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Multi-objective optimization of machining and micro-machining processes using non-dominated sorting teaching-learning-based optimization algorithm

机译:基于非主导分类教学的优化算法的加工和微加工过程的多目标优化

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摘要

Selection of optimum machining parameters is vital to the machining processes in order to ensure the quality of the product, reduce the machining cost, increasing the productivity and conserve resources for sustainability. Hence, in this work a posteriori multi-objective optimization algorithm named as Non-dominated Sorting Teaching-Learning-Based Optimization (NSTLBO) is applied to solve the multi-objective optimization problems of three machining processes namely, turning, wire-electric-discharge machining and laser cutting process and two micro-machining processes namely, focused ion beam micro-milling and micro wire-electric-discharge machining. The NSTLBO algorithm is incorporated with non-dominated sorting approach and crowding distance computation mechanism to maintain a diverse set of solutions in order to provide a Pareto-optimal set of solutions in a single simulation run. The results of the NSTLBO algorithm are compared with the results obtained using GA, NSGA-II, PSO, iterative search method and MOTLBO and are found to be competitive. The Pareto-optimal set of solutions for each optimization problem is obtained and reported. These Pareto-optimal set of solutions will help the decision maker in volatile scenarios and are useful for real production systems.
机译:选择最佳加工参数对于加工过程至关重要,以确保产品的质量,降低加工成本,提高生产力和可持续性的资源。因此,在这项工作中,应用了作为非主导分类教学的优化(NSTLBO)的后验多目标优化算法用于解决三种加工过程的多目标优化问题,即转弯,电线放电加工和激光切割工艺和两种微加工过程,即聚焦离子束微铣削和微型电线电气放电加工。 NSTLBO算法包含非主导的分类方法和拥挤距离计算机制,以维持多样化的解决方案,以便在单个仿真运行中提供静态最佳的一组解决方案。将NSTLBO算法的结果与使用GA,NSGA-II,PSO,迭代搜索方法和MOTLBO获得的结果进行了比较,并且发现具有竞争力。获得并报告了每个优化问题的帕累托最佳的一组解决方案。这些帕累托 - 最佳的解决方案将有助于决策者在不稳定的情景中,对实际生产系统有用。

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