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Multi-objective optimisation of reliable product-plant network configuration

机译:可靠的产品工厂网络配置的多目标优化

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摘要

Ensuring manufacturing reliability is key to satisfying product orders when production plants are subject to disruptions. Reliability of a supply network is closely related to the redundancy of products as production in disrupted plants can be replaced by alternative plants. However the benefits of incorporating redundancy must be balanced against the costs of doing so. Models in literature are highly case specific and do not consider complex network structures and redundant distributions of products over suppliers, that are evident in empirical literature. In this paper we first develop a simple generic measure for evaluating the reliability of a network of plants in a given product-plant configuration. Second, we frame the problem as a multi-objective evolutionary optimisation model to show that such a measure can be used to optimise the cost-reliability trade off. The model has been applied to a producer’s automotive light and lamp production network using three popular genetic algorithms designed for multi-objective problems, namely, NSGA2, SPEA2 and PAES. Using the model in conjunction with genetic algorithms we were able to find trade off solutions successfully. NSGA2 has achieved the best results in terms of Pareto front spread. Algorithms differed considerably in their performance, meaning that the choice of algorithm has significant impact in the resulting search space exploration.
机译:当生产工厂遭受破坏时,确保制造可靠性是满足产品订单的关键。供应网络的可靠性与产品的冗余密切相关,因为被破坏的工厂中的生产可以由替代工厂来代替。但是,合并冗余的好处必须与这样做的成本相平衡。文献中的模型是高度特定于案例的,并且没有考虑复杂的网络结构和产品在供应商上的冗余分布,这在经验文献中是显而易见的。在本文中,我们首先开发一种简单的通用方法,用于评估给定产品-工厂配置下工厂网络的可靠性。其次,我们将该问题构造为一个多目标进化优化模型,以表明该方法可用于优化成本可靠性权衡。该模型已使用针对多目标问题设计的三种流行的遗传算法(即NSGA2,SPEA2和PAES)应用于生产商的汽车照明灯生产网络。通过将模型与遗传算法结合使用,我们能够成功找到权衡解决方案。在帕累托前沿传播方面,NSGA2取得了最佳结果。算法的性能差异很大,这意味着算法的选择对最终的搜索空间探索具有重大影响。

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