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Multi-objective FMS process planning with various flexibilities using a symbiotic evolutionary algorithm

机译:使用共生进化算法的各种灵活性的多目标FMS工艺计划

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摘要

This paper presents an evolutionary algorithm, called the multi-objective symbiotic evolutionary algorithm (MOSEA), to solve a multi-objective FMS process planning (MFPP) problem with various flexibilities. The MFPP problem simultaneously considers four types of flexibilities related to machine, tool, sequence, and process and takes into account three objectives: balancing the machine workload, minimizing part movements, and minimizing tool changes. The MOSEA is modeled as a two-leveled structure to find a set of well-distributed solutions close to the true Pa re to optimal solutions. To promote the search capability of such solutions, two main processes imitating symbiotic evolution and endosymbiotic evolution are introduced, together with an elitist strategy and a fitness sharing scheme. Evolutionary components suitable for the MFPP problem are provided. With a variety of test-bed problems, the performance of the proposed MOSEA is compared with those of existing multi-objective evolutionary algorithms. The experimental results show that the MOSEA is promising in solution convergence and diversity.
机译:本文提出了一种进化算法,称为多目标共生进化算法(MOSEA),以解决具有多种灵活性的多目标FMS过程计划(MFPP)问题。 MFPP问题同时考虑了与机器,工具,顺序和过程相关的四种灵活性,并考虑了三个目标:平衡机器工作负荷,最小化零件运动和最小化工具更换。 MOSEA被建模为两级结构,以找到一组与真实解决方案最接近的最优解决方案。为了提高此类解决方案的搜索能力,引入了模仿共生进化和共生共生进化的两个主要过程,以及精英策略和适应度共享计划。提供了适合MFPP问题的进化组件。由于存在各种测试平台问题,因此将提出的MOSEA的性能与现有的多目标进化算法的性能进行了比较。实验结果表明,MOSEA在解决方案的收敛性和多样性方面很有前途。

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