V. Rathod, S. Kadam, O. P. Yadav, A. Rathore
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引用次数: 0

摘要

在制造业中,钻多孔是主要作业之一。因此,优化钻径顺序以降低加工成本已引起人们的广泛关注。因此,研究人员提出了使用新改进的算法,杂交以及经典的独立进化算法。在本研究中,提出了一种基于TSP领域的离散教学优化方法(D-TLBO)来优化多孔钻径排序问题。为了检验D-TLBO的性能,采用了14孔和158孔两个多孔钻井测试问题,并将结果与文献中最佳的可用解决方案进行了比较。一种D-TLBO算法显示了在离散空间中有效搜索最优解的能力,并且对比研究也证实了该算法比现有的进化算法性能更好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Discrete Teaching Learning-Based Optimization for Multi-Hole Drilling
In manufacturing industries drilling multi-hole is one of the major operations. Hence, the drill path sequence optimization has attracted considerable attention to reduce the processing cost. Consequently, researchers have proposed the use of newly modified algorithms, hybridized as well as classical standalone evolutionary algorithms. In this study, a recently developed Discrete Teaching-Learning-Based Optimization (D-TLBO) in the domain of the TSP is proposed for optimizing the multi-hole drill path sequencing problems. To examine the performance of the D-TLBO two multi-hole drill test problems with 14 and 158 holes are used and the results are compared with the best available solutions from the literature. A D-TLBO algorithm has shown the ability to efficiently search for the optimal solution in a discrete space and a comparative study also confirms that the algorithm performs better than existing evolutionary algorithms.
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