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A Fuzzy-knowledge Resource-allocation Model Of The Semiconductorrnfinal Test Industry

机译:半导体最终测试行业的模糊知识资源分配模型

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摘要

The operations of the semiconductor final test industry are complicated and characterized by multiple-resource constraints that require simultaneous considerations. One of the most challenging production-planning decisions in the industry concerns an efficient allocation of resources that results in high manufacturing performance. Firms in the industry are thus eager to discover resource-allocation knowledge from large manufacturing databases. This study develops a novel model via the extraction of fuzzy-business rules from databases for obtaining resource-allocation knowledge as well as allocating resources efficiently. The proposed model uses both a genetic algorithm to find the best priority sequence of customer orders for resource allocation and, in accordance with the priority sequence of orders, a fuzzy-inference model to allocate the resources and to determine the order-completion times. Experiments showed that the proposed model can significantly reduce task tardiness.
机译:半导体最终测试行业的运营非常复杂,其特点是需要同时考虑多种资源。业内最具挑战性的生产计划决策之一涉及有效分配资源,从而提高制造性能。因此,行业中的公司渴望从大型制造数据库中发现资源分配知识。这项研究通过从数据库中提取模糊业务规则来开发一种新颖的模型,以获取资源分配知识以及有效地分配资源。所提出的模型既使用遗传算法来找到用于资源分配的客户订单的最佳优先顺序,又根据订单的优先顺序,使用模糊推理模型来分配资源并确定订单完成时间。实验表明,该模型可以显着减少任务拖延。

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