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Simplified swarm optimization in disassembly sequencing problems with learning effects

机译:具有学习效果的拆卸排序问题中的简化群优化

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摘要

In classical disassembly sequencing problems (DSPs), the disassembly time of each item is assumed fixed and sequence-independent. From a practical perspective, the actual processing time of a component could depend on its position in the sequence. In this paper, a novel DSP called the learning-effect DSP (LDSP) is proposed by considering the general effects of learning in DSP. A modified simplified swarm optimization (SSO) method developed by revising the most recently published variants of SSO is proposed to solve this new problem. The presented SSO scheme improves the update mechanism, which is the core of any soft computing based methods, and revises the self-adaptive parameter control procedure. The conducted computational experiment with up to 500 components reflects the effectiveness of the modified SSO method in terms of final accuracy, convergence speed, and robustness.
机译:在经典的拆解排序问题(DSP)中,每个项目的拆解时间均假定为固定且与序列无关。从实际角度来看,组件的实际处理时间可能取决于其在序列中的位置。在本文中,考虑到DSP中学习的一般效果,提出了一种新颖的DSP,称为学习效果DSP(LDSP)。为了解决这个新问题,提出了一种通过修订SSO最新发布的变体而开发的改进的简化群优化(SSO)方法。提出的SSO方案改进了作为任何基于软计算的方法的核心的更新机制,并修改了自适应参数控制程序。进行的多达500个组件的计算实验反映了改进的SSO方法在最终精度,收敛速度和鲁棒性方面的有效性。

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