Bi-Objective Circular Multi-Rail-Guided Vehicle Scheduling Optimization Considering Multi-Type Entry and Delivery Tasks: A Combined Genetic Algorithm and Symmetry Algorithm

Symmetry Pub Date : 2024-09-13 DOI:10.3390/sym16091205
Xinlin Li, Xuzhen Wu, Peipei Wang, Yalu Xu, Yue Gao, Yiyang Chen
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Abstract

Circular rail-guided vehicles (RGVs) are widely used in automated warehouses, and their efficiency directly determines the transportation efficiency of the entire system. The congestion frequency of RGVs greatly increases when facing dense multi-type entry and delivery tasks, affecting overall transportation efficiency. This article focuses on the RGV scheduling problem of multi-type parallel transportation tasks in a real-world automated warehouse, considering maximizing efficiency while reducing energy consumption and thus establishing the RGV scheduling optimization model. At the same time, an improved genetic algorithm (GA) based on symmetry selection function and offspring population structure symmetry is proposed to solve the above RGV scheduling problem, achieving the model solution. The case study demonstrates the superiority of the proposed method in breaking local optima and achieving bi-objective optimization in genetic algorithms.
考虑多类型进入和交付任务的双目标循环多轨道引导车辆调度优化:遗传算法与对称算法的结合
环形轨道引导车辆(RGV)广泛应用于自动化仓库,其效率直接决定了整个系统的运输效率。在面对密集的多类型入库和交付任务时,RGV 的拥堵频率会大大增加,从而影响整体运输效率。本文重点研究现实世界自动化仓库中多类型并行运输任务的 RGV 调度问题,考虑在降低能耗的同时实现效率最大化,从而建立 RGV 调度优化模型。同时,提出了一种基于对称选择函数和后代种群结构对称性的改进遗传算法(GA)来求解上述 RGV 调度问题,实现了模型求解。案例研究证明了所提方法在打破局部最优和实现遗传算法双目标优化方面的优越性。
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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