Machinability analysis and multi-response optimization using NGSA-II algorithm for particle reinforced aluminum based metal matrix composites

U. Umer, M. K. Mohammed, M. Abidi, H. Alkhalefah, H. Kishawy
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引用次数: 1

Abstract

In this study the effects of reinforcement particle size and cutting parameters on machining performance variables like cutting force, maximum tool-chip interface temperature and surface roughness of the machined surface have been investigated while machining Aluminum based metal matrix composites (MMCs). MMC bars with silicon carbide reinforcement having 10 % volume fraction and particle sizes of 5 μm, 10 μm and 15 μm are machined with polycrystalline diamond (PCD) inserts. Experiments are performed using central composite design (CCD) having four parameters with three levels. Response surfaces for each performance variables are generated using polynomial models. Single variable and interaction effects have been investigated using principal component analysis and 3D response charts. Multi-response optimization has been performed to minimize surface roughness and maximum tool-chip interface temperature using non-dominated sorting genetic algorithm II (NSGA-II). In addition, constraints have been applied to the optimization search to filter design points with high cutting forces and low material removal rate. Most of the optimal solutions are found to be with moderate cutting speeds, low feed rate and low depth of cuts.
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基于NGSA-II算法的颗粒增强铝基金属基复合材料可加工性分析及多响应优化
在铝基金属基复合材料(MMCs)加工过程中,研究了增强颗粒尺寸和切削参数对切削力、最大刀屑界面温度和加工表面粗糙度等加工性能变量的影响。采用聚晶金刚石(PCD)刀片加工体积分数为10%、粒径分别为5 μm、10 μm和15 μm的碳化硅增强MMC棒。实验采用四参数三电平中心复合设计(CCD)进行。使用多项式模型生成每个性能变量的响应面。利用主成分分析和三维响应图研究了单变量效应和交互效应。采用非支配排序遗传算法II (NSGA-II)进行多响应优化,以最小化表面粗糙度和最大化刀具-芯片界面温度。此外,将约束条件应用到优化搜索中,过滤出切削力大、材料去除率低的设计点。大多数最优解为中等切削速度、低进给速度和低切削深度。
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