Hybrid-biased genetic algorithm for packing unequal rectangles into a fixed-size circle

COMPUTERS & OPERATIONS RESEARCH(2024)

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摘要
This study addresses the two-dimensional circular knapsack packing problem, which packs unequal rectangles into a circular container to maximize the number or the area of items packed. A biased genetic algorithm hybridized with a local search algorithm is proposed to solve the problem. The algorithm has a powerful global searching ability and is responsible for exploration, and a local search is applied for exploitation. Therefore, the proposed approach has an excellent search ability that can balance intensification and diversification well. A decoding procedure is proposed to transform the chromosome into a packing layout. The procedure first produces several initial layouts that contain a few rectangles, forms a complete layout for each initial layout, and selects the best one as the final packing layout. Three new types of initial layouts are considered. A new set of evaluation rules for the placement position and a random selection method are proposed. Computational experiments using two benchmark datasets showed that the evolutionary algorithm could provide better solutions than state-of-the-art algorithms from the literature, with 64 new best solutions out of 108 benchmark instances.
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关键词
Combinatorial optimization,Biased genetic algorithm,Rectangle packing,Knapsack packing
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