网络配送系统遗传优化中的精英主义机制

L. Wieczorek, P. Ignaciuk
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引用次数: 0

摘要

本文研究了具有非平凡网络连接结构的配送系统的库存控制问题。针对不确定的市场需求,采用分布式(r, Q)库存管理策略控制网络节点的补货过程。采用非支配排序遗传算法(NSGA)解决了一个以降低运营成本和提供高客户满意度为目标的非线性三目标优化问题。所进行的数值研究证实了NSGA在调整(r, Q)策略参数方面的有效性。通过观察多目标优化问题中常用的各种性能指标,讨论了应用精英机制的后果。从基数、收敛性和潜在解的多样性方面比较了得到的帕累托集近似值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Elitism Mechanism in the Genetic Optimization of Networked Distribution Systems
This paper addresses the inventory control problem in distribution systems with a non-trivial, networked connectivity structure and goods relocation with delay. The distributed (r, Q) inventory management policy is applied to control the replenishment process at network nodes in response to uncertain market demand. The non-dominated sorting genetic algorithm (NSGA) is used to solve a nonlinear three-objective optimization problem focused on reducing operational costs and providing high customer satisfaction. The performed numerical studies confirmed the effectiveness of the NSGA in adjusting the parameters of the (r, Q) policy in the considered class of logistic systems. The consequences of applying the elitism mechanism are discussed via observation of various performance indicators commonly considered in multi-objective optimization problems. The obtained Pareto set approximations have been compared in terms of cardinality, convergence, and diversity of potential solutions.
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