优化并发配置和规划:减少计算时间的建议

P. Pitiot, M. Aldanondo, É. Vareilles, T. Coudert, L. Zhang
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引用次数: 2

摘要

这种沟通处理大规模定制和产品配置任务与其生产过程规划的关联,同时试图优化成本和周期时间。在之前的一些工作中,我们提出了一种优化算法,称为CFB-EA。这种交流关系到改进CFB-EA解决大问题的方法。先前的实验表明,CFB-EA能够快速找到帕累托锋的良好近似值。这导致我们建议将优化分解为两个任务。首先,快速搜索并向用户提出帕累托前沿的“粗略”近似值。然后用户指出他感兴趣的帕累托前沿区域。问题被过滤,解决方案空间被缩小。在重点区域上启动了第二个优化。我们的目标是比较经典的单任务优化方法和提出的双任务优化方法。
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Optimizing concurrent configuration and planning: A proposition to reduce computation time
This communication deals with mass customization and the association of the product configuration task with the planning of its production process while trying to optimize cost and cycle time. In some previous works, we have proposed an optimization algorithm, called CFB-EA. This communication concerns a way to improve CFB-EA for large problems. Previous experiments have highlighted that CFB-EA is able to find quickly a good approximation of the Pareto Front. This led us to propose to decompose the optimization in two tasks. First, a “rough” approximation of the Pareto Front is quickly searched and proposed to the user. Then the user indicates the area of the Pareto Front that he is interested in. The problem is filtered and the solution space reduced. A second optimization is launched on the focused area. Our goal is to compare the classical single task optimization with the two tasks proposed approach.
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