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首页> 外文期刊>International Journal of Production Research >Assignment of duplicate storage locations in distribution centres to minimise walking distance in order picking
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Assignment of duplicate storage locations in distribution centres to minimise walking distance in order picking

机译:分配中心的重复存储位置分配,以最小化步行距离拣选

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摘要

With the rapid development of e-commerce, the orders processed in B2C warehouses are characterised by heterogeneous and small volume. The traditional storage assignment strategies used in the picker-to-parts warehouses do not have advantage any more. In this case, the scattered storage strategy is a good alternative. In this paper, we study a new scattered storage strategy that allows the same product to be placed in multiple storage locations. The correlation between products which reflects how frequently any two products will be ordered together in the same order is considered. The problem is formulated as a 0-1 integer programming model to minimise the weighted sum of distances between the products, with weight being the elements of the correlation matrix. To solve large-scale problems, a GA and a basic PSO algorithm are developed. To improve solution quality, a new PSO algorithm based on the problem characteristic is designed and a hybrid algorithm combing it with GA is proposed. Experiments show that the solutions of these algorithms are close to the optimal solutions for the small-sale problems. For larger problems, the specially designed new PSO greatly improves solution quality as compared to the basic algorithms and the hybrid algorithm makes further improvement.
机译:随着电子商务的快速发展,在B2C仓库中处理的订单的特点是异质和较小的体积。拾取器到零配件仓库中使用的传统存储分配策略不再有优势。在这种情况下,分散的存储策略是一个很好的替代方案。在本文中,我们研究了一种新的散点存储策略,允许将相同的产品放在多个存储位置。考虑了反映任何两种产品将以相同的顺序排序的频率之间的相关产品的相关性。该问题被制定为0-1整数编程模型,以最小化产品之间的距离的加权和,重量是相关矩阵的元素。为了解决大规模问题,开发了GA和基本PSO算法。为了提高解决方案质量,设计了一种基于问题特性的新的PSO算法,并提出了与GA梳理的混合算法。实验表明,这些算法的解决方案接近销售问题的最佳解决方案。对于更大的问题,与基本算法相比,特别设计的新PSO大大提高了解决方案质量,混合算法进一步改进。

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