based on Budgetary Allocation, Fuzzy Sets and Analytic Hierarchy Process) were used at two levels, first at an individual hazard level to assess hazard, vulnerability and exposure into a relative risk indicator and then to integrate risk for 53 different hazard types into a multi-risk indicator. Sensitivity analysis for varying weights was carried out. In the study, landslides, avalanches, floods, wildfires, seismic, meteorological (lightning), industrial (explosion-related accidents) risks were considered; road accidents, and work injuries were also discussed. The paper provides a practical example illustrating some of the difficulties that often will occur in terms of homogenization of methods for different hazard types: different traditions among professionals, different data types/sources, missing data, different analysis methodologies, comparing very different risk levels. The paper also treats central topics like sensitivity analysis and the importance of risk perception in weighting processes. 2.3.6 A conceptual model for “Reconsidering the risk assessment concept: Standardizing the impact description as a building block for vulnerability assessment” (Hollenstein, 2005) The article proposes a new concept of risk assessment in which hazard impacts and vulnerability are standardized. As explained in the abstract, “this is achieved by defining states of the target objects that depend on the impact and at the same time affect the object’s performance characteristics. The possible state variables can be related to a limited set of impact descriptors termed generic impact description interface. The concept suggests that both hazard and vulnerability assessment models are developed according to the specification of this interface, thus facilitating modularized risk assessments”. Hazard standardization: The hazard impact is characterized based on the intensity of m generic components . A preliminary list of generic components is suggested (see Table 2.8): Table 2.8 list of generic components that may characterize the hazard impact intensity (I) Wrapper functions are used to convert the output of existing hazard assessment procedures into the generic hazard components. 54 Vulnerability standardization The performance of the target object is also characterized by a vector S of n performance characteristics s evaluated between 0 and 1. The vulnerability V of the target is expressed as the relative change in performance for a generic impact (applicable to all objects) min : An intermediary “State” step is also introduced between hazard and performance in order to reduce the chances the important failure mode would not be considered. The goal of the methodology is to be applicable to all hazards. Wind, earthquakes and floods are used as examples in order to present how they can fit into the standardized hazard model framework. As added value, the paper proposes a framework for standardizing the risk assessment for all hazards. It is based on the decomposition of the hazard impact in several physical effects (acceleration, force, pressure…) that are not hazard-specific. This is still a conceptual model, which is a limitation; the model has to be applied and the accuracy of the results has to be shown (acceptance issues). 2.3.7 The Cities project for geohazards in Australian urban communities (e.g. Grander et al., 1999; Granger and Haine, 2001); AGSO - Geoscience Australia is Australia’s leading national geoscience research organisation. The AGSO Cities Project assesses the effects on 27 urban communities of a range of natural hazards. The AGSO Cities Project was established in 1996 to undertake research directed towards the mitigation of the risks faced by Australian urban communities that are posed by a range of geohazards. Geohazards are broadly defined to include all earth surface processes with the potential to cause loss or harm to the community or the environment. The ultimate objective is to improve the safety of communities, and consequently make them more sustainable and prosperous. Their approach in developing a multi-hazard risk assessment, as depicted in Granger and Jones (2001) was not really an attempt to deal with multi-type hazard or risk as is understood within the MATRIX project, it was more the case of multiple single-type hazard and risk. However, some discussion of the correlation of hazards was made (e.g., Granger, 1999). The scale involved was mainly urban community, although some regional (Southeast Queensland) were considered. The communities and areas considered were: Cairns, Mackay, Gladstone, Newcastle, South-east Queensland (mainly Brisbane), and Perth. Table 2.9 outlines the main hazards considered; note, not all hazards were treated for all areas. Likewise, when considering storms, there were some additional subdivisions for specific cases, but these have been combined here for simplicity (thunderstorms and other severe storms). Other hazards were considered in the IID (2006) report, many involving possible industrial or technological incidences, e.g., contamination and pollution, structural 55 failure and fire, transport accidents, epidemics (human, animal and plant) and rarer natural hazards, such as meteorite impacts. Cairns Mackay Gladstone SE Queensland Tsunami Earthquakes X Landslides X Cyclones X Floods X X Newcastle Perth X X X X X X X X X X X X X X X X X X X Stormtides X X Thunderstorms and other severe storms X X X X Heatwaves X X X X Bushfires X X X X Droughts X Fog and frost X Subsidence X Coastal erosion X Table 2.9 Considered hazards in the Cities project for geohazards in Australian urban communities (e.g. Grander et al., 1999) For example, in their report for the South-East Queensland case they have: - established the risk study context and process; identified the key risks faced by the South-East Queensland community that are posed by a range of natural hazards; and, analysed and characterised those risks. Risk evaluation and prioritization (example from the SE Queensland) The method that has gained wide recognition amongst Australian emergency managers is the ‘SMAUG’ approach (which stands for Seriousness, Manageability, Acceptability, Urgency and Growth) based on the work of Kepler and Tregoe (1981). The method involves rating each risk in relation to these criteria as being high, medium or low. The risk management standard (AS/NZS 4360:1999) provides a similar approach based on a matrix to rate risk likelihood qualitatively against its consequences. Although both of these approaches provide a useful method for reaching a qualitative (and subjective) evaluation of risk, especially for a single hazard impact on a relatively small community, they are significantly less useful when applied to a multi-hazard risk evaluation and prioritisation for very large and complex communities such as that covered in this study. The quantitatively-based total risk approach that Granger and Jones (2001) have adopted in this study is intended to provide a more objective means of identifying the risks that pose the greatest threat to the South-East Queensland community and to its constituent neighbourhoods. To achieve this they have measured the input of the three key variables in the total risk relationship, namely the hazards, the community elements exposed to those hazards and the relative vulnerability of those elements. Risks compared: Although there is still some way to go before we can produce a single statistic that is able to measure total risk across all hazards, the authors argue that they 56 have been able to produce statistics that do provide a comparison of the community’s exposure to some major hazards. Building damage is the single, best indicator of risk. That is, the level of building damage can be used to rank risks from various natural hazards (when considered against its probability of occurrence). Building damage can also be used to estimate risk in absolute terms, although such estimates will be incomplete. Other potential direct and indirect costs to the community, for example from casualties or from business interruption, are also important sources of risk. However, the damage to buildings may be the largest component of direct damage from natural hazard disasters. The use of building damage as a surrogate indicator for exposure across all elements at risk clearly imposes limits. However, it is clear that in Australian urban areas, damage to buildings has been the largest component of both direct and indirect damage in natural disasters. A comparison of estimated residential building damage from earthquakes and from severe winds from tropical cyclones, for the entire South-East Queensland region, is shown in Figure 2.20. For earthquakes, damage losses are defined in terms of the percentage of the repair or replacement cost of a ‘typical’ residence including contents or, alternatively, the percentage loss of the repair or replacement cost of the entire residential building stock and contents. For cyclonic winds, damage losses are expressed as a percentage of the total insured value of a ‘typical’ residential building and its contents. Alternatively, the damage losses for wind can be considered as a percentage of the total insured value of all of the residential buildings and their contents. The damage losses are the minimum losses expected for the probability associated with that loss. For example, for earthquakes, there is an annual probability of 0.5% that damage losses will be at least 0.007% of the total insured value. The uncertainties in the results are not shown in Figure 2.20. Because of the very large uncertainties, the risks posed by earthquakes and by severe winds from tropical cyclones, as determined from residential building damage alone, cannot be distinguished apart in Figure 2.20. Risk is related to the area underneath the curve. An important feature of the risk from tropical cyclone winds, and especially from earthquakes, is that a significant amount of all the risk from these hazards is attributed to extreme events. That is, relatively frequent events will not cause high levels of damage, particularly from earthquakes. However, very rare events have the potential to cause large amounts of damage (and earthquakes apparently more than cyclonic winds). 57 Figure 2.20 Comparison of percent building and contents damage from earthquake and cyclone wind The risks posed by storm tide inundation and flooding are also compared. Structure and contents loss curves for flood damage (Blong, 2001) are used to estimate the percent damage loss. The impact of storm tide inundation compared to flood inundation when determining damage estimates is unclear. It is considered, however, that salt water will inflict greater damage and this has been incorporated in the storm tide damage loss shown in Figure 2.21. Though no modelling was available for riverine flood with AEPs less than 1%, damage from riverine flood significantly exceeds damage from storm surge inundation for AEPs of 2% and 1% (Figure 2.21). Although Figure 2.20 and Figure 2.21 are both based on percent damage loss they are not directly comparable. Earthquake and tropical cyclone wind damage losses are based on aggregated damage estimates from numerous scenario events randomly imposed on areas within the region, whereas storm tide and flood damage estimates are based on inundation levels with a particular AEP imposed over the entire region. It is considered that although the latter estimates will overestimate regional risk, they represent the numbers that disaster managers need to base their plans, especially for carrying out precautionary evacuations. Clearly, the estimates of damage in the figures contain many limitations and uncertainties, and the comparisons of risk must be taken as indicative. 58 Figure 2.21 Comparison of percent building and contents damage from storm tide inundation and flood 2.3.8 A multi-hazard risk assessment for the Turrialba city, Costa Rica (e.g., Van Wasten et al., 2002); In the framework of the UNESCO sponsored project on “Capacity Building for Natural Disaster Reduction” a “Regional Action Programme for Central America” was established. Within this project a number of case studies throughout Central America are carried out. The first of these is the multi-hazard risk assessment of the city of Turrialba, located in the central part of Costa Rica. The objectives of this study were to support the local authorities with basic information required for disaster management at the municipal level, through the development of a GIS database, containing the following types of information: - - - Hazard maps indicating the probability of occurrence of potentially damaging phenomena within a given time period. This was done by generating hazard maps for earthquakes, flooding and landslides for different return periods; A database of elements at risk, concentrating on the buildings and the infrastructure in the city; Analysis of vulnerability of the elements at risk, taking into account the intensities of events as indicated in the hazard maps, combined with information from damage curves; Cost estimation of the elements at risk, concentrating on the buildings and their contents; Multi-hazard risk assessment. 59 The reference describes a GIS-based system for risk assessment. The work uses an orthophoto as the basis on which all buildings, land parcels and roads, within the city and its direct surroundings are digitized, resulting in a digital parcel map. Then a number of hazard and vulnerability attributes for the city are collected in the field and from desk studies. The cadastral database of the city is used in combination with the various hazard maps for different return periods to generate vulnerability maps for the city. The vulnerability maps are combined with the cost maps of the elements at risk and the hazard maps per hazard type for the different return periods, in order to obtain graphs of probability versus potential damage. Hazard assessment: In the study three types of hazards were analysed: seismic, flooding and landslide hazard. Probabilistic methods were used in order to obtain the respective values of PGA (peak ground acceleration) of rocks for different return periods, based on the work by Laporte et al. (1994) and Climent (1997). After soil amplification correction, these PGA values were converted to the Modified Mercalli Intensity using the relation from Trifunac and Brady (1975); the analysis resulted in four MMI maps for return periods 25, 50,100 and 200 years. Flood hazard maps were made related to two different phenomena: lateral erosion hazard and inundation depth. As indicated before, flood depth maps were made using historical information from field questionnaires. The resulting point file was converted into a raster map in GIS using contour interpolation and point interpolation. The resulting flood depth maps, for return periods of 25, 50 and 75 years, were classified into a number of classes. Landslide hazard was determined based on the historical landslide inventory and a number of factor maps, using a statistical approach. Vulnerability Assessment: In this study vulnerability assessment was only carried out for the buildings and the contents of buildings, and basically only looking at direct tangible losses. The basic method used was the application of damage-state curves, also called loss functions or vulnerability curves (Smith, 1994). The cadastral database of the city was used, in combination with the various hazard maps for different return periods to generate vulnerability maps for the city. Damage due to flooding depends on several factors, such as water -depth, duration of flooding, flow velocity, sediment concentration and pollution. The study only focused on damage related to water depth, and to velocity in the case of lateral erosion. In the report it is argued that flooding time is generally not very important since most events are related to flash floods with limited duration. The method used in this study for flood vulnerability assessment can be considered as a GIS-based hybrid between the actual flood damage approach and the existing database approach. This is because the vulnerability assessment is based on a detailed database of elements at risk and on field data collection related to the 1996 flood reported damages. Depending on the building type and the number of floors a degree of loss (ranging from 0 to 1) was assigned to each category of elements at risk, in relation with the different floodwater depth classes used. Separate values were assigned for the expected losses related to the contents of buildings. In the case of lateral erosion vulnerability was assumed to be 1 (complete destruction) both for the building as well as for the contents. For the determination of seismic vulnerability, the MMI maps were used in combination with vulnerability functions for different types of constructions adapted from Sauter and 60 Shah (1978), who elaborated functions for Costa Rica as a whole. Vulnerability assessment of population for seismic events was made according to the Radius method, based on the building vulnerability and the type of building (residential, school, office etc.) assuming two different scenarios: during daytime and night-time. For the landslide vulnerability the size of the potential landslide area determined whether the vulnerability was 0, 0.5 or 1. All vulnerability data was used in GIS to generate vulnerability maps for each type of hazard and return period. Cost Estimation (value): In order to determine the value of the elements at risk, differentiation was made between the costs of the constructions and the costs of the contents of the buildings. The costs of the buildings were determined using information from real estate agents and architects in the area. A cost per square meter was entered in the attribute table linked to the cadastral map, and the cost per parcel was obtained by multiplication with the area of the parcel, and the number of floors. A correction factor was applied related to the percentage of the plot, which was actually built-up area, and also a depreciation factor was applied related to the age of the buildings. An estimation of the cost of the contents of buildings was made based on a number of sample investigations for different building types and socioeconomic classes within the city. Based on the cost information three raster maps were generated: one representing the building costs, one representing the construction costs, and one for the total costs . Risk Assessment: In this project, risk is understood as the expected degree of loss due to potentially damaging phenomena within a given time. In this case there are many different potentially damaging phenomena with different return periods. Therefore risk was determined by first calculating specific risk for each hazard type, through the generation of annual risk curves. Specific risk results from multiplying the annual probability factor, vulnerability and cost or indirectly multiplying annual probability with expected damage. Specific risk maps were generated for each type of hazard and each return period by multiplication of the potential damage maps and the annual exceedance probability. First damage maps were generated by multiplication between vulnerability maps and cost maps. For flood risk, damage maps were generated for three return periods (25, 50 and 75 years) from the various vulnerability maps multiplied by the cost map of the contents only, because it was assumed that the flooding will normally have little influence on the building itself. For the maximum flood damage map the vulnerability was considered to be 1 (total destruction). For the lateral erosion damage map also a vulnerability of 1 was assumed, since both buildings and their contents would be lost due to collapse in the event of undercutting. Specific risk maps for seismic hazard were made for the four return periods mentioned earlier (25, 50, 100 and 200 years), each using its own vulnerability map. Estimation of specific risk for landslides was one of the most difficult tasks, since both the probability, magnitude of the landslide, and therefore the vulnerability are very difficult to predict. Here an expert judgment was made and three vulnerability classes were used: 0, 0.5 and 1. The resulting specific risk maps gave information on the total amount of damage expected annually due to a certain type of hazard with a certain return period. This damage was aggregated for the entire city and plotted in a graph of probability versus potential damage, 61 though which a curve was fitted (e.g. Figure 2.22). The area below the graph represents the total damage for the specific type of hazard. Out of these a total risk curve was derived for the combination of the various hazard types, which represents the annual expected losses to buildings and contents of buildings for the various types of natural hazards in the city of Turrialba. The estimation of annual losses for each hazard type and each return period represents a very important “standardization process” which allows hazards to be put into perspective and prioritized accordingly. The data generated can also be used to display a total risk map. Figure 2.22 Specific risk curve for flooding (left) and seismic (right). X-axis is annual exceedance probability; Yaxis is estimated damage in Costa Rican currency In summary, as added value we can say that in this study the same approach is used for all the types of natural hazards considered. This makes the calculated risks for different hazards comparable. The focus of the paper is to develop a GIS-based methodology for risk assessment in urban areas. The GIS platform facilitates the communication of the spatial distribution of risks and evaluation of the effectiveness of risk mitigation measures. On the other hand, possible limitations of the methodology may be that, as with most of those analysed in this review, it does not address the modelling of the interactions among multiple hazards and elements at risk, or modelling of cascading events. Regarding the relationship between magnitude and return period of the different events, as well as the vulnerability assessment of the elements at risk, the analysis relies heavily on historical information and expert judgment. The risk values estimated for individual buildings using the approach outlined in the paper are at best indicative. But they do indicate the relative importance of each type of hazard, and the degree of impact it is likely to have, for the urban area as a whole. 2.3.9 The Central American Probabilistic Risk Assessment (CAPRA) approach (http://www.ecapra.org); CAPRA consists of a GIS-based platform for risk analysis, where probabilistic techniques are applied to the analysis of earthquakes, tsunamis, hurricanes, floods, landslides and volcanoes. Hazard information is combined with exposure and vulnerability data, allowing the user to determine risk simultaneously on an inter-related multi-hazard basis, distinguishing the platform from previous single hazard analyses. 62 Central to CAPRA’s innovation is the integration of Web 2.0 technologies. CAPRA is fundamentally designed to be modular, extensible and open. This allows for mass collaboration, and enables an ever-evolving and sustainable “living instrument”. Built upon the platform, CAPRA applications consist of a risk map tool, a cost-benefit analysis tools for risk prevention or mitigation, and programs that assist in the design of risk financing strategies. Probabilistic Risk Model Components: In CAPRA, risk estimation is focused on probabilistic models that allow us to use the little information available to predict possible catastrophic scenarios for which the uncertainty involved in the analysis is considered high. Consequently, risk evaluation must follow a prospective approach, anticipating scientifically probable events. Considering the large uncertainties associated with the estimation of the magnitude and frequency of natural disasters, the risk model is based on probabilistic functions that incorporate uncertainty in the estimation of risk. Hazard Module: Hazard is understood as the definition of the frequency and severity of occurrence of a determined danger at a specific location. Hazard analysis is based on the historical frequency of events and the magnitude of each one of them. Once the hazard parameters have been defined, it is necessary to generate a group of stochastic events which can define the frequency and magnitude of thousands of events, representing the main hazard parameters of the region. The analysis shows intensity parameter values defined for each one of the studied hazards and for each one of the stochastic events that are being considered, through modelling of each phenomenon. The distribution of the intensities associated to adverse natural phenomena is an essential resource to evaluate risk. Handling this type of information using raster layers in a GIS system, allows the automation of risk calculation processes, as well as a simple and efficient way of sharing the results. Probabilistic models for the natural phenomena that are considered for the study are presented. These include earthquake, hurricane, intense rainfall and volcanic action. In this project, a multi-risk perspective is used, in the sense that it is possible to consider different risks in an approach based on triggering phenomena; in this way, it is expected that the analyst can capture the whole range of possible damage. In particular, the triggering-based focus of the methodology gives the flexibility to determine (e.g. see Figure 2.23): - - Total annual losses associated with a specific hazard (including losses associated with all the considered secondary events). For example: total losses from hurricane = sum of losses due to wind, tides, floods, and landslides; Total losses associated with a specific category of hazard and related to different triggering events, as for example: Total losses from landslides = sum of losses due to landslides triggered by rain, earthquakes, hurricane-generated intense rains; 63 Figure 2.23 Modelling method of hazards based on triggering events The result of the hazard assessment is a database for each of the analysed hazards, which contain a set of exhaustive and mutually exclusive stochastic events, characteristic of the ‘global’ hazard, that correspond to all possible hazard scenarios that can be presented in the studied area. Each analysis provides a geographic distribution of the affected areas using intensity parameters as outlined in Table 2.10. Hazard Earthquake Effect Mass movement Earthquake Tsunami Hurricane Hurricane-generated winds Hurricane Tide Hurricane Hurricane-generated rain Non-hurricane rain Floods Landslides Volcanic eruptions Volcanic eruptions Volcanic eruptions Ash fall Lava flows Pyroclastic flows Intensity parameter Maximum acceleration, velocity, and displacement (and spectral for different structural periods) Depth and area of flooded area Maximum wind speed distribution (3 sec. gusts) Depth and area of flooded area Depth and area of precipitation Depth and area of precipitation Depth and area of flooded area Distribution of security factor or landslide-susceptibility indicator Ash thickness distribution Distribution of affected area Distribution of affected area Table 2.10 Intensity parameters considered of the different hazards 64 Exposure Module: The exposure values of assets at risk are either estimated based on secondary sources, such as existing databases, or derived using simplified procedures that use social and macroeconomic general information, such as population density, construction statistics or more specific particular information. These approximations are used when the specific (asset by asset) information is not available. Based on the available information, an exposure database is created, constructed in a geo-referenced manner, where the specific required information is completed. Additional parameters, highly detailed, can be included in order to improve the general reliability of the results. Special routines allow the visualization of the information contained in the database and the calculation of general interpretation indices. In order to estimate the social impact of a certain event, the building occupation is estimated. The maximum occupation and occupation percentages at different times of the day are defined in order to perform analyses of scenarios with different times of occurrence. When specific occupation information is not available, the approximate occupation density of a certain construction type is used to complete said information. For this study, the estimated exposure is calculated based on information from different sources, such as current databases, asset inventory, land/property value information maps and plans of use and territorial order. Additional information is generated from the analysis of satellite image classification; these images are obtained as support for the study. Finally, this information can be complemented with visits and local registries, which can supply information for the analysis. Vulnerability Module: This module allows the user to assign vulnerability functions to each one of the assets stated in the exposure inventory. Using the assigned vulnerability functions, it is possible to quantify the damage or affectation produced in each of the assets before the action of a certain event, characterized by one of the defined parameters of intensity. The assignment of a vulnerability function to each asset is performed according to the main characteristics of the component, in terms of its general behaviour regarding the action of the considered event, as well as that of its main physical and mechanical properties, which constitute the variable that defines its behaviour. The vulnerability functions are calculated considering (1) the materials of the main structure and of masonry; (2) general geometry; (3) structural type; (4) types of ends and junctions; (5) date of building and normative used; (6) state evaluation and possible previous damages; (7) defects and identifiable weakness ; (8) previous reinforcement works; and (9) inelastic behaviour expected. The estimation of damage or affectation is normally measured in terms of the Mean Damage Ratio (RMD for its acronym in Spanish). The RMD is defined as the relationship between the expected cost of repairing the affected element and the replacement cost of the same element. The vulnerability function or curve is defined as the relationship between the RMD and the intensity parameter that was selected for that particular event. Each component of a given system will have a different vulnerability function assigned for each one of the event to which it will be exposed. 65 Damage and Loss Module: In order to calculate the losses associated with a certain event, the RMD, obtained from the vulnerability function, and multiplied by the replacement value of the component, represents the economic loss value. This operation is repeated for each asset or element accounted for in the inventory for each one of the analysed events. Afterwards, the losses are added up, following a proper arithmetic method that is suitable for probability density functions, as required. For loss calculations associated with risk transference and insurance, parameters such as deductibles, maximum limits, coinsurances and others are taken into account. The parameters that are used to measure the risk, give necessary information for future risk management to those who are in charge of making the decisions. The main measurements of economic risk are: - - Expected Annual Loss (PAE): the sum, for all the considered events, of the product of expected losses and the probability of occurrence of the given event; Pure Risk Premium (PPR): the PAE divided by the replacement value of the asset; Excess Loss Curve (CEP): annual frequency with which a given economic loss will be exceeded. This is considered here as the most important measure for risk management, since it provides basic information for planning and resources assignment. The CEP may be estimated from the most probable event in a year, or in a uniform way for all the possible events as function of the return period; Probable Maximum Loss (PML): represents the loss value for a given exceedance. On the other hand, additionally to the probabilistic parameters of risk quantification that have been mentioned, it is also useful for disaster management, emergency management and risk mitigation, to have damage and loss scenarios from a deterministic perspective or of specific events, such as some historical events or events with an established return period. Uncertainty considerations: for each considered hazard, uncertainty is assessed in terms of the expected variability of each key parameter by their respective coefficients of variation. This uncertainty is considered at different levels of the modelling processes, up to arriving at a ‘global’ uncertainty assessment that can be assigned to the final values of estimated losses. -Risk Evaluation from a Holistic Point of View: Holistic risk evaluation is based on amplifying the physical risk by an impact factor that depends on the specific conditions of the socioeconomic context in which the disaster happens, which make the initial scenario of physical loss (Cardona and Hurtado 2000) worse. The Urban Seismic Risk Index (USRi) proposed at Carreño et al., 2007, is a composite indicator that measures the risk associated to earthquake from an integral perspective, allowing risk management to include multidisciplinary aspects of vulnerability reduction and intervention (e.g. see Figure 2.24). This approach can be applied to risk evaluation for any type of natural hazard, from the initial evaluation of physical damage 66 with associated potential to the phenomenon. The social conditions that aggravate the physical effects of the phenomenon are taken into consideration, doing so, the risk is established for each analysis unit, through impact factors that modify the physical risk associated with the vulnerability of buildings and infrastructure, in order to consider the socioeconomic conditions of each unit. Figure 2.24 Theoretical framework and model for holistic approach of disaster risk (from Carreño et al., 2007) Once there is an evaluation for a certain village or city, it is simple to identify the most relevant aspects in the total risk index. Mitigation priorities can be established in order to modify those conditions (sub-indicators) that have a larger influence over the total risk. This technique allows us to compare risk under different particular socioeconomic conditions. It must be focused towards risk control instead of obtaining a precise evaluation of it. The final objective is to supply the users with information that allows them to take better decisions. 2.3.10 The ‘Regional RiskScape’ project in New Zealand: “Quantitative multi-risk analysis for Natural hazards: a framework for multi-risk modelling.” (Schmidt et al., 2011) This paper introduces a generic framework for multi-risk modelling developed in the project ‘Regional RiskScape’ by the Research Organizations GNS Science and the National Institute of Water and Atmospheric Research Ltd. (NIWA) in New Zealand. The goal was to develop a generic technology for modelling risks from different natural hazards and for various elements at risk. The technical framework is not dependent on the specific nature of the individual hazard nor the vulnerability and the type of the individual assets. The paper describes a generic framework and prototype software (called RiskScape) for assessing the risk (loss) due to generic natural hazard(s). The fundamental components of a risk model, namely hazard, values of assets (elements at risk) and [physical] vulnerability models (fragility functions) for the system under consideration are specified in a standardized manner and losses due to various natural hazard scenarios are evaluated. 67 Thus, the developed prototype system should be able to accommodate any hazard, asset or fragility model, which is provided to the system according to that standard. The software prototype was tested by modelling earthquake, volcanic ash fall, flood, wind, and tsunami risks for several urban centres and small communities in New Zealand; in the paper, example calculations are provided for earthquakes, storms and tsunami hazards at a regional-scale (Hawke’s Bay in New Zealand), but the software could be applied at any scale. As of now the model only considers specific hazard event scenarios in a deterministic manner. Neither possible interactions among the hazards nor cascading events are considered. The authors claim that a probabilistic version of the software is under development. RiskScape functions for calculations of risk: The functionalities of Riskscape are implemented as an application programmer interface (API) based on the above RiskScape specifications and include the following: 1. Calculation of affected (exposed) assets. This involves either overlaying the spatial representation of a hazard magnitude, the hazard exposures (e.g. flood depth, ground shaking magnitude.) as derived from the hazard module onto the spatial representation of asset module (e.g. building locations) as stored in the asset module or the direct calculation of the same quantities based on a module-specific algorithm. The calculation results in hazard magnitudes at asset locations (called ‘asset exposures’) hence affected assets are identified, and their exposure determined. 2. Calculation of relative loss (damage ratio). This involves applying a user-selected fragility function to a set of assets and asset exposures. The RiskScape system extracts relevant asset attributes and asset exposures as required by the fragility function, applies the fragility function and returns a damage ratio for each asset. 3. Calculation of absolute loss by including a valuation model for assets. If a valuation is available for the considered asset (e.g. reconstruction costs, clean-up costs), the valuation can be multiplied by damage ratio to return absolute damage or monetary losses, respectively. 4. Calculation of time-averaged loss (=risk). If a hazard probability is available for the used hazard module (and event), the absolute losses can be converted into losses per time period—typically a year (e.g. as $/year). This enables the user to compare potential losses for different event magnitudes. 5. Calculation of space-averaged loss can be of interest to planners to identify general areas of higher potential impacts. This is done by applying an aggregation units module to the calculated losses and returns losses per area (e.g. as $/km2 or as $/km2/year). RiskScape methodology was used to simulate the potential impacts of an extreme earthquake event, a simulated design storm event and a simulated local river flood scenario on the Hawke’s Bay building infrastructure. All the calculated damage ratios and losses were aggregated onto a regular 1 x 1 km grid. This then allows the risk profiles of the different hazards to be compared with each other. The presented results are indicative only and are based on preliminary fragility models and asset estimates from available data sources. The underlying asset and fragility databases do not allow an exact quantitative 68 risk calculation for the region. Moreover, some of the hazard models are preliminary in nature. These results are presented only to illustrate the capabilities of the software system and not as a quantitative risk study for the Hawke’s Bay area (e.g. see Figure 2.25). Figure 2.25 Example output for a risk assessment for the Hawke’s Bay area using the RiskScape software. (a) 1931 historical earthquake event applied to calculate building losses in terms of reconstruction costs (scenaro); (b) 1,000-year design storm event applied to calculate building damages, here expressed as damage ratio (% destroyed); (c) Flood inundation from a Tutaekuri Meeanee river breach scenario applied to calculate building damages, here expressed as damage ratio (% destroyed). Comparison of risks for the different hazard scenarios can assist in cost–benefit analyses of prevention measures and help targeting mitigation and emergency planning. All the modelled scenarios are considered to be low-frequency extreme events. It has to be noted that the comparison presented here is based on different event scenarios, and a more robust multi-risk analysis needs to include a clear quantification of event probability, which in this paper was not done, as information on event probability was available only for one of the scenarios. The author argues that this is planned in future work. Analysing the statistics of losses and the overall frequency distribution of calculated individual losses (Figure 2.26) for the different hazard types delivers diagnostics of individual hazard signatures, which -the authors argue- can be helpful for planning/emergency purposes. They normalized loss as loss densities ($/km2) and displayed them as cumulative statistics relative to the total affected asset base to make the different scenarios comparable. The flood scenario mostly creates lower damages to buildings in a confined area; the earthquake scenario, centred over Napier, affects many high-value buildings, whereas the storm simulation creates low and high damages over a much wider area; both the earthquake and the storm scenario create a similar large total damage of about 3.5 billon NZ$ to the building stock. 69 Figure 2.26 Frequency distributions (% of affected area exceeding certain loss) of total building damage (as reconstruction costs per km2) for the earthquake, flood and storm scenarios for Hawke’s Bay building assets. The earthquake scenario has more higher damages (~70% of damages>$10,000/km2; ~5% of damages>$1,000,000/km2); the flood scenario has more lower damages (for ~50% of the area, damages are negligible; for the rest of the area, the damages vary exponentially between $100,000/km2 and $100 Mio/km2); the storm scenario has similar frequency characteristics compared to the earthquake scenario with higher frequency of damages between $10,000/km2 and $1Mio/km2 (~80% of damages>$10,000/km2, almost 100% of damages < $10 Mio/km2) As added value, we can say that the same modelling approaches and methodology are used for all types of natural hazards. This makes the calculated risks for different types of hazard comparable. However, in its present form, the system is not capable of modelling the interactions among multiple hazards and elements at risk, nor is it capable of modelling cascading events. 2.3.11 Multi-risk initiatives in volcanic areas Three initiatives of a kind of multi-risk assessment but considering just volcanic areas (a single or multiple volcanic sources generating different kinds of volcanic-related hazards) have been found: the “Explosive Eruption Risk and Decision Support for EU Populations Threatened by Volcanoes” (EXPLORIS) project (e.g., Hincks et al., 2006); a volcanic risk ranking initiative for the Auckland region, New Zealand (e.g. Magill and Blong, 2005a,b) and the GRINP project at Mount Cameroon volcano (e.g. Thierry et al., 2008). Given that the specific case of volcanic risk assessment (considered as a ‘single’ risk case) is discussed with more detail in the MATRIX deliverable D2.1, here we give just a general description of those documents and invite the reader to see a more detailed description of some of those initiatives in the D2.1 of MATRIX. In Hincks et al., 2006 (EXPLORIS), the probabilistic risk assessment methodology proposed is based on an event-tree structure. It is stated that to enable a complete risk assessment to be performed, multiple scenarios should be defined to represent the range of possible eruptive behaviour of the volcano. A number of sub-events have therefore been defined for each scenario, with appropriate distributions for eruption parameters and event occurrence obtained using a combination of expert judgment and evidence from the volcanic record. 70 Multiple hazard maps are required to capture the variation in extent and severity of impact under each scenario/event. Where possible ensemble style hazard modelling can be employed, using alternative numerical codes used to generate input hazard data. Here, two methods are used to assign probabilities: (1) expert elicitation, and (2) statistical distribution assignment. Building damage is divided in to six categories, ranked in order of severity of risk to building occupants: Level 6: Structural failure due to pyroclastic flow; Level 5: Structural failure due to earthquake; Level 4: Roof collapse due to tephra loading; Level 3: Failure of 3 or more windows or openings; Level 2: Failure of 2 windows or openings; Level 1: Failure of 1 window or opening; Level 0: Building envelope intact (infiltration hazard only). Vulnerability functions have been defined for all building classes to estimate probability of damage under hazard conditions. Human vulnerability functions describe the probability of death or serious injury to occupants. All vulnerability function parameters are assumed uncertain, and allowed to vary with specified distribution functions. The Event Tree formulation developed in EXPLORIS has been used to calculate the probability-of-exceedance risk maps showing, for example, the annualised risk to building stock. In EXPLORIS, risk it is proposed to be quantified in terms of causality numbers, building loss, and individual risk. In Magill and Blong (2005a,b), a method is presented for ranking volcanic hazards and events according to their potential risk, and it is applied to the Auckland region. It is stated that due to the long return periods of volcanic events and changes in eruption styles with time it is often difficult to determine precise values for these parameters; then it is suggested that a method for assigning values is to define categories for each parameter, within which hazards can be placed, and then assign a value for each category. Due to the large variability in volcanic hazard characteristics, they chose to define categories based on order of magnitude values. This is analogous to a number of magnitude and intensity scales used for classifying natural hazards (like the Richter magnitude scale for earthquakes). In the case of volcanic eruptions, the Volcanic Explosivity Index (VEI) contains nine categories with eruption volume increasing logarithmically from less than 104 m3 to greater than 1012 m3 (Newhall and Self, 1982). Similarly, resulting damage ranges from small clean-up costs to total destruction and an order of magnitude scale also seems appropriate. The effect of a hazard is quantified based on the ‘susceptibility’ of the item affected and the properties of the hazard; proportions of total loss for buildings and human life, within the extent, were determined and effect values assigned. For simplicity, they assumed the population to be evenly distributed throughout the affected area. For building damage, ‘order of magnitude’ categories for effect were based on the proportion of total building loss. So that values could be more easily assigned to categories, a minimum proportion of total loss was given to each category based on an average total replacement value of NZ$200,000. Each hazard was assigned to the categories in a relative manner, based on some observations that can be found in Magill and Blong (2005b). 71 Risk was calculated for building damage and loss of human life for every hazard caused by each volcanic event, using the relationship (for details see MATRIX D2.1 and Magill and Blong (2005a, 2005b): Finally, in the GRINP project for Mount Cameroon (Thierry et al., 2008), The approach follows the following steps: - Characterization of the physical environment; - Hazard assessment and zoning: hazard is estimated through the frequency (F) or probability of occurrence of the different geological phenomena, the intensity (I) or destructive power of the said phenomena and the extension (E) expressing what percent of the threatened surface is possibly affected; Hazard threat index are associated with global recommendation (e.g. « permanent human settlement is inadvisable unless major precautions are taken »); - Characterization of the exposed elements: inventory and localization of the exposed elements (population, buildings, vegetation, strategic infrastructures, etc.); - Vulnerability analysis of the various elements at risk: for each element at risk and each type of phenomenon, a fragility curve is defined according to the methodology exposed in Figure 2; - Risk analysis : obtained by crossing information on hazard and vulnerability of exposed elements Figure 2.27 Diagram of the vulnerability assessment principle used in Thierry et al., 2006 As hazards, six volcanic phenomena linked to the eruptions (lava flows, aerial fallout, gas, lahars, medium- and large-amplitude ground movements, tidal waves), two slope instability phenomena (landslides and block falls), and one tectonic phenomenon (earthquakes). As added value of this project, it can be mentioned that a practical and structured approach to combine various hazards affecting the same area was proposed. An approach to assess and analyse risk is presented, which has implied bringing together and structure in a seamless way much information on exposed elements and their vulnerability to each hazard. Finally, this study served as basis for the Cameroonian authorities for implementing a hazard prevention strategy and for improving preparedness to crisis. 72 3. Summary of the main results: general maps, risk indices and risk curves In section 2 we summarized the methodological approaches proposed by the most important European and international multi-risk projects, as well as research papers and practical applications found in literature. In this section we will summarize the most important results and achievements as outlined by this state-of-the-art analysis, as well as the main constraints and gaps found. 3.1 General considerations Starting from its general definition (e.g. see. MATRIX deliverable D3.2), multi-risk assessment may be understood as the process “to determine the whole risk from several hazards, taking into account possible hazards and vulnerability interactions”. Then, a full multi-risk approach entails both a multi-hazard and multi-vulnerability perspective. The kind of hazardous events considered may include (1) events occurring at the same time or shortly following each other (because they are dependent on one another or because they are caused by the same triggering event or hazard) –which is mainly the case of “cascading events”—, or (2) hazardous events threatening the same elements at risk (vulnerable/exposed elements) without chronological coincidence (e.g. European Commission, 2010). From the bibliographic review performed, it emerges that most –if not all- of the initiatives on multi-risk assessment have developed methodological approaches that consider the multi-risk problem in a partial way, since their analyses basically concentrate on the second part of the general definition, i.e. the risk assessment for different hazards threatening the same exposed elements. Within this framework, the main emphasis has been towards the definition of procedures for the homogenization of spatial and temporal resolution for the assessment of different hazards. For vulnerability instead, being a wider concept, there is a stronger divergence on its definition and assessment methods; considering physical vulnerability issues, a more or less generalized agreement on the use of vulnerability functions (fragility curves) has been reached, which facilitate the application of such a kind of multi-risk analysis, however, for other kinds of vulnerability assessment (e.g. social, environmental, etc.) it is less clear how to integrate them within a multi-risk framework. In this framework the final multi-risk index is generally estimated as a simple aggregation of the single indices estimated for different hazards. Other approaches consider a single hazard at a time and multiple exposed elements (e.g. buildings, people, etc.) for the vulnerability, which are combined and weighted according to expert opinion and subjective assignment of weights. The choice of the methodology strongly depends on both the scale of the study and the availability of information (for hazard and vulnerability assessment). Noteworthy, many of the approaches found define theoretical frameworks for the multi-risk assessment that, when applied to real cases, are generally simplified This is due to the difficulty in obtaining the detailed information needed. It is also interesting to point out that many of the reports discuss the importance of the interaction among hazards and cascading of events for a fully multi-hazard perspective, however, few efforts have been done in order to define a rigorous methodology. 73 3.2 Scale constraints The first point that we can outline is about the scale constraints. Looking at the most important applications, it is evident that the methodological approach used is strongly determined by the scale of the study; for instance, if we consider the ‘large-scale’ methodologies (see Sec. 2.1), the multi-risk analysis is generally performed by the use of risk indices representing expected annual mortality and economic losses; a “total” risk index is estimated as a simple aggregation of single risks, and hazard or vulnerability interactions or cascade effects are not considered. This kind of result represents a synoptical methodology principally addressed to global policies with very low reliability at the local scale; the objective being to identify hotspots where natural hazard impacts may be largest. As we go down in the scale of the analysis (see Sec. 2.2 and 2.3), multi-risk assessment is generally based on more detailed analysis. For this kind of procedures, risk from different hazards is quantified either using a common metrics (in general expected mortality or economic losses in a given timeframe –normally 1 year-), or based on normalized indices resulting from the grouping of hazard intensities and vulnerability degrees in generic classes (low to high). The results are generally expressed using risk curves or risk indices that, as result of homogenized analysis, may be ranked and allow direct risk comparison for different typologies of natural and man-made adverse events. 3.3 Presentation of results: general risk maps, risk curves and risk indices. Among all the methodologies proposed in the reviewed project reports and research papers, different approaches to represent the final results have been proposed. As mentioned before, the kind of analysis strongly depends on the scale of the particular problem, hence the different possible output results. Figure 3.1 summarizes some of the most important typologies of results proposed in the reviewed multi-risk methodologies. From the global methodologies, the output of the multirisk analysis is generally presented as global maps (discretized in grids of different spatial resolution) of expected annual losses in terms of the metric chosen for the analysis (i.e. mortality or economic), as reported for example in Figure 3.1a. Risk indices, in terms of a given quantitative loss metric or normalized and/or relative index values, are generally used in (medium) regional scale studies. An example of this kind of results is presented in Figure 3.1b from the ESPON project, in which an aggregated risk map (generated from 15 aggregated natural and anthropogenic hazards) is presented using an ad-hoc index. In this case, the final map is an integrated risk map that is a combination of the vulnerability map and the aggregated hazard map (based on a weighting procedure using the Delphi method). This kind of risk map is accompanied by a legend that displays the hazard values on the y-axis and the integrated vulnerability on the x axis, and where different shades of the same colour allow distinguishing between a higher intensity of a hazard or a higher degree of vulnerability, respectively. An example of a risk index based on a given quantitative loss metric is presented in Figure 3.1c. In this case, different scenarios-damage indicators are used to determine different scenario-based risk indices, which after weighting are summed up to determine a final aggregated risk index. 74 The use of risk curves for the results of risk quantification is more common in local scale analysis, i.e., the risk curves are the result of the combination of a generic hazard curve (that relates a given hazard intensity measure in the x axis with the return period, probability of occurrence or probability to threshold overcome in the y axis), with one or more fragility curves (that relate the same hazard intensity measure with the probability of damage, allowing the translation of vulnerability to loss). Two possible approaches have been found in literature to use risk curves in a multi-risk analysis. Figure 3.1d is a sketch proposed by ARMONIA (2007), in which different kinds of vulnerability functions are plotted having a different x axis for any hazard typology and a common y axis (e.g., an average damage metric). Therefore, it would be possible to represent all the risk with the same factor; in this way a harmonized conjunction point between hazards and risk can be found. On the other hand, comparative plots of different risk curves can be also constructed as shown in Figure 3.1e; in this kind of approach, the risk curve relates the (generally annual) probability of exceedance (of a given loss) on the y axis, with the losses (in the considered metric) on the x axis. The loss estimation through a common loss unit (in this case chosen to be the direct economic losses) makes the risks associated with different natural hazards quantitatively comparable. These kinds of risk curves may be a mid-way step before arriving at a final risk index useful for risk ranking. For instance, when integrating the risk curves it is possible to obtain a single risk value (with the same units of measure) that can be used for ranking the risks, as shown in Figure 3.1f, which represents the risk ranking for Casalnuovo municipality (Marzocchi et al., 2009). 75 (a) (b) (c) (d) (e) (f) 76 Figure 3.1 Summary of the most important typologies of results of multi-risk methodologies found in literature: (a) example of global distribution of flood risk (expected mortality, from Dilley et al., 2005) ), for details see Figure 2.2 in this document; (b) example of an aggregated risk map from the ESPON methodology (from Schmith-Thomé, P. Ed., 2005); for details see Figure 2.4 in this document; (c) combination of scenarios (i) and damage indicators (j) to determine the risk indices Rj,i (from Carpignano et al., 2009), for details see Figure 2.18 and Figure 2.19; (d) diagram of a proposed ARMONIA function between hazard types intensity (x-axis) vs. average damage of exposed elements (y-axis) according to scale of analysis (from ARMONIA, 2007, for details see Figure 2.6 of this document); (e) comparison of risk curves for the hazards due to windstorms, floods and earthquakes (from Grünthal et al., 2006), for details see Figure 2.14 in this document; (f) risk ranking (from Marzocchi et al., 2009 [Note: the sketch of the risk curves is from ARMONIA, 2007]). 3.4 Final remarks, limitations and gaps The analysis performed of the state-of-the-art on multi-risk assessment from the different European and international initiatives described in this document has highlighted the following main features and gaps to be considered for the development of MATRIX products: - Different methodologies, ranging from simplified approaches to innovative and advanced methods, were identified in this state-of-the-art analysis. Nevertheless, practically all the reported studies present important problems when transformed into practical applications. For instance, any methodological approach for multi-risk assessment is strongly constrained by both data availability (for hazard and vulnerability assessment) and the scale of the problem; - Multi-risk approaches may imply multiple hazards affecting the same exposed elements, and/or one or more hazard affecting different categories of exposed elements. In the first case, quantitative risk assessment is generally more viable since a common metric for loss assessment is easier to be defined (i.e. risk harmonization based on the harmonization of effects). In the second case, considering different categories of exposed elements (e.g. buildings, population, green areas, environmental, etc.) imply difficulties on both the definition of a common metric for loss assessment, and how to weight the different categories of exposed elements. This kind of analysis involves strong subjective decisions that are not always easy to justify, and the risk quantification is generally performed using normalized indices that may allow, for example, individuate hotspots of high risk to be identified. However, sometimes its utility for risk management and decision-making may be questionable. - The most basic requisite for a quantitative multi-risk assessment is the definition of a target area, common time frame, a quantitative assessment of hazards (generally in probability terms), a coherent vulnerability assessment (i.e., linked to the intensity measure parameterizations adopted for the hazard assessment), and a defined metric to quantify losses. However, the choice of a specific kind of loss metric may present different problems and limitations. In fact, the effect of different hazards may have different temporal characteristics (e.g. the recovery of construction is not the same of that of agricultural land or trees). Also different return periods, for 77 different hazards, may pose difficulties to integrate the cost over a given period of time. - A strong limitation found up to now is that none of the analysed studies produce a rigorous methodology for multi-hazard assessment. Most of the multi-risk methodologies consider the effect of different hazards as independent, neglecting the possibility of hazard interaction or cascade effects. Worthy of note, many of the reviewed documents write comments about the importance that cascades of events or hazard interactions may have for the risk, but very few try to quantify some basic scenarios. - Linked to the previous point, multi-risk assessment requires also a careful evaluation of the interaction between vulnerabilities to different hazards. For example, the seismic vulnerability of an edifice changes significantly if the roof is loaded by volcanic ash. Only very little effort has been devoted to tackle this issue. - One of the main gaps found for the practical application of the more important quantitative multi-risk methodologies found in literature is the lack of fragility curves derived by intensity (of the hazardous event) vs. typology of exposed elements. This topic can be considered as one of the most significant matters to be addressed for future developments of multi-risk analysis, especially in high-resolution analysis (at local scale). - Another gap found is in the treatment of uncertainties. None of the methodologies consider uncertainty quantification at any step of the process (except for some specific hazard assessment approaches), nor propagate (epistemic) uncertainties up to the final risk values. 78 4. References ARMONIA: Applied multi-risk mapping of natural hazards for impact assessment, 2007. EC project, contract 511208. (Consulted deliverables: 3.1, 3.1.1, and 6.1) Bovolo C.I., S.J. Abele, J.C. Bathurst, D. 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