Optimizing highly constrained truck loadings using a self-adaptive genetic algorithm

Sander van Rijn, M. Emmerich, Edgar Reehuis, Thomas Bäck
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引用次数: 16

Abstract

Most research into the Container Loading problem has been done on theoretical problem sets and while taking one or two constraints into account. In this paper we discuss the successful implementation of a self-adaptive Genetic Algorithm applying only mutation, with a variable mutation rate. This is applied to a real-world problem with actual problem instances from industry. We introduce an abstract, indirect representation for the considered loadings together with two mutation strategies. Solutions of these different strategies are compared with each other, a static mutation rate GA, and with solutions created by human planners as used in industry, for a set of over 500 realworld problem instances. Furthermore, we examine how our automated results compare to those generated by experienced human planners, showing that they are valid loadings and match fitness values.
基于自适应遗传算法的高约束卡车装载优化
大多数关于集装箱装载问题的研究都是在理论问题集上完成的,同时考虑了一两个约束条件。本文讨论了一种仅应用变异的、具有可变变异率的自适应遗传算法的成功实现。这将应用于具有工业实际问题实例的实际问题。我们引入了一个抽象的,间接的表示所考虑的负载以及两种突变策略。针对500多个现实世界的问题实例,将这些不同策略的解决方案(静态突变率遗传算法)与工业中使用的人类规划者创建的解决方案进行相互比较。此外,我们检查了我们的自动化结果与经验丰富的人类规划者生成的结果的比较,表明它们是有效的负载并匹配适应度值。
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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