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Challenges in vulnerability mapping Guro Aandahl, CICERO, and Dr Robin Leichenko, Rutgers University Presented at the GECHS Open Meeting in Montreal 16.-18. October 2003 Vulnerability to Climate Change and Economic Changes in Indian Agriculture • Aim: Assess vulnerability of Indian agriculture to climate change in the context of economic changes. Identify highly vulnerable areas and groups, and provide policy makers with advise on how to reduce the vulnerability of farmers • TERI (India), CICERO (Norway), IISD (Canada) • Funded by CIDA, the Canadian International Development Authority, and the Norwegian Ministry of Foreign Affairs Methods – challenges and choices 1. Can we measure vulnerability? • operationalization 2. Can we find data – and trust it? • data availability and reliability 3. How do we define different levels of vulnerability? • normalization and classification 4. Is mapping enough? Can we measure vulnerability? operationalization Vulnerability - definition “…the exposure to contingencies and stress, and difficulty in coping with them. Vulnerability thus has two sides: an external side of risks, shocks and stress to which an individual or household is subject; and an internal side which is defencelessness, meaning a lack of means to cope without damaging loss” (p.1, Chambers 1989) Poverty and vulnerability • Are poor more likely to be exposed? – To computer viruses: clearly not – To earthquakes: Gujarat 2001, middle class people died – To climate change, droughts, floods etc: yes, to a certain extent • The poorest often live on and from marginal lands and floodplains • However, drought (or erratic rainfall) hits everybody Poverty and vulnerability • Are poor less able to cope? Yes. – Less resources – Sell off productive resources – Fall down the poverty ratchet Dimensions of vulnerability (our operationalization) • Social development • Technological development • Biophysical conditions Index for each of these factors. Can we find data – and trust it? data availability and reliability V.-Dimension Wanted variables Empowerment Child sex rate (”missing girls” or excess girl mortality) Female literacy level Literacy level Fertility level Share of landholdings by farm size % Landless agricultural labourers Technology Irrigation rate Infrastructure Development Index (CMIE) Source of irrigation Access to safe drinking water Fertilizer consumption Poverty People below poverty line Infant Mortality Rate Housing status Dependency on agriculture Employment in agriculture V.-Dimension Available data Empowerment Child sex rate (”missing girls” or excess girl mortality) Female literacy level Literacy level Fertility level Share of landholdings by farm size % Landless agricultural labourers Technology Irrigation rate Infrastructure Development Index (CMIE) Source of irrigation Access to safe drinking water Fertilizer consumption Poverty People below poverty line Infant Mortality Rate Housing status Dependency on agriculture Employment in agriculture Reliability: The social nature of data “Data are usually treated unproblematically except for technical concerns about errors. But data are much more than technical compilations. Every data set represents a myriad of social relations.” (Taylor and Johnston 1995, p58) Data and social relations: Example: Sources of Irrigation statistics • Irrigation Department – Basis for repayment of water fee to maintain irrigation facilities • Revenue office – Basis for land taxes which are higher for irrigated lands • Agriculture Department – Supposed to survey all land in the district No consistency between these sources How do we define different levels of vulnerability? Normalization and classification Normalization • HDI method (UNDP): Normalization to the range ( xi xmin ) 100 ( xmax xmin ) • But to which range? Fixing of ”goalposts” • Comparison in space – Who should we measure against? • …and time – Retrospective: What has happened in earlier periods? – Prospective: What are projections for the future? (reference: Anand and Sen 1994) Alternative goalposts 1. Actually occuring range or 2. Predefined maximum and minimum values Goalposts: actual range or predefined? Indicator Occuring range [1991,2001] Independent min and max 6,6% - 94,7% 0% - 100% Agricultural labourers 0,06% - 88,25% 0% – 100% Literacy 13,7% - 95,7% 10%– 100% Female literacy 4,2% - 93,97% 0% – 100% ”Missing girls” 43,2% - 48,5%* 40,0% - 48,5%* Agricultural dependency Normalization: range (2) vs predefined max and min (3) Normalization: range (2) vs predefined max and min (3) - impact on ranks How to lie with maps: Classification • Exaggerate non-significant differences • Hide significant differences Data distribution for social index, 1991 SV91_2 80.00 70.00 Vulnerability score 60.00 50.00 40.00 30.00 20.00 10.00 0.00 1 13 25 37 49 61 73 85 97 109 121 133 145 157 169 181 193 205 217 229 241 253 265 277 289 301 313 325 337 349 361 373 385 397 409 421 433 Districts Data distribution for social index, 1991 – natural breaks (minimized variance within groups) Data distribution, norm to range 80.00 70.00 Vulnerability score 60.00 50.00 40.00 30.00 20.00 10.00 0.00 1 13 25 37 49 61 73 85 97 109 121 133 145 157 169 181 193 205 217 229 241 253 265 277 289 301 313 325 337 349 361 373 385 397 409 421 433 Districts Data distribution for social index, 1991 – quantiles (groups are equal size, 20% of pop) Data distribution, norm to range 80.00 70.00 Vulnerability score 60.00 50.00 40.00 30.00 20.00 10.00 0.00 1 13 25 37 49 61 73 85 97 109 121 133 145 157 169 181 193 205 217 229 241 253 265 277 289 301 313 325 337 349 361 373 385 397 409 421 433 Districts Classification: natural breaks (nb) vs quantiles (qnt) Ground truth and causal analysis The need for field work and case studies Anantapur, Andhra Pradesh – four years of drought Anantapur villagers Anantapur, Andhra Pradesh – four years of drought Large landowner • Been running at loss for four years • Taken son out of private school • Sold his car • Incurring debt Anantapur, Andhra Pradesh – four years of drought Poor peasants, labourers • Has to migrate for work • Last in line for village well • Incurring debt • Gets work through food for work programme To conclude ”All maps state an argument about the world” (Harley) • Know your concepts • Know your data • Know your people