Multi-agents modelling of EV purchase willingness based on questionnaires
Traditional experimental economics methods often consume enormous resources of qualified human participants, and the inconsistence of a participant's decisions among repeated trials prevents investigation from sensitivity analyses. The problem can be solved if computer agents are capable...
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doaj-d7550ee2a6bc40298d0cd36f6e3aa3002021-04-23T16:09:35ZengIEEEJournal of Modern Power Systems and Clean Energy2196-54202015-01-013214915910.1007/s40565-015-0112-49026395Multi-agents modelling of EV purchase willingness based on questionnairesYusheng Xue0Juai Wu1Dongliang Xie2Kang Li3Yu Zhang4Fushuan Wen5Bin Cai6Qiuwei Wu7Guangya Yang8State Grid Electric Power Research Institute (SGEPRI),Nanjing,China,210003Nanjing University of Science and Technology (NJUST),Nanjing,China,210094State Grid Electric Power Research Institute (SGEPRI),Nanjing,China,210003Queen's University,Belfast,Northern Ireland,UKState Grid Shanghai Municipal Electric Power Company,Shanghai,China,200122Zhejiang University,Hangzhou,China,310027Nanjing University of Science and Technology (NJUST),Nanjing,China,210094Technical University of Denmark,Lyngby,Denmark,2800Technical University of Denmark,Lyngby,Denmark,2800Traditional experimental economics methods often consume enormous resources of qualified human participants, and the inconsistence of a participant's decisions among repeated trials prevents investigation from sensitivity analyses. The problem can be solved if computer agents are capable of generating similar behaviors as the given participants in experiments. An experimental economics based analysis method is presented to extract deep information from questionnaire data and emulate any number of participants. Taking the customers' willingness to purchase electric vehicles (EVs) as an example, multi-layer correlation information is extracted from a limited number of questionnaires. Multi-agents mimicking the inquired potential customers are modelled through matching the probabilistic distributions of their willingness embedded in the questionnaires. The authenticity of both the model and the algorithm is validated by comparing the agent-based Monte Carlo simulation results with the questionnaire-based deduction results. With the aid of agent models, the effects of minority agents with specific preferences on the results are also discussed.https://ieeexplore.ieee.org/document/9026395/Behavioral analysisExperimental economicsHuman experimentersKnowledge extractionMulti- agentsEV purchase |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Yusheng Xue Juai Wu Dongliang Xie Kang Li Yu Zhang Fushuan Wen Bin Cai Qiuwei Wu Guangya Yang |
spellingShingle |
Yusheng Xue Juai Wu Dongliang Xie Kang Li Yu Zhang Fushuan Wen Bin Cai Qiuwei Wu Guangya Yang Multi-agents modelling of EV purchase willingness based on questionnaires Journal of Modern Power Systems and Clean Energy Behavioral analysis Experimental economics Human experimenters Knowledge extraction Multi- agents EV purchase |
author_facet |
Yusheng Xue Juai Wu Dongliang Xie Kang Li Yu Zhang Fushuan Wen Bin Cai Qiuwei Wu Guangya Yang |
author_sort |
Yusheng Xue |
title |
Multi-agents modelling of EV purchase willingness based on questionnaires |
title_short |
Multi-agents modelling of EV purchase willingness based on questionnaires |
title_full |
Multi-agents modelling of EV purchase willingness based on questionnaires |
title_fullStr |
Multi-agents modelling of EV purchase willingness based on questionnaires |
title_full_unstemmed |
Multi-agents modelling of EV purchase willingness based on questionnaires |
title_sort |
multi-agents modelling of ev purchase willingness based on questionnaires |
publisher |
IEEE |
series |
Journal of Modern Power Systems and Clean Energy |
issn |
2196-5420 |
publishDate |
2015-01-01 |
description |
Traditional experimental economics methods often consume enormous resources of qualified human participants, and the inconsistence of a participant's decisions among repeated trials prevents investigation from sensitivity analyses. The problem can be solved if computer agents are capable of generating similar behaviors as the given participants in experiments. An experimental economics based analysis method is presented to extract deep information from questionnaire data and emulate any number of participants. Taking the customers' willingness to purchase electric vehicles (EVs) as an example, multi-layer correlation information is extracted from a limited number of questionnaires. Multi-agents mimicking the inquired potential customers are modelled through matching the probabilistic distributions of their willingness embedded in the questionnaires. The authenticity of both the model and the algorithm is validated by comparing the agent-based Monte Carlo simulation results with the questionnaire-based deduction results. With the aid of agent models, the effects of minority agents with specific preferences on the results are also discussed. |
topic |
Behavioral analysis Experimental economics Human experimenters Knowledge extraction Multi- agents EV purchase |
url |
https://ieeexplore.ieee.org/document/9026395/ |
work_keys_str_mv |
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