Scalability, generalization and coevolution -- experimental comparisons applied to automated facility layout planning

M. Furuholmen, K. Glette, M. Høvin, J. Tørresen
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引用次数: 5

Abstract

Several practical problems in industry are difficult to optimize, both in terms of scalability and representation. Heuristics designed by domain experts are frequently applied to such problems. However, designing optimized heuristics can be a non-trivial task. One such difficult problem is the Facility Layout Problem (FLP) which is concerned with the allocation of activities to space. This paper is concerned with the block layout problem, where the activities require a fixed size and shape (modules). This problem is commonly divided into two sub problems; one of creating an initial feasible layout and one of improving the layout by interchanging the location of activities. We investigate how to extract novel heuristics for the FLP by applying an approach called Cooperative Coevolutionary Gene Expression Programming (CCGEP). By taking advantage of the natural problem decomposition, one species evolves heuristics for pre-scheduling, and another for allocating the activities onto the plant. An experimental, comparative approach investigates various features of the CCGEP approach. The results show that the evolved heuristics converge to suboptimal solutions as the problem size grows. However, coevolution has a positive effect on optimization of single problem instances. Expensive fitness evaluations may be limited by evolving generalized heuristics applicable to unseen fitness cases of arbitrary sizes.
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可扩展性、通用化和协同进化——自动化设施布局规划的实验比较
工业中的一些实际问题在可伸缩性和表示方面都难以优化。领域专家设计的启发式算法经常被应用于这类问题。然而,设计优化的启发式可能是一项不平凡的任务。其中一个难题是设施布局问题(FLP),它涉及到活动在空间中的分配。本文关注的是块布局问题,其中活动需要固定的大小和形状(模块)。这个问题通常分为两个子问题;一个是创建一个初步可行的布局,另一个是通过交换活动的位置来改进布局。我们研究了如何通过一种称为合作协同进化基因表达规划(CCGEP)的方法提取FLP的新启发式。通过利用自然的问题分解,一个物种进化出预先安排的启发式,另一个物种进化出将活动分配到植物上的启发式。一个实验,比较的方法研究了CCGEP方法的各种特点。结果表明,随着问题规模的增大,进化启发式算法收敛到次优解。然而,协同进化对单个问题实例的优化有积极的作用。昂贵的适应度评估可能受到适用于任意大小的未见适应度情况的进化广义启发式的限制。
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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