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Solving the tool switching problem with memetic algorithms

机译:用模因算法解决工具切换问题

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摘要

The tool switching problem (ToSP) is well known in the domain of flexible manufacturing systems. Given a reconfigurable machine, the ToSP amounts to scheduling a collection of jobs on this machine (each of them requiring a different set of tools to be completed), as well as the tools to be loaded/unloaded at each step to process these jobs, such that the total number of tool switches is minimized. Different exact and heuristic methods have been defined to deal with this problem. In this work, we focus on memetic approaches to this problem. To this end, we have considered a number of variants of three different local search techniques (hill climbing, tabu search, and simulated annealing), and embedded them in a permutational evolutionary algorithm. It is shown that the memetic algorithm endowed with steepest ascent hill climbing search yields the best results, performing synergistically better than its stand-alone constituents, and providing better results than the rest of the algorithms (including those returned by an effective ad hoc beam search heuristic defined in the literature for this problem).
机译:工具转换问题(ToSP)在柔性制造系统领域是众所周知的。对于可重新配置的计算机,ToSP相当于在此计算机上调度一组作业(每个作业都需要完成一组不同的工具),以及在处理这些作业的每个步骤中要加载/卸载的工具,从而使工具开关的总数最小化。已经定义了不同的精确和启发式方法来处理此问题。在这项工作中,我们专注于解决此问题的模因方法。为此,我们考虑了三种不同的局部搜索技术(爬山,禁忌搜索和模拟退火)的多种变体,并将其嵌入到排列演化算法中。结果表明,具有最陡峭的爬坡爬山搜索功能的模因算法产生的效果最佳,协同性能优于其独立成分,并且比其他算法(包括有效的临时波束搜索返回的算法)提供更好的结果文献中针对此问题定义的启发式方法)。

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