异形物品背包问题的遗传算法

Layane Rodrigues de Souza Queiroz, L. Mundim, M. Andretta
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引用次数: 1

摘要

本文解决了带有异形物品的二维背包问题。利用内贴合栅格和非贴合栅格的概念来验证包装可行性,即完全包含在箱子内的物品之间不重叠。该问题的解决方案是通过有偏随机密钥遗传算法获得的,其中每条染色体包含与每件物品应装入箱中的顺序和旋转相关的信息。染色体还包含了一些信息,比如用哪种启发式方法来打包物品,以及后代从精英父母那里继承信息的概率。项目定位采用左下、左下、水平之字形三种启发式。在文献实例上的实验表明,在观察所有实例时,所开发的遗传算法能够获得53.4%的实例的最优解,并且将垃圾箱的占用率提高了约2.1%,是非常有效的。
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Genetic Algorithm for the Knapsack Problem with Irregular Shaped Items
The two-dimensional knapsack problem with irregularly shaped items is solved in this work. It is utilized the concept of inner-fit raster and no-fit raster to verify packing feasibility, which stands for non-overlapping between items that are entirely contained inside the bin. The problem solution is obtained with a biased random-key genetic algorithm in which each chromosome contains information related to the order and rotation where each item should be packed into the bin. The chromosome also contains information about which heuristic has to be used to pack items and the probability of an offspring inheriting information from an elite parent. It is adopted three heuristics for positioning items, which are: bottom-left, left-bottom, and horizontal zig-zag. The experiments over literature instances showed that the developed genetic algorithm is very effective since it could obtain an optimal solution for 53.4% of the instances and improved the bin's occupancy ratio in about 2.1% when observing all the instances.
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