基于振荡调节突变粒子群算法的JSP优化

Lingyu Yin, Zhao Xiong, Haiping Chen, Chengcheng Wang
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引用次数: 0

摘要

为防止粒子群算法在求解作业车间调度问题过程中出现早熟现象,将振荡调节速度/位置更新方法与粒子搜索邻域突变相结合,提出了一种改进的振荡调节突变粒子群优化算法。为了验证改进算法与标准算法在JSP解优化方面的效果,通过分析FT06、FT10和FT20的典型案例进行了系统的研究。结果表明,采用振荡调节突变的粒子群优化算法,优化效率提高50%以上,并能有效约束陷入局部最优陷阱的风险。此外,与标准粒子群算法相比,改进算法在解决作业车间调度问题时保持优化稳定性方面也具有显著优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimization of JSP Based on Particle Swarm Algorithm with Oscillation Regulation Mutation
To prevent the premature phenomenon during the process of solving the job shop scheduling problem (JSP) by particle swarm optimization algorithm, an improved particle swarm optimization algorithm with oscillation regulation mutation is proposed by combining the oscillation regulation speed/position update method with the particle search neighborhood mutation. In order to verify the effect of the improved algorithm on JSP solution optimization comparing to the standard one, systematic studies are carried out by analyzing the typical cases of FT06, FT10, and FT20. The results show that the particle swarm optimization algorithm with oscillation regulation mutation can achieve more than 50% improvement in optimization efficiency, and can effectively constrain the risk of falling into the local optimal trap. In addition, compared with the standard particle swarm algorithm, the improved algorithm also has significant advantages in maintaining the optimization stability for solving the job shop scheduling problem.
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