Review of Laboratory Experiments on Travel Choice Behavior
SUN Xiaoyan1,2, HAN Xiao1,3, YAN Xiaoyong3, WANG Wenxu1, JIANG Rui3, JIA Bin3
1.School of Systems Science, Beijing Normal University, Beijing 100875, China; 2.College of Physics and Electronic Engineering, Guangxi Teachers Education University, Nanjing 530023, China; 3.Institute of Transportation Systems Science and Engineering, Beijing Jiaotong University, Beijing 100044, China
Abstract:A fundamental problem in transportation science is to understand the choices of travelers in complex transportation systems. In order to solve these problems, more and more laboratory experiments have been conducted. This paper reviews the main progress of laboratory experiments on travel choice behavior from three aspects, which are traffic network equilibrium test, classic traffic paradoxes test, and travel demand management schemes evaluation. Moreover, this paper analyzes the existing problems and suggests further developments.
孙晓燕, 韩晓, 闫小勇, 王文旭, 姜锐, 贾斌. 交通出行选择行为实验研究进展[J]. 复杂系统与复杂性科学, 2017, 14(3): 1-7.
SUN Xiaoyan, HAN Xiao, YAN Xiaoyong, WANG Wenxu, JIANG Rui, JIA Bin. Review of Laboratory Experiments on Travel Choice Behavior. Complex Systems and Complexity Science, 2017, 14(3): 1-7.
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