基于d3qn的机器人电梯调度算法

Yan Ke, Yun-Shuai Yu, Cheng-Tung Sun, Chia-Yen Wu
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引用次数: 0

摘要

本文提出了一种基于Dueling双深度Q网络(D3QN)的机器人电梯调度算法。电梯轿厢分配决策的奖励是根据机器人的行程时间、空车经过的楼层数以及轿厢分配如何满足机器人的优先级来估计的。采用机器人中间件框架(RMF)作为仿真平台。将该算法的性能与现有的LOOK算法进行了比较。仿真结果表明,该方法在机器人的行程时间和车辆分配如何满足机器人的优先级方面优于现有的LOOK方法,而代价是空车通过的楼层数更多。
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D3QN-based Elevator Scheduling Algorithm for Robots
In this study, we proposed an elevator scheduling algorithm based on a Dueling Double Deep Q Network (D3QN) for robots. The rewards for the elevator car allocation decision are estimated based on the robots’ journey time, the number of floors an empty car traverses, and how the car allocation meets the robots’ priorities. The Robotics Middleware Framework (RMF) was adopted to be the simulator. The performance of the proposed algorithm was compared to an existing LOOK algorithm. The simulation results show that the proposed method outperforms the existing LOOK method in terms of the robots’ journey time and how the car allocation meets the robots’ priorities at the cost of a higher number of floors traversed by an empty car.
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