首页> 外文会议>International Conference on Computational Scinece and Its Applications(ICCSA 2005) pt.4; 20050509-12; Singapore(SG) >A Cooperative Multi Colony Ant Optimization Based Approach to Efficiently Allocate Customers to Multiple Distribution Centers in a Supply Chain Network
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A Cooperative Multi Colony Ant Optimization Based Approach to Efficiently Allocate Customers to Multiple Distribution Centers in a Supply Chain Network

机译:基于协作多群体蚁群优化的方法可有效地将客户分配给供应链网络中的多个分销中心

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摘要

With the rapid change of world economy, firms need to deploy alternative methodologies to improve the responsiveness of supply chain. The present work aims to minimize the workload disparities among various distribution centres with an aim to minimize the total shipping cost. In general, this problem is characterized by its combinatorial nature and complex allocation criterion that makes its computationally intractable. In order to optimallyear optimally resolve the balanced allocation problem, an evolutionary Cooperative Multi Colony Ant Optimization (CMCAO) has been developed. This algorithm takes its governing traits from the traditional Ant Colony optimization (ACO). The proposed algorithm is marked by the cooperation among "sister ants" that makes it compatible to the problems pertaining to multiple dimensions. Robustness of the proposed algorithm is authenticated by comparing with GA based strategy and the efficiency of the algorithm is validated by ANOVA.
机译:随着世界经济的快速变化,企业需要采用替代方法来改善供应链的响应能力。本工作旨在最小化各个配送中心之间的工作量差异,以最小化总运输成本。通常,此问题的特征在于其组合性质和复杂的分配标准,这使其在计算上难以解决。为了最优/近乎最优地解决平衡分配问题,已经开发了进化协作多殖民地蚁群优化(CMCAO)。该算法的控制特征来自传统的蚁群优化(ACO)。所提出的算法的特点是“姐妹蚂蚁”之间的合作,使其与涉及多维的问题兼容。通过与基于遗传算法的策略比较,验证了所提算法的鲁棒性,并通过方差分析验证了算法的有效性。

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