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QUANTIFYING THE POTENTIALS OF A NEW HIGH SPEED TRAIN USING A GRAVITY MODEL AND GIS Simone Ehrenberger, Joachim Winter, Fabian Malik German Aerospace Centre, Institute for Vehicle Concepts, Stuttgart, Germany 1 Introduction Mobility is an important part of today’s life. It is not only a necessity for each individual, economic progress also depends on a highly developed infrastructure. In the past years, high speed rail (HSR) has become more and more important in infrastructure policy. HSR promises an energy efficient, safe and comfortable way of travelling. During the past years, new high speed rail lines have been built in several countries. As leading country, China has built 6,500 km of HSR tracks up to now and is planning to expand its network to 13,000 km until 2012 [1]. From a political point of view transportation and transport infrastructure plays a central role for social and economic development. In the last years, transport policy is closely connected to energy policy and the global aim to reduce carbon emissions. Driven by these environmental targets, rail-bound transportation has experienced a revitalisation in numerous countries in the past few years. Especially HSR benefits from this development. With a considerably low energy consumption of high speed trains per kilometre and seat in comparison with airplanes, expanding HSR networks will support development towards a more environmental friendly transportation. Future HSR transportation requires vehicles with efficient energy usage while matching travellers’ demand of high comfort and low travel times. The German Centre for Aerospace (DLR) develops high speed trains in its research framework “Next Generation Train” (NGT) aiming to deliver train concepts capable to meet the technical and environmental requirements of coming decades. When realising a new train concept, one key question is where such trains could be operated and which routes would provide the greatest potentials. This paper presents a gravity model which calculates passenger numbers on potential European HSR routes. For routes outside Europe, a simplified approach based on air passenger capacities has been used to estimate traffic volumes. Based on the results of these two rail passenger models, we calculate the number of required NGT vehicles and operating costs using specific parameters that determine the operation of HSR lines. The investigated routes can be categorised by means of expected profitability. Additionally, we evaluate the feasibility of HSR routes by considering geographic influence factors. Based on a geographic information system (GIS), a HSR route model calculates the most cost-effective path between two cities. Parameters as terrain slope, population density or water bodies influence the course of a HSR track and its constructions costs significantly. © Association for European Transport and contributors 2010 1 2 The Next Generation Train Project Since 2007, nine DLR research institutes have been working on the development of the NGT. The main objective of this project is to provide research results from aerospace to the railway industry in order to face upcoming transport tasks. The properties of the NGT are well defined by a systems requirement specification, gathering requirements of potential customers and the relevant European standards for such a train. Herein a high capacity high speed train is described. The mirrored proposal specification describes the DLR vision for such a product. High operational flexibility is a main feature of the NGT. To support a simple maintenance concept and easy ex-change of a defective coach, the single car principle is applied. Each coach can drive by itself. This feature has big advantages for marshalling and maintenance. A full-length double deck electrical multiple unit (EMU) is built of 8 middle coaches and 2 power heads giving a total length of 202 m (figure1). It provides seats for up to 790 passengers in two classes including an onboard restaurant, compartments for parents with children and handicapped persons. Via an optical coupling several train sets can be coupled. The double deck coaches are fully continuous on two levels. The passengers can enter and exit the train on both levels. Therefore the EMU has no stairs. The passenger baggage is handled separately by a baggage system in the power heads. To achieve short passenger exchange times the door concept and the interior of the coaches are verified by a passenger flow analysis. The operational flexibility is furthermore improved by the opportunity to split trains dynamically. That means trains can optically couple and decouple during runs. After introducing the flexible block as a train safety principal, it will be possible to increase the line through-put. The power supply is assumed trendsetting as track integrated. Thus, the maintenance intensive catenary including the chain net diminishes. The propulsion concept shows over the whole EMU length a distributed contactfree power input from the trackside. On the vehicle side there is no longer the noisy and heavily wear pantograph. The wear and noise of the running gear are reduced by using a mechatronic wheel set. This is realized as a radial controllable differentially powered single wheel single running gear which steers the wheel actively into a curve. Further technological innovations are related to the train’s lightweight design and its aerodynamic optimization. Figure 1: Design study of the Next Generation Train (NGT) © Association for European Transport and contributors 2010 2 The power heads of the NGT are delivering about 50% of 18 MW drive propulsion. The remaining drive propulsion is delivered by wheel hub motors of the single wheel single running gear. The acceleration of the NGT is therefore significantly above average. The double deck high speed EMU has a scheduled speed of 400 km/h and will be certified for 440 km/h. Compared to today’s high speed trains like the German ICE 3, the NGT has significant advantages in terms of low specific energy consumption, low noise, comfortable air conditioning, optimised passenger flow and also low wheel/rail wear. The NGT combines high comfort for passengers with low travel times. Both play a major part for the competition between rail and air traffic on short and middle distance journeys. Air – rail competition – How to substitute air traffic by high speed trains The criteria for the decision for or against a certain transport mode are mainly travel time, costs, comfort and the reliability of transportation means. Considering the competition of rail and air traffic, the accessibility of terminals, value of time and quality of service are additional parameters that determine the success of a certain transport mode [2]. Studies on air-rail competition show that about 90 % of the differences in market share could be explained by evaluating travel time, check-in time and schedules [2]. Significantly high correlation can be observed for travel time and market share. For rail trips of less than one hour, market shares usually are more than 70 %. The time which is relevant for the traveller’s decision consists of time of travelling from one city to another plus access time to the train or the airplane, respectively. Figure 2 shows travel times for rail and air transportion. We assumed that an average airport can be reached within 30 minutes and travellers have to be at the airport 45 minutes in advance for check-in, security checks and waiting for boarding. Trains in general are faster to access. In figure 2, the access time is 15 minutes for the drive to the main station and the boarding to the train. The figure depicts travel times for the NGT, a train with an average speed of 200 km/h and airplanes with an average speed of 500 and 700 km/h. For rail travel, speed is much more important than for airplanes. On the distances investigated, the planes need a considerable share of time for departure and landing. For trains, however, speed is a decisive parameter as the faster it is the farer it gets within a certain range of time. Under these circumstances and due to the driving characteristics of the NGT, distances up to about 800 km provide time savings compared to airplanes. Beyond this, air traffic is usually faster than rail. Thus, for the calculations in chapters 4 and 5 the length of all selected routes is less than 800 km as we consider longer distances to be less competitive on a specific route than air transport. 3 © Association for European Transport and contributors 2010 3 6 Travel Time [h] 5 4 3 2 1 0 100 200 300 400 500 600 700 800 900 1000 Travel Distance [km] NGT Figure 2: HSR - 200 Air Traffic - 700 Air Traffic - 500 Travel time of air traffic and HSR The target of this approach is to classify potential HSR routes according to their suitability for the operation of the new NGT concept. Thus, we identified potential city links in different geographical areas and estimated operation and infrastructure costs in order to evaluate the potential for the NGT on each specific route. The evaluation of potential lines for operation of a new future train concept consists of several steps. First, we identified potential high speed lines. City links in the area under investigation have been chosen by searching lines between cities with more than a defined number of inhabitants and within a defined range of kilometres. Concerning the number of inhabitants, we only included cities with more than 500.000 inhabitants for all areas except from China, where we defined a limit of one million inhabitants for reasons of simplification. In a second step, we estimated travel demand using a gravity model which calculates numbers of HSR passenger for European routes. For countries outside Europe, we derived potential HSR passengers from travellers using air transport. We assumed that a certain amount of travellers will switch to HSR and that new HSR lines produce additional traffic. The success of HSR also depends on political decisions on investments in HSR infrastructure. More than air traffic, HSR depends on an appropriate infrastructure when operating new routes. For the evaluation of possible routes in terms of the technical feasibility and infrastructure costs, we developed a model based on GIS. It calculates the cost effective path between two cities. The information on such routes provides an additional decision tool for the evaluation of HSR lines. © Association for European Transport and contributors 2010 4 4 Europe 4.1 Configuration of the Gravity Model The calculation of rail passenger numbers throughout Europe requires a macroscopic approach that analyses the relation between expected traffic and other parameters as, for instance, the population within an area. Thus, we used a linear regression analysis to develop a model for rail traffic flows between two places in terms of trips per year. Generally, travel volume of an area depends on the relation between transport supply and socio-economic attributes that influence travel demand [3]. Transport supply is described by availability of rail or HSR and its characteristics, e.g. speed. Travel demand is influenced by the intention of a trip. Typical motives for travelling are work, business purposes, education or shopping. These motives correlate with indicators that can be used to calculate the number of trips on a specific route. Population size of a city and number of working places are typical indicators. The simple linear regression analysis evaluates the quality of the correlations between certain indicators. For HSR, the main travel motives are business and leisure. Possible indicators to evaluate these activities are the gross domestic product (GDP) and intensity of tourism. A place with high GDP produces high travel demand, but also attracts travellers from other places. Intensity of tourism represents the attractiveness of a place to visitors from other places. As this group of travellers come for a visit, but then travel back home again, the traffic produced by this indicator counts for two directions. A third indicator is the size of population of a city. In a first step, we evaluated the correlation between these indicators by using data on rail and air traffic between 13 cities in Germany with more than about 500,000 inhabitants and a distance of more than 150 km. Using the linear regression analysis, we determined the correlation between each indicator and traffic volume on the city links. The dependencies of indicators and traffic data are statistically analysed by using the correlation coefficient (r) by Pearson which indicates the strength of a correlation between two parameters. We calculated the regression line and analysed its quality by calculating the coefficients of determination (R²). For both rail and air traffic, the correlation coefficient and the coefficients of determination are highest for travel volume and GDP. Population size is also highly correlated to traffic volume. For intensity of tourism, results show a high correlation for air traffic. But for rail traffic, this indicator is not suitable for estimating traffic volumes. A model for the generation of traffic represents the entire traffic of a certain area, but not the distribution of traffic within this area. Thus, in a second step we developed a gravity model that calculates traffic flows between two cities. Apart from socio-economic factors, the gravity model takes external factors into account, such as distance between cities in order to explain interactions between areas. The first gravity model used for the examination of travel demand and distribution has been developed by the Austrian Lill in 1891. The gravity models used in transportation research can basically be described as: © Association for European Transport and contributors 2010 5 Fij Pi Pj d ijb Fij represents the number of trips between the places i and j. d is the distance between these places and b is a weighting exponent for d. β is an empiric constant factor. P is the mass factor of i and j, which can be described with population size or GDP, for instance [4]. In this equation, the distance represents a resistance coefficient for travelling on a specific route. But distance is an insufficient measure for describing the time and effort for travelling from one place to another. The resistance coefficient should also include travel time and average velocity [5]. For the development of a gravity model that couples parameter of two cities, we chose the indicators evaluated by the regression analysis for the calculation the traffic volume: population size P, GDP W, and intensity of tourism TI. Additionally, we implemented the distance dij between cities and the travel time tij to for a certain route. The traffic volume between city i and city j results from: Fij 0 Pi Pj 1 Wi W j 2 TI i TI j 3 d ij4 tij5 This equation represents a multiple regression model with several independent variables. We calibrated this equation using again data on rail travellers between 13 cities in Germany with more than 500,000 inhabitants. For the determination of the optimal β coefficients, we tested variations of the equation above. GDP and population size have been proved to be good indicators for traffic volume, as they show high statistical relevance. Statistical tests show, however, that the intensity of tourism is related to a high probability of error. For the German data, the share of traffic volume due to the intensity of tourism is with a probability of 94 % a random result. Thus, the gravity model is reduced by the variable TI. The resistance coefficients dij and tij show a high multi-collinearity. These two indicators influence each other, but distance has proved to be highly significant and travel time gives information on travel speed. As a consequence, we combined distance and travel time to one resistance coefficient. The final equation for the calculation of travel demand is the following: Fij 0 Pi Pj 1 Wi W j 2 d ij v ij 100 3 This gravity model is applied to potential European HSR routes as described in the following chapter. 4.2 Analysis of HSR passenger potential in Europe For the analysis of potential passenger volumes in Europe, we assumed that the relationship between the socio-economic parameters, distance, travel time and traffic volume is basically the same in every country. For the calculation of the potentials, all cities within EU 27 as well as Norway and Switzerland with more than 500,000 inhabitants have been included. As a maximum railway © Association for European Transport and contributors 2010 6 distance, we considered 800 km. The average factor for deviation from linear distance for railways in Europe is 24 %. Thus, an 800 km railway route is equal to 645 km of linear distance. The 63 European cities included in the model lead to 401 connections for which the passenger volumes have been calculated. Figure 3 depicts the relative distribution of start and end points per country in relation to the absolute number of selected cities in each country. Countries in central Europe, especially Germany, Belgium and the Czech Republic, are obviously preferred for HSR routes. Regarding a possible European HSR network, these countries would serve as nodes. Among the 401 connections, there are 142 national and 259 international routes. The national connections generally are related to higher traffic volumes than international ones as the gravity model calculates with slightly higher resistance coefficients when a route passes a border. This results from linguistic, cultural and economic obstacles that are higher compared to national connections. The resistance for international trips decreases with increasing rail speed. If average travel speed increases by 20 %, passenger numbers on national connections will grow by 27 %. For international connections, the estimated number of passengers will increase by 34 %. Figure 3: Relative share of European countries regarding HSR connections The left side of table 1 shows the 25 European connections which are most frequented for an average speed of 200 km/h. This represents the maximum present average speed for European HSR lines. The most frequented route is London – Birmingham followed by London – Paris. As for the NGT the operation speed and thus the average velocity would increase, the right part of table 1 lists passenger volumes for an average 300 km/h speed. In that case, the two best connections appear in reversed order. Generally, distances of less than 300 km show a remarkable share in the results. Other connections have a maximal distance of 500 km. Assuming an average deviation to linear distance of 24 %, this is equal to 370 or 620 km, respectively. Under ideal conditions, these distances correspond for the NGT © Association for European Transport and contributors 2010 7 to a maximum of about 3 hours travel time which can be considered as a maximum travel time especially for business trips. Nevertheless, the model seems to underestimate passenger volumes on larger distances. The connection Barcelona – Madrid, for instance, does not appear in the European top 25 routes though it is one of the most promising connections in Europe. This underestimation results from on German data which are mainly based on rail distances less than the 744 km of Madrid – Barcelona. Table 1: 25 highest passenger potentials at 200 km/h and 300 km/h average speed Routes Birmingham<->London London<->Paris Paris<->Lille Paris<->Lyon Hamburg<->Berlin Cologne<->Frankfurt Stuttgart<->Frankfurt Stuttgart<->Munich Leeds<->London Dusseldorf<->Frankfurt Paris<->Bruxelles Munich<->Frankfurt Sheffield<->London Nantes<->Paris Frankfurt<->Hamburg Dusseldorf<->Hamburg Frankfurt<->Nuremberg Cologne<->Hamburg Dresden<->Berlin London<->Bruxelles Frankfurt<->Berlin Bordeaux<->Paris Munich<->Berlin Essen<->Frankfurt Stuttgart<->Nuremberg Distance [km] 165 344 204 394 256 153 153 190 275 183 265 304 229 345 393 338 188 357 165 320 425 502 505 190 157 Passengers Ø 200 km/h 8.766.461 8.096.654 7.430.446 5.287.699 4.986.513 4.523.267 4.310.921 3.938.020 3.795.074 3.761.662 3.385.630 3.084.028 2.611.477 2.574.947 2.447.696 2.280.088 2.033.722 2.013.050 1.957.335 1.946.581 1.890.995 1.886.497 1.840.888 1.771.908 1.771.342 Routes London<->Paris Birmingham<->London Paris<->Lille Paris<->Lyon Hamburg<->Berlin Cologne<->Frankfurt Stuttgart<->Frankfurt Stuttgart<->Munich Paris<->Bruxelles Leeds<->London Dusseldorf<->Frankfurt Munich<->Frankfurt Sheffield<->London Nantes<->Paris Frankfurt<->Hamburg Dusseldorf<->Hamburg London<->Bruxelles Frankfurt<->Nurnberg Cologne<->Hamburg Dresden<->Berlin Frankfurt<->Berlin Bordeaux<->Paris Munich<->Berlin Essen<->Frankfurt Stuttgart<->Nuremberg Distance [km] 344 165 204 394 256 153 153 190 265 275 183 304 229 345 393 338 320 188 357 165 425 502 505 190 157 Passengers Ø 300 km/h 15.534.033 14.922.996 12.648.720 9.001.160 8.488.456 7.699.881 7.338.406 6.703.624 6.495.584 6.460.289 6.403.413 5.249.888 4.445.472 4.383.288 4.166.671 3.881.355 3.734.660 3.461.970 3.426.781 3.331.938 3.219.008 3.211.351 3.133.712 3.016.289 3.015.325 The comparison of the results with recorded passenger volumes shows that the gravity model under- or overestimates the traffic volumes on some connections with less than one million passengers per year by more than 25 %. As the model has a high statistical quality, these differences cannot be explained by statistic errors of estimation, but by factors that are not included in the gravity model. Such factors are, for instance, the quality of existing infrastructure on a region, competition to road or air traffic and political or economic exceptional positions of some cities. In other cases where a city is not connected to a HSR network at present, the model considers passenger potentials for HSR that can be attracted in the future. 4.3 Operating Costs The success of a HSR line depends on several influencing factors. One determinant is the number of passengers that are expected to travel on a specific route. As shown above, traffic volume depends on distance and operation speed. These factors also determine the options for operation of a rail route and its overall operating costs. Operating costs show the relation between the required number of trains for a certain number of passengers and distance of a route. Thus, the routes © Association for European Transport and contributors 2010 8 resulting from the gravity model can be classified according to their economic performance. Due to the high number of routes, we exclusively considered the route characteristics mentioned above for the estimation of operating costs. We calculated the minimum travel time under ideal conditions regarding infrastructure for the NGT. From this, we obtained the minimum number of trains necessary to transport the expected number of passengers from one city to another. Using this information, we calculated the total kilometres travelled by each train per year, its energy consumption and the required personnel hours. Another important cost factor for train operators are infrastructure charges. These costs are represented by using a general infrastructure charge per kilometre which is similar to that on German high speed routes. The revenues are calculated based on general ticket prices per kilometre, as a linear increase of ticket prices would lead to an overestimation of revenues on long distances. In practice, prices per kilometre on long distances are lower than on short distances for rail travel as well as air traffic. The model addresses this by reducing the ticket fees gradually for growing distances. The profitability of potential European routes has been assessed by calculating the ratio of revenues from ticket sales and operation costs. The results have been divided into three groups. Route category 1 represents the first third of the results showing the highest benefits, category 3 contains the lowest third. Figure 4 depicts the distribution of the European routes in relation to rail passengers and distance. Revenues as well as costs depend both on traffic volume and distance. Generally, high passenger numbers and low distances are most beneficial. Most of the category 1 routes have a distance less than 500 km and a traffic volume of more than 500,000 passengers per year. For distances of more than 600 km, there is only one route with 1 million passengers that belongs to the top 30 % routes regarding revenue-cost ratio. Passenger numbers less than 100,000 per year generally lead to a less promising HSR route. 700 600 Distance [km] 500 Category 1 Category 2 400 Category 3 300 200 100 1.000 10.000 100.000 1.000.000 10.000.000 100.000.000 Rail passengers Figure 4: Categorised operating costs in relation to rail passengers and distance on European HSR routes © Association for European Transport and contributors 2010 9 5 Traffic volume and cost estimations in countries outside Europe In Europe, HSR has been an alternative to air traffic on many routes for several years. The HSR network is still growing in there, but potentials for HSR are considered high in other countries as well. In the following, we present an evaluation of promising routes in China, Brazil and the India. The method of our analysis is similar to our studies on European routes described in chapter 4. There is one main difference in our calculations: instead of using a gravity model we used a simplified approach for the calculation of potential rail passengers on each route. For first estimations on potential rail travel demand in other countries outside Europe, we analysed city links that fulfilled the requirements described in chapter 4.3. We included cities with more than 500,000 inhabitants, only for China cities smaller than 1 million inhabitants were excluded. As we have no information on possible factors for deviations from linear distance for countries outside Europe, we disregard this factor and include all routes up to 800 km. Based on flight seat capacities in 20091, we calculated the number of rail passengers assuming a percentage of modal shift that depends on travel time or the distance travelled, respectively. According to estimations by the International Union of Railways (UIC) [6], we assumed that the HSR share exceeds 50 % for journeys less than 800 km compared to air travel. A distance of less than 600 km is supposed to lead to a modal shift of 70 % and routes with less than 400 km length to a shift of 85 to 100 %. Further, we considered additionally induced travel demand (passengers who would not travel without existing HSR connection). For the calculation of operating costs, we used the same approach as described in chapter 4.3 for European routes. The specific cost factors differ from country to country. Furthermore, based on data from the US Bureau of Transportation Statistics [7], we examined connections for US cities using the same methodological approach. Figure 5 depicts the results exemplarily for Brazil. For 20 out of 24 possible connections direct flights were available in 2009. The right map shows passenger data that provides the basis for the calculation of the required number of trains and operation costs. The potential HSR lines in Brazil are divided into two regions: one network in the north-eastern part and another in the south. Due to city sizes and a relatively short linear distance of about 350 km, the connection Sao Paulo – Rio de Janeiro stands out. Estimated passengers between these cities account to 6.7 million per year. Other connections to these cities are relatively high frequented as well. In the northeastern region, the connection between Recife and Salvador constitutes the highest numbers of passengers. The map to the left in figure 5 outlines the calculated operating costs categorised into three groups. Category 1 represents those tracks showing the highest revenue-cost ratio. The southern part of Brazil shows the most routes of category 1. Distances between cities as well as passenger numbers are here more promising than in the northeastern part of the country. From figure 5 it becomes apparent for further planning of a Brazilian HSR network that passenger numbers will add up on 1 The data on flights in 2009 of the Official Airline Guide Database have been kindly provided by the DLR Air Transport and Airport Research Institute. © Association for European Transport and contributors 2010 10 certain routes. For example, it is reasonable to build the connection between Curitiba and Rio de Janeiro via Sao Paulo. Capacity utilisation would improve for the sections of the route while loss of travel time remains small. Moreover, construction costs for infrastructure can minimised. Figure 5: Potential HSR lines in Brazil Passenger numbers play a distinctive role for the classification of investigated connections. Another salient aspect is the distance between cities. As described for Europe, distance not only influences passenger numbers through the required travel time, but also determines operational specifications for each route. Table 2 provides an overview of the number of connections analysed, the number of passengers and the minimum number of trains that are required to operate the HSR routes in each country. In total, at least 230 NGTs would be required to operate the investigated connections. Figure 6 displays the relation between annual passenger numbers and distances between the investigated cities in Brazil, China, India and the USA. With respect to passenger numbers, connections in the USA on average depict the highest numbers. Distances between the investigated cities in the US are often in a median range which is highly beneficial for HSR in competitions to air traffic. The analysed connections of cities in India show generally shorter distances, but also less passenger volume. This result in a smaller number of vehicles that are required to operate these routes compared to the USA. A considerable share of cities in India is less than 500 km apart, a criterion which seems to be highly beneficial for the development of a HSR network. Similar trends can be observed for Brazil, where distances of less than 550 km are most beneficial. The model for China on the other hand shows in general larger distances as only cities with more than 1 million inhabitants are considered. Nevertheless, the number of connections is significantly higher than in the other countries (table 1). This leads to a higher number of required trains. With respect to the © Association for European Transport and contributors 2010 11 number of routes and the size of cities, passenger numbers in China seem to be relatively low which can be seen in figure 6. One reason for this observation is that air traffic in China is not as well established as in other countries. The potentials for HSR lines stem to a greater extent from conventional railway transportation and not from air traffic. Therefore, at the current state of the model, passenger numbers in China tend to be underestimated in comparison to other countries. Table 2: Country Overview of results for countries outside Europe Number of Routes Brazil China India USA Minimum number of trains Number of rail passengers per year Route Category 1 Route Category 2 Route Category 3 12855479 3.302.252 671.086 13.475.557 5.271.863 1.392.356 7.734.125 2.190.160 466.276 12.869.662 7.354.372 6.523.122 20 90 35 25 Brazil 38 102 38 52 China 800 800 700 700 600 600 Category 1 Distance [km] Distance [km] Category 1 Category 2 Category 2 500 Category 3 500 Category 3 400 400 300 300 200 200 100 100 0 1.000.000 2.000.000 3.000.000 4.000.000 5.000.000 6.000.000 7.000.000 8.000.000 0 200.000 Rail passengers 400.000 600.000 1.200.000 800 800 700 700 600 Distance [km] 600 Distance [km] 1.000.000 USA India 500 400 Category 1 Category 1 Category 2 500 Category 2 Category 3 Category 3 400 300 300 200 202 200 100 100 0 200.000 400.000 600.000 800.000 1.000.000 1.200.000 1.400.000 1.600.000 Category 1 Figure 6: 0 500.000 1.000.000 1.500.000 2.000.000 2.500.000 Rail passengers Rail passengers 800 800.000 Rail passengers Category 2 Category 3 Categorised operating costs in relation to rail passengers and distance on routes in Brazil, India, China and USA 700 Distance 600 500 © Association for European Transport and contributors 2010 400 12 6 Using GIS for Examining Railway Lines 6.1 Methodology Apart from analysing potential passenger volumes as described in chapters 4 and 5, rail infrastructure has to be evaluated for the assessment of future HSR lines. As the construction of rail infrastructure requires considerable investments, the assessment of technical specifications of such routes represents another important decision criterion. We examined the potential HSR routes using a geographic information system (GIS). The methodological approach for the determination of the most cost efficient path is exemplarily described for the European routes in the following. Construction costs for high speed tracks vary considerably within one country as well as between countries. On the one hand these differences result from different construction types. On the other hand railway tracks face different geographic and geological conditions. In average the costs for the construction of one kilometre HSR track are 18 million € [8]. For modeling the influence of geographic conditions on the course of railway tracks, we defined cost or resistance factors for each parameter. Then, we calculated resistance maps that assign relative resistance values to each raster pixel of the map of Europe. This resistance value represents the factor the basic costs for track construction have to be multiplied with. Basic costs are those expected for the route construction under ideal conditions. Each parameter leads to a resistance map. The maps are joined to a total resistance map at the end of the process. The parameters that increase construction costs or prohibit track construction at all are: slope of the terrain, population density and water bodies. Generally, higher slopes lead to higher resistance values and thus to higher construction costs, as railway tracks are restricted to a maximum gradient of 3.5 % on a distance of 6 km. For higher slopes, the terrain has to be modified by embankments, for instance, or either tunnels or bridges have to be built. This increase of costs is approximated by higher resistance values for certain raster points on the map. Tunnels and bridges are assumed to be about 7 times more expensive than the basic cost value. Concerning the population map, a higher population density leads to higher construction costs. In regions with a high density there are few open areas for additional infrastructure available. We assume that for less than 100 persons per raster pixel there is no increase of prices. For higher densities, we calculated a linear growth. Rivers, lakes and seas are further obstacles. Compared to the basic costs, the crossing of rivers is related to a resistance factor of 5.4. Other water bodies cannot be crossed except from the British channel. There the channel tunnel has been implemented into the model and provides routes to Great Britain assuming a resistance value of 1.5 due to the high user charges. 6.2 Results for European TOP 25 routes Figure 7 depicts the course of the railway routes for the TOP 25 connections in Europe as listed on the left side of table 1. As the channel tunnel is implemented in the model, all routes can be technically realised. Track construction in densely populated areas increases costs. Thus, the most cost efficient routes take course in certain distance to city areas. © Association for European Transport and contributors 2010 13 The links of single lines are not considered by the model. The routes north from Paris, for instance, are almost parallel. In reality, the connection from Paris to London or Brussels leads via Lille. In fact, there is a bypass for Lille, but a completely separate track is not reasonable in terms of operation and construction costs. Moreover, passenger volumes of single point-to-point connections add up. Thus, utilised capacity of routes and trains can be optimised as long as travel time losses due to additional stops and detours are low. Figure 7: 7 Cost effective paths of highly frequented routes in Europe Conclusions and Outlook The presented results give an overview of promising HSR routes in Europe and identify potentials in Brazil, China, India, and the USA. In order to improve the quality of the results both for passenger volumes and operating costs, there are several aspects that can be addressed next. We developed a gravity model that predicts annual passenger numbers on rail routes by analysing the relationship between travel time, the GDP of cities and their number of inhabitants. The model which has been calibrated on German rail data provides a high statistical quality. A comparison with estimations for passenger volumes on the transeuropean network (TEN) shows that the results of the gravity model coincides with those of the TEN [9]. The model allows evaluating the effects of changes in GDP, population or average speed on the passenger volume of rail routes. As for the NGT vehicle, an increase of average speed is in focus, we calculated passenger volumes for various speeds. The model predicts a disproportionately high growth of passenger volumes when average speed is increased. This indicates that decreasing travel time by accelerating average © Association for European Transport and contributors 2010 14 speed leads to significantly better utilised capacities on HSR routes. For higher speed than investigated, the linear correlation assumed in the gravity model is not applicable as it does not evaluate the saturation of traffic volumes. The model will be further modified. Due to the calibration on German data, the model underestimates passenger volumes on larger distances. Thus, the connection Barcelona – Madrid does not appear in the European TOP 25 routes while it is one of the most frequented connections in Europe. Therefore, in a next step, the gravity model will be calibrated using data on various existing European railway lines. Furthermore, some city connections have individual characteristics and require further investigation. Routes to Brussels, for instance, are supposed to be highly frequented due to the city’s political importance in the EU. For analysing regions outside Europe, we estimated passenger volumes based on seat capacities for air traffic. As for the investigated connections HSR is supposed to substitute air traffic, this assumption indicates possible traffic volumes for high speed transport. The modal shift from air to rail is estimated according to experiences from existing HSR lines around the world. Additionally, the applicability of the gravity model in regions outside Europe should be analysed. By improving the data quality on passenger volumes, operation concepts for the NGT can be elaborated for possible HSR networks in the investigated countries. This will lead to better estimations of operation costs. For the assessment of potential HSR routes, operating costs are an important factor. We evaluated those costs by estimating required numbers of vehicles for each route and travelled distances additionally to the results of the passenger volume models. As passenger volumes and thus operating costs and profitability of routes strongly depend on travel time, future HSR lines should provide higher average speed as today. One possibility of increasing the average speed is to increase operating speed of trains. When combined with relatively low energy consumption as in case of the NGT, the resulting passenger volumes, travel time and operating costs are promising in view of competition to air traffic. Furthermore, the proposed analysis of possible HSR routes and networks will indicate potential energy and emissions savings through substitution of air traffic by HSR. In order to enable the reduction of travel time on city routes, an appropriate HSR infrastructure has to be provided. For a more detailed analysis of construction costs, it is useful for to investigate additional information like soils, geology or protected areas. Furthermore, resistance coefficients can be adjusted to route specific parameters that are different for each country for example. We will further improve the model by analysing required tunnels and bridges on the predicted routes using data on the elevation profiles. For the planning of a HSR route in a region, it is necessary to consider possible networks rather than evaluating point-to-point connections. In an optimal network, traffic volumes of single connections add up when intermediate stops are inserted or city links are expanded to include a third city. Yet the building of networks usually contradicts an increase of the average speed as additional stops and detours lead to increased travel times. Thus, both for infrastructure planning and operating costs, the examination of © Association for European Transport and contributors 2010 15 possible HSR networks will lead to more detailed results for potential HSR lines in the countries investigated in this paper. These results will lead to further quantification of the benefits from the new NGT vehicle concept. By improving the attractiveness of HSR, a significant amount of flights and thus greenhouse gas emissions can be substituted. 8 References 1. UIC (2010): High Speed Lines in the World: Paris. 2. Steer, Davies, and Gleeve (2006): Air and Rail Competition and Complementary, European Commission DG TREN: London. 3. Baumann, J. (1984): Transport Models - Basics and Methods (in German), in GEOMOD - Models and Methods in Geography and Regional Research: Bremen. 4. López-Pita, A. (2005): Impact of High-Speed Lines in Relation to Very High Frequency Air Services. Journal of Public Transportation. 8(2). 5. Orlova, D. and T. Jost (2006): Explanation of Immigration in Germany A Gravity Model (in German), Working paper Nr. 36, Institute for Statistics and. Econometrics, Johannes Gutenberg University Mainz. 6. UIC (2008): High speed rail: Fast track to sustainable mobility Paris. 7. US Bureau of Transortation Statistics (2009): 2008 U.S. Domestic Routes: TranStats T-100 Domestic Market (US Carriers), downloaded 5/15/09: Washington, D.C. 8. Campos, J., G. De Rus, and I. Barrón (2007): A review of HSR experiences around the world, in Economic Analysis of High Speed Rail in Europe, Universidad de Las Palmas de Gran Canaria, UIC: Las Palmas, Paris. 9. NEA Transport Research and Training BV (2004): TEN-STAC: Scenarios, Traffic Forecasts and Analysis of Corridors on the TransEuropean network. A project funded by the European Community. © Association for European Transport and contributors 2010 16