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Modeling city logistics using adaptive dynamic programming based multi-agent simulation

机译:基于自适应多项目规划的动态规划为城市物流建模

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摘要

The effects of city logistics solutions are uncertain due to fluctuating demand, parking issues and multiple agents within the system. This research modelled the behavior of freight carriers and an Urban Consolidation Center (UCC) operator using Multi-Agent Simulation-Adaptive Dynamic Programming based Reinforcement Learning (MAS-ADP based RL) to evaluate a Joint Delivery Systems in an uncertain environment. The MAS-ADP based RL is superior to MAS-Q-learning in replicating the potential actions of the agents under uncertain environment by adapting to the changing environment properly into accurate decisions thus increasing the accuracy of agent's decision making and eventually reducing environmental emissions as well.
机译:由于需求波动,停车问题和系统内的多个代理商,城市物流解决方案的效果尚不确定。这项研究使用多智能体-基于增强学习的自适应动态规划-基于强化学习(基于MAS-ADP的RL)对货运公司和城市整合中心(UCC)运营商的行为进行建模,以评估不确定环境中的联合配送系统。基于MAS-ADP的RL通过在不断变化的环境中正确地适应准确的决策,从而在不确定的环境中复制代理的潜在行为,优于MAS-Q学习,从而提高了代理的决策准确性并最终减少了环境排放。

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