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Multiresponse Optimization of Edm Process with Nanofluids Using Topsis Method and Genetic Algorithm

机译:用Topsis方法和遗传算法使用纳米流体EDM过程的多态优化

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Electrical Discharge Machining (EDM) process with copper tool electrode is used to investigate the machining characteristics of AISI D2 tool steel material. The multi-wall carbon nanotube is mixed with dielectric fluids and its end characteristics like surface roughness, fractal dimension and metal removal rate (MRR) are analysed. In this EDM process, regression model is developed to predict surface roughness. The collection of experimental data is by using L9 Orthogonal Array. This study investigates the optimization of EDM machining parameters for AISI D2 Tool steel using Technique for Order Preference by Similarity to Ideal Solution (TOPSIS) method. Analysis of variance (ANOVA) and F-test are used to check the validity of the regression model and to determine the significant parameter affecting the surface roughness. Atomic Force Microscope (AFM) is used to capture the machined image at micro size and using spectroscopy software the surface roughness and fractal dimensions are analysed. Later, the parameters are optimized using MINITAB 15 software, and regression equation is compared with the actual measurements of machining process parameters. The developed mathematical model is further coupled with Genetic Algorithm (GA) to determine the optimum conditions leading to the minimum surface roughness value of the workpiece.
机译:用铜工具电极的电气放电加工(EDM)工艺用于研究AISI D2工具钢材的加工特性。将多壁碳纳米管与介电流流体混合,并分析了表面粗糙度,分形尺寸和金属去除速率(MRR)。在该EDM过程中,开发了回归模型以预测表面粗糙度。实验数据的集合是使用L9正交阵列。本研究研究了AISI D2工具钢的优化,使用了通过相似性与理想解决方案(TOPSIS)方法的顺序偏好的技术。方差分析(ANOVA)和F检验用于检查回归模型的有效性,并确定影响表面粗糙度的重要参数。原子力显微镜(AFM)用于在微尺寸下捕获加工图像,并使用光谱软件分析表面粗糙度和分形尺寸。稍后,使用Minitab 15软件优化参数,并将回归方程与加工过程参数的实际测量进行比较。开发的数学模型进一步与遗传算法(GA)耦合,以确定导致工件的最小表面粗糙度值的最佳条件。

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