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| Mouftah, Hussein T. |
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| Dugay, Fabrice |
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| Rettenmeier, Max |
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| Tomasch, Ernst | Graz |
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| Cornaggia, Greta |
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| Palacios-Navarro, Guillermo |
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| Uspenskyi, Borys V. |
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| Khan, Baseem |
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| Fediai, Natalia |
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| Derakhshan, Shadi |
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| Somers, Bart | Eindhoven |
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| Anvari, B. |
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| Kraushaar, Sabine | Vienna |
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| Kehlbacher, Ariane |
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| Das, Raj |
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| Werbińska-Wojciechowska, Sylwia |
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| Brillinger, Markus |
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| Eskandari, Aref |
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| Gulliver, J. |
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| Loft, Shayne |
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| Kud, Bartosz |
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| Matijošius, Jonas | Vilnius |
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| Piontek, Dennis |
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| Kene, Raymond O. |
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| Barbosa, Juliana |
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Jensen, Anders Fjendbo
Technical University of Denmark
in Cooperation with on an Cooperation-Score of 37%
Topics
Publications (48/48 displayed)
- 2025Demand-side challenges and research needs on the road to 100% zero-emission vehicle salescitations
- 2025The Overlooked Role of Roadworks in Micromobility’s Accessibility
- 2025Context-aware Bayesian mixed multinomial logit modelcitations
- 2024Transportforsker
- 2024Comparative modeling of risk factors for near-crashes from crowdsourced bicycle airbag helmet data and crashes from conventional police datacitations
- 2024Riding smooth: A cost-benefit assessment of surface quality on Copenhagen’s bicycle networkcitations
- 2023Analysis of cycling accessibility using detour ratios – A large-scale study based on crowdsourced GPS datacitations
- 2023A joint bicycle route choice model for various cycling frequencies and trip distances based on a large crowdsourced GPS datasetcitations
- 2023How should we develop the charging network? User and industry expectations
- 2023Can crowdsourced large-scale near-crash data replace crash data? A comparison of models using both sources
- 2023Empirical analysis of cycling distances in three of Europe’s most bicycle-friendly regions within an accessibility frameworkcitations
- 2022Effects of autonomous first- and last mile transport in the transport chaincitations
- 2022Editorial: Longer Distance Cycling: Roles, Requirements and Impactscitations
- 2022Facilitating bicycle commuting beyond short distances: insights from existing literaturecitations
- 2022User preferences for EV charging, pricing schemes, and charging infrastructurecitations
- 2021Cost-benefit of bicycle infrastructure with e-bikes and cycle superhighwayscitations
- 2021Demand for plug-in electric vehicles across segments in the future vehicle marketcitations
- 202114 forskere: Videnscenter for cyklisme skal ikke høre under Vejdirektoratet
- 2021Battery electric vehicle adoption in Denmark and Sweden: Recent changes, related factors and policy implicationscitations
- 2020Understanding car sharing preferences and mode substitution patterns: A stated preference experimentcitations
- 2020A route choice model for capturing driver preferences when driving electric and conventional vehiclescitations
- 2020Effekt- og brugerundersøgelse af E-bybiler i Region Hovedstaden
- 2020Analyse af indfasning af elbiler: SP metode og model
- 2019Active transport modes
- 2019Willingness to pay for electric vehicles and vehicle-to-grid applications: A Nordic choice experimentcitations
- 2019A disaggregate freight transport chain choice model for Europecitations
- 2019Using crowd source data in bicycle route choice modeling
- 2018Modellering af cykeltrafik
- 2018A dynamic approach to model the impact of imitation and experience
- 2018Factors of electric vehicle adoption: A comparison of conventional and electric car users based on an extended theory of planned behaviorcitations
- 2018A Joint Route Choice Model for Capturing Preferences of Electric and Conventional Car Drivers
- 2017The use of electric vehicles: A case study on adding an electric car to a householdcitations
- 2017Predicting the Potential Market for Electric Vehiclescitations
- 2017Harnessing big data for estimating the energy consumption and driving range of electric vehiclescitations
- 2017Harnessing big data for estimating the energy consumption and driving range of electric vehiclescitations
- 2017Actual preferences for EV households in Denmark and Sweden
- 2017A Joint Route Choice Model for Electric and Conventional Car Users
- 2016Harnessing Big-Data for Estimating the Energy Consumption and Driving Range of Electric Vehicles
- 2016Harnessing Big-Data for Estimating the Energy Consumption and Driving Range of Electric Vehicles
- 2015Bounded Rational Choice Behaviour: Applications in Transportcitations
- 2015På cykel til DTU
- 2015The effect of attitudes on reference-dependent preferences: Estimation and validation for the case of alternative-fuel vehiclescitations
- 2014Assesing the Impact of Direct Experience on Individual Preferences and Attitudes for Electric Vehicles
- 2014Assessing the Impact of Direct Experience on Individual Preferences and Attitudes for Electric Vehicles
- 2014A long panel survey to elicit variation in preferences and attitudes in the choice of electric vehiclescitations
- 2014Corrigendum to “On the stability of preferences and attitudes before and after experiencing an electric vehicle” [Transport. Res. Part D 25C (2013) 24–32]citations
- 2013On the stability of preferences and attitudes before and after experiencing an electric vehiclecitations
- 2011Vil bilisterne købe elbiler?
Places of action
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conferencepaper
A Joint Route Choice Model for Electric and Conventional Car Users
Abstract
Introduction<br/><br/>Worldwide, governments have committed to reducing air pollution and carbon emissions. With a higher share of renewable sources in the electricity production, battery electric cars (EVs) could play a significant role in maintaining these commitments. Growing literature shows an increasing interest in EVs and their market, but current EV travel demand studies are usually based on data collected from users of conventional gasoline or diesel engine cars (CVs) (see e.g. (Golob and Gould 1998; Pearre et al. 2011; Greaves et al. 2014). EVs are however different from CVs in a number of ways, in particular when it comes to the driving range and the refuelling/recharging which can lead to behavioural changes (Jensen and Mabit 2015). EV users might avoid longer and less-planned trips and, when deciding on a route, they might select roads where the general speed is lower, the trip length is shorter, or the charging facilities are better. On the other hand, over a longer period of time, many users do not need charging other than overnight charging at home in order to keep up with their current behaviour (Christensen et al. 2010) . Thus, the impact on traffic of a large scale EV adoption is not obvious, as it cannot be assumed that CVs currently on the road are simply replaced by EVs and individual behaviour otherwise stays constant.<br/><br/>Understanding the behaviour of EV users is important in a number of ways. Beside potential environmental effects, there is a need to understand other related effects, such as effects on the electricity network and the transport network. The objective of this study is to use revealed preferences (RP) data to investigate differences in route choice behaviour between CV and EV users. To our knowledge, this is the first time that a state-of-the-art route choice model has been estimated on RP EV data. In addition, the level of detail in the data allows for accounting for congestion, reliability, topology, weather and socioeconomic background.<br/><br/>Method<br/><br/>This study exploits a unique and vast dataset consisting of GPS records from a large demonstration project about EVs conducted in Denmark during the period 2011-2013. Households participating in the trial had an EV available for a period of three months during which all trips were GPS logged. Additionally, some of the households GPS logged trips by their CV in the month before and the month after the EV was received. The GPS traces were matched to the very detailed NAVTEQ street network (NAVTEQ 2010). The high level of detail of the network is crucial, as EV users might use smaller roads with lower speeds in order to save energy due to current technological restrictions on driving distances. Following the procedure in Prato et al. (2014), route choice behaviour is modelled with a two-stage approach consisting of choice set generation and model estimation. The first stage used a doubly stochastic generation process to generate a choice set consisting of a maximum of 100 unique alternatives for each observed route. Subsequently, the observations were filtered to exclude observations for which the choice set contained only one alternative route or did not contain any alternative reasonably similar to the observed route. In the second stage, a mixed path size correction logit model was estimated for modelling route choice behaviour, (Bovy et al. 2008). Comparison of EV and CV preferences is made possible by estimating jointly across data from each technology using a logit scaling approach with at least one generic parameter across data (Bradley and Daly 1997).<br/><br/>Data<br/><br/>After the map matching and filtering processes, GPS records were available for about 90,000 EV trips from 379 households. About 6,500 CV trips were logged for about 100 households in the month before and after the EV was used. The sample of households was based on voluntary participation under the condition that the household already owned at least one car and had a dedicated parking space where the EV could be home charged. In the trial period, the household had access to both their CV and EV, but they were encouraged to use the EV as the primary option. The participating households resided in 27 of the 98 municipalities in Denmark and were distributed across the entire country (see Figure 1). For trial participation purposes, one household member filled an online application form with information about the household and its composition. Each trip has been merged with weather information from local weather stations, inducing that information about precipitation, wind speed, temperature and visibility at the time of departure is available. The NAVTEQ network consists of 636,243 links covering the entire country and all road classes from large highways to minor local roads.
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