Research of elevator group scheduling system based on reinforcement learning algorithm

Liu Zheng, Shu Guang, Dong Hui
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引用次数: 6

Abstract

Elevator group control system (EGCS) is a complex decision-making system, which has characteristics of multi-objective, randomness and nonlinear. It is difficult to adopt precise mathematical models describing. This paper introduces a new elevator dynamic scheduling system based on reinforcement learning algorithm. We trade reinforcement learning algorithm as the way to learn the optimal strategy in the course of interacting with the environment. Average waiting time and average riding time are optimized indicators. Combine with the value iteration algorithm called Q-learning to construct the whole algorithm for elevator group scheduling. The simulation result shows great superior and feasibility for elevator dynamic scheduling system based on reinforcement learning algorithm.
基于强化学习算法的电梯群调度系统研究
电梯群控系统(EGCS)是一个复杂的决策系统,具有多目标、随机性和非线性的特点。很难采用精确的数学模型来描述。介绍了一种基于强化学习算法的电梯动态调度系统。我们将强化学习算法作为在与环境交互过程中学习最优策略的方法。平均等待时间和平均乘车时间是优化后的指标。结合q学习的值迭代算法,构造了电梯群调度的整体算法。仿真结果表明,基于强化学习算法的电梯动态调度系统具有很大的优越性和可行性。
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