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首页> 外文期刊>The International Journal of Advanced Manufacturing Technology >Multi-objective optimization of cutting parameters in turning process using differential evolution and non-dominated sorting genetic algorithm-II approaches
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Multi-objective optimization of cutting parameters in turning process using differential evolution and non-dominated sorting genetic algorithm-II approaches

机译:基于差分进化和非支配排序遗传算法的车削过程切削参数多目标优化-II法

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摘要

Optimization techniques using evolutionary algorithm (EA) are becoming more popular in engineering design and manufacturing activities because of the availability and affordability of high-speed computers. In this work, an attempt was made to solve multi-objective optimization problem in turning by using multi-objective differential evolution (MODE) algorithm and non-dominated sorting genetic algorithm (NSGA-II). Optimization in turning means determination of the optimal set of machining parameters to satisfy the objectives within the operational constraints. These objectives may be minimum tool wear, maximum metal removal rate or any weighted combination of both. The main machining parameters which are considered as variables of the optimization are cutting speed, feed rate, and depth of cut. The optimum set of these three input parameters is determined for a particular job-tool combination of EN24 steel and tungsten carbide during a single-pass turning which minimizes the tool wear and maximizes the metal removal rate after satisfying the constraints of temperature and surface roughness. The regression models, developed for tool wear, temperature, and surface roughness were used for the problem formulation. The non-dominated solution set obtained from MODE was compared with NSGA-II using the performance metrics and reported.
机译:由于高速计算机的可用性和可承受性,使用进化算法(EA)的优化技术在工程设计和制造活动中变得越来越流行。在这项工作中,尝试通过使用多目标差分进化(MODE)算法和非支配排序遗传算法(NSGA-II)解决车削中的多目标优化问题。车削的优化意味着确定最佳的加工参数集,以满足操作限制内的目标。这些目标可能是最小的工具磨损,最大的金属去除率或两者的加权组合。被视为优化变量的主要加工参数是切削速度,进给速度和切削深度。这三个输入参数的最佳设置是针对单次车削过程中EN24钢和碳化钨的特定作业工具组合确定的,这在满足温度和表面粗糙度的限制后,可最大程度地减少工具磨损并最大化金属去除率。针对工具磨损,温度和表面粗糙度开发的回归模型用于问题表述。使用性能指标将通过MODE获得的非支配解决方案集与NSGA-II进行比较,并进行报告。

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