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Group technology based adaptive cell formation using predator-prey genetic algorithm

机译:基于群技术的捕食-被捕食遗传算法自适应细胞形成

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摘要

In recent years, there has been a considerable growth of application of group technology in cellular manufacturing. This has led to investigation of the primary cell formation problem (CFP), both in classical and soft-computing domain. Compared to more well-known and analytical techniques like mathematical programming which have been used rigorously to solve CFPs, heuristic approaches have yet gained the same level of acceptance. In the last decade we have seen some fruitful attempts to use evolutionary techniques like genetic algorithm (GA) and Ant Colony Optimization to find solutions of the CFP. The primary aim of this study is to investigate the applicability of a fine grain variant of the predator-prey GA (PPGA) in CFPs. The algorithm has been adapted to emphasize local selection strategy and to maintain a reasonable balance between prey and predator population, while avoiding premature convergence. The results show that the algorithm is competitive in identifying machine-part clusters from the initial CFP matrix with significantly less number of iterations. The algorithm scaled efficiently for large size problems with competitive performance. Optimal cluster identification is then followed by removal of the bottleneck elements to give a final solution with minimum inter-cluster transition cost. The results give considerable impetus to study similar NP-complete combinatorial problems using fine-grain GAs in future.
机译:近年来,组技术在蜂窝制造中的应用有了相当大的增长。这导致对经典和软计算领域的原代细胞形成问题(CFP)的研究。与更严格地用于解决CFP的更著名的分析技术(例如数学编程)相比,启发式方法尚未获得相同的认可度。在过去的十年中,我们看到了使用遗传算法(GA)和蚁群优化等进化技术来寻找CFP解决方案的卓有成效的尝试。这项研究的主要目的是研究捕食者-猎物GA(PPGA)的细颗粒变体在CFP中的适用性。该算法已被调整为强调局部选择策略,并在避免过早收敛的同时保持猎物和捕食者种群之间的合理平衡。结果表明,该算法在从初始CFP矩阵识别机器零件簇方面具有竞争优势,迭代次数明显减少。该算法可有效地缩放以解决具有竞争性能的大尺寸问题。然后,在最佳群集识别之后,去除瓶颈元素,以最小的群集间过渡成本提供最终解决方案。结果为将来使用细粒度遗传算法研究相似的NP-完全组合问题提供了极大的动力。

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