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Agent Simulation of Time Allocation on Daily Activity-Travel Patterns

机译:日常活动-出行方式上时间分配的Agent模拟

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Time allocation is a crucial part in daily activity-travel patterns of individuals. An agent-based model is presented in this paper to simulate time allocation of typical activity-travel patterns based on travel diary survey data of Jiangning District, Nanjing City. Q-learning method which is one of the most useful ways to solve reinforcement learning problems is adopted in this paper. Several representative activity-travel patterns are first extracted from the data. Reward functions are then established according to the real-word data which increases our method more practicable. Transportation environment is also defined as a special agent and its influence on individual decision is measured by applying the U.S. Bureau of Public Roads (BPR) model. The simulation results indicate that in order to obtain total maximum reward, different activity-travel patterns have specific features on time allocation. Besides, simulation results are compared with the survey data to verify the accuracy of our model.
机译:时间分配是个人日常活动旅行模式中的关键部分。本文基于南京市江宁区的旅行日记调查数据,提出了一种基于主体的模型来模拟典型活动-出行方式的时间分配。本文采用Q学习方法,这是解决强化学习问题最有效的方法之一。首先从数据中提取几个代表性的活动-旅行模式。然后根据实词数据建立奖励功能,这将使我们的方法更加实用。运输环境也被定义为特殊代理人,其对个人决策的影响通过应用美国公共道路局(BPR)模型进行衡量。仿真结果表明,为了获得最大的总回报,不同的活动模式在时间分配上具有特定的特征。此外,将仿真结果与调查数据进行比较,以验证我们模型的准确性。

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