Abstract:In order to realize the scientific design of motor bus transferring scheme in the commuter corridor, the resilience recovery process of commuting corridor is regarded as a bi-level programming in which the resilience is improved through continuous exploration and iteration of ground bus transferring scheme in complex environment. The deep reinforcement learning algorithm is introduced to form the upper level planning, and the value function neural network is used to fit the response function of emergencies and travelers' cluster behavior to the adjustment of ground bus transferring scheme. The decision-making objective is achieved by training the transferring schemes. In the lower level planning, the cellular neural network model is introduced to simulate the cluster travel choice behavior under the background of data intelligence. The case study shows that this method can effectively improve the resilience of the commuter corridor, and the cluster behavior will have a negative impact on the resilience recovery.
李雪岩, 张同宇, 祝歆. 基于深度强化学习的通勤走廊韧性恢复双层规划[J]. 复杂系统与复杂性科学, 2024, 21(1): 92-99.
LI Xueyan, ZHANG Tongyu, ZHU Xin. Bi-level Programming for Resilience Restoration of Commuting Corridor Based on Deep Reinforcement Learning[J]. Complex Systems and Complexity Science, 2024, 21(1): 92-99.
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