Considerations on using genetic algorithms for the 2D bin packing problem: A general model and detected difficulties

Gia Thuan Lam, Viet Anh Ho, D. Logofătu, C. Bǎdicǎ
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引用次数: 2

Abstract

The 2-dimensional bin packing problem appears in various fields across many industries such as wood, glass, or paper industries. They may differ in terms of specific constraints with respects to each area but they all share a common objective that is to maximize the material utilization. Belonging to the class of NP-Hard problems, there exist no efficient method to solve it, but only approximate solution by combining a greedy placement strategy with some optimization techniques such as Genetic Algorithms. That combination approach is very popular in this topic, but few researchers have clearly presented their method and no one has explained the difficulty of applying Genetic Algorithms to this problem, making it difficult for new researchers to reimplement the known algorithms. In this paper, in addition to proposing a general framework for applying Genetic Algorithms to solving this problem, we also identify the main difficulties of using this approach and propose 2 genetic operators, path recombination and hill-climbing mutation, to support our genetic model.
用遗传算法求解二维装箱问题的考虑:一般模型和检测难点
二维装箱问题出现在许多行业的各个领域,如木材、玻璃或造纸行业。它们可能在每个领域的具体限制方面有所不同,但它们都有一个共同的目标,即最大限度地利用材料。该问题属于NP-Hard问题,没有有效的求解方法,只能将贪心放置策略与遗传算法等优化技术相结合进行近似求解。这种组合方法在这个主题中非常流行,但是很少有研究人员清楚地提出了他们的方法,也没有人解释将遗传算法应用于这个问题的困难,这使得新的研究人员很难重新实现已知的算法。在本文中,除了提出了应用遗传算法解决这一问题的一般框架外,我们还确定了使用该方法的主要困难,并提出了2种遗传算子,路径重组和爬山突变,以支持我们的遗传模型。
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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