考虑了影响ATIS(advanced traffic information system)条件下的出行者道路和停车选择行为以及影响ATIS市场占有率的主要因素,构造了基于概率的SUE模型来描述ATIS条件下的道路和停车选择问题.在此基础上,构造了双层规划模型来解决道路...考虑了影响ATIS(advanced traffic information system)条件下的出行者道路和停车选择行为以及影响ATIS市场占有率的主要因素,构造了基于概率的SUE模型来描述ATIS条件下的道路和停车选择问题.在此基础上,构造了双层规划模型来解决道路及停车信息条件下交通网络的系统优化问题,其中上层模型是一个系统优化问题,下层模型是描述出行者道路和停车选择的SUE模型.最后。展开更多
Advanced traveler information systems (ATIS) can not only improve drivers' accessibility to the more accurate route travel time information, but also can improve drivers' adaptability to the stochastic network cap...Advanced traveler information systems (ATIS) can not only improve drivers' accessibility to the more accurate route travel time information, but also can improve drivers' adaptability to the stochastic network capacity degradations. In this paper, a mixed stochastic user equilibrium model was proposed to describe the interactive route choice behaviors between ATIS equipped and unequipped drivers on a degradable transport network. In the proposed model the information accessibility of equipped drivers was reflected by lower degree of uncertainty in their stochastic equilibrium flow distributions, and their behavioral adaptability was captured by multiple equilibrium behaviors over the stochastic network state set. The mixed equilibrium model was formulated as a fixed point problem defined in the mixed route flows, and its solution was achieved by executing an iterative algorithm. Numerical experiments were provided to verify the properties of the mixed network equilibrium model and the efficiency of the iterative algorithm.展开更多
文摘考虑了影响ATIS(advanced traffic information system)条件下的出行者道路和停车选择行为以及影响ATIS市场占有率的主要因素,构造了基于概率的SUE模型来描述ATIS条件下的道路和停车选择问题.在此基础上,构造了双层规划模型来解决道路及停车信息条件下交通网络的系统优化问题,其中上层模型是一个系统优化问题,下层模型是描述出行者道路和停车选择的SUE模型.最后。
基金Projects(51378119,51578150)supported by the National Natural Science Foundation of China
文摘Advanced traveler information systems (ATIS) can not only improve drivers' accessibility to the more accurate route travel time information, but also can improve drivers' adaptability to the stochastic network capacity degradations. In this paper, a mixed stochastic user equilibrium model was proposed to describe the interactive route choice behaviors between ATIS equipped and unequipped drivers on a degradable transport network. In the proposed model the information accessibility of equipped drivers was reflected by lower degree of uncertainty in their stochastic equilibrium flow distributions, and their behavioral adaptability was captured by multiple equilibrium behaviors over the stochastic network state set. The mixed equilibrium model was formulated as a fixed point problem defined in the mixed route flows, and its solution was achieved by executing an iterative algorithm. Numerical experiments were provided to verify the properties of the mixed network equilibrium model and the efficiency of the iterative algorithm.