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Agent-Based Modeling and Simulation for the Bus-Corridor Problem in a Many-to-One Mass Transit System

机译:基于一对多公交系统中公交走廊问题的基于主体的建模和仿真

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With the growing problem of urban traffic congestion, departure time choice is becoming a more important factor to commuters. By using multiagent modeling and the Bush-Mosteller reinforcement learning model, we simulated the day-to-day evolution of commuters’ departure time choice on a many-to-one mass transit system during the morning peak period. To start with, we verified the model by comparison with traditional analytical methods. Then the formation process of departure time equilibrium is investigated additionally. Seeing the validity of the model, some initial assumptions were relaxed and two groups of experiments were carried out considering commuters’ heterogeneity and memory limitations. The results showed that heterogeneous commuters’ departure time distribution is broader and has a lower peak at equilibrium and different people behave in different pattern. When each commuter has a limited memory, some fluctuations exist in the evolutionary dynamics of the system, and hence an ideal equilibrium can hardly be reached. This research is helpful in acquiring a better understanding of commuter’s departure time choice and commuting equilibrium of the peak period; the approach also provides an effective way to explore the formation and evolution of complicated traffic phenomena.
机译:随着城市交通拥堵问题的日益严重,出发时间的选择正成为通勤者越来越重要的因素。通过使用多主体建模和Bush-Mosteller强化学习模型,我们在早上高峰期的多对一公共交通系统上模拟了通勤者出发时间选择的每日变化。首先,我们通过与传统分析方法进行比较来验证模型。然后对出发时间均衡的形成过程进行了研究。看到模型的有效性,放宽了一些初始假设,并考虑了通勤者的异质性和记忆力限制进行了两组实验。结果表明,异类通勤者的出发时间分布较广,在平衡时的峰值较低,并且不同的人表现出不同的行为方式。当每个通勤者具有有限的记忆时,系统的演化动力学中会存在一些波动,因此很难达到理想的平衡。这项研究有助于更好地了解通勤者的出发时间选择和高峰时段的通勤平衡。该方法还提供了一种探索复杂交通现象形成和演化的有效方法。

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