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Machinability evaluation of Al–4%Cu–7.5%SiC metal matrix composite by Taguchi–Grey relational analysis and NSGA-II

机译:Taguchi-Grey关联分析和NSGA-II评价Al-4%Cu-7.5%SiC金属基复合材料的切削性能

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Machinability evaluation of Al–4%Cu–7.5%SiC metal matrix composite (MMC) prepared by powder metallurgy (P/M) process is presented. Specimens are prepared with 99.85% pure aluminum added with 4% copper and 7.5% silicon carbide particles by volume fraction. Scanning electron microscope image shows even distribution of particles in Al-MMC. Turning operation is performed by varying machining parameters andexperiments are designed using Taguchi’s Design of Experiments (DoE), an L 9 Orthogonal Array (OA) is chosen. A hybrid Taguchi–Grey relational approach is used to determine the optimum parameters over measured responses flank wear, roughness, and material removed. Analysis of Variance (ANOVA) result shows that thedepth of cut is the influential parameter that contributes toward output responses. A metaheuristic evolutionary algorithm nondominated sorting genetic algorithm (NSGA-II) is applied to optimize the machining parameters for minimizing wear and maximizing metal removal. Experiments with optimum conditions show a better improvement in the output conditions.
机译:提出了通过粉末冶金(P / M)工艺制备的Al–4%Cu–7.5%SiC金属基复合材料(MMC)的切削性能评估。样品是由99.85%的纯铝,按体积分数添加4%的铜和7.5%的碳化硅颗粒制成的。扫描电子显微镜图像显示Al-MMC中颗粒均匀分布。通过改变加工参数来执行车削操作,并使用田口的实验设计(DoE)设计实验,选择了L 9正交阵列(OA)。 Taguchi-Grey混合关系方法用于确定测量到的响应的最佳参数,包括侧面磨损,粗糙度和去除的材料。方差分析(ANOVA)结果表明,切割深度是影响输出响应的重要参数。应用元启发式进化算法非支配排序遗传算法(NSGA-II)来优化加工参数,以最大程度地减少磨损并最大程度地去除金属。在最佳条件下进行的实验表明,输出条件得到了更好的改善。

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