Deadlock-solving Traffic Control Methods for Automated Guided Vehicle Systems

Maoning Chen, Yuan Lu, Canrong Zhang
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引用次数: 2

Abstract

To cope with the challenges arising in the logistics industry, intelligent warehouse systems equipped with Automated Guided Vehicle (AGV) are becoming an attractive choice for enterprises. Such intelligent systems are often deployed in complex working environments where collision and deadlock problems are often inevitable. This paper focuses on designing effective traffic control strategies and algorithms to eliminate deadlocks faced in the system. More specifically, under the Resource Authorization policy, the deadlock is defined based on the graph theory; in order to minimize the occurrence of deadlocks, this paper proposes a Future Path-oriented Planning (FPP) algorithm which considers the future routes that will be traversed by AGVs by simulation; and, moreover, Deadlock Detection and Recovery (DR) strategy is introduced to detect and eliminate deadlocks. Numerical experiments conducted on two typical types of maps demonstrate the effectiveness of the proposed algorithms.
自动引导车辆系统中解决死锁的交通控制方法
为了应对物流业面临的挑战,配备自动导引车(AGV)的智能仓库系统正成为企业的一个有吸引力的选择。这种智能系统通常部署在复杂的工作环境中,碰撞和死锁问题往往是不可避免的。本文的重点是设计有效的流量控制策略和算法来消除系统中面临的死锁。具体来说,在资源授权策略下,死锁是基于图论定义的;为了最大限度地减少死锁的发生,本文提出了一种未来路径导向规划(FPP)算法,该算法通过仿真考虑了agv未来将经过的路径;并引入了死锁检测和恢复(DR)策略来检测和消除死锁。对两种典型的地图进行了数值实验,验证了算法的有效性。
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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