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Hybrid Taguchi-differential evolution algorithm for optimization of multi-pass turning operations

机译:混合Taguchi微分进化算法优化多道次车削操作

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摘要

Hybridizing of the optimization algorithms provides a scope to improve the searching abilities of the resulting method. The purpose of this paper is to develop a novel hybrid optimization algorithm entitled hybrid robust differential evolution (HRDE) by adding positive properties of the Taguchi's method to the differential evolution algorithm for minimizing the production cost associated with multi-pass turning problems. The proposed optimization approach is applied to two case studies for multi-pass turning operations to illustrate the effectiveness and robustness of the proposed algorithm in machining operations. The results reveal that the proposed hybrid algorithm is more effective than particle swarm optimization algorithm, immune algorithm, hybrid harmony search algorithm, hybrid genetic algorithm, scatter search algorithm, genetic algorithm and integration of simulated annealing and Hooke-Jeevespatter search.
机译:优化算法的混合为改进所得方法的搜索能力提供了空间。本文的目的是通过将Taguchi方法的正属性添加到差分演化算法中,以最小化与多道次车削问题相关的生产成本,从而开发一种名为混合鲁棒差分演化(HRDE)的新型混合优化算法。所提出的优化方法被应用于多道车削操作的两个案例研究,以说明所提出算法在机加工操作中的有效性和鲁棒性。结果表明,所提出的混合算法比粒子群优化算法,免疫算法,混合和声搜索算法,混合遗传算法,散点搜索算法,遗传算法以及模拟退火和Hooke-Jeevespatter搜索的集成更有效。

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