Sorting Robots Cluster Evacuation Based on Deep Q Network and Danger Potential Field

Ze-hua Liu, Rui-jie Jiang, Lv-xue Li, Yuyu Zhu, Zheng Mao
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Abstract

This paper presents a solution to improve the evacuation efficiency of the sorting robot and the chances to preserve more assets in an emergency. We propose a danger potential field model for the intelligent sorting warehouse, which takes the number of AGVs between the grid and the exit into account. By taking the danger map calculated by the model as prior knowledge, the paper combines it with Deep Q Network to obtain an effective evacuation scheduling strategy. Finally, comparing the performance of the strategy with the performance of traditional automata and danger potential field in a visual simulator based on the real sorting warehouse using Pygame, the effectiveness and practicability of the model in the paper is verified.
基于深度Q网络和危险势场的机器人聚类疏散分类
本文提出了一种在紧急情况下提高分拣机器人的疏散效率和保留更多资产机会的解决方案。提出了考虑电网与出口之间agv数量的智能分拣仓库危险势场模型。将模型计算出的危险图作为先验知识,与深度Q网络相结合,得到有效的疏散调度策略。最后,利用Pygame在基于真实分拣仓库的视觉模拟器中,将该策略的性能与传统自动机和危险势场的性能进行了比较,验证了本文模型的有效性和实用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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