Multi-objective Optimization of Turning Performance Characteristics using GA Coupled with AHP based Approach

S. Tamang, M. Chandrasekaran
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引用次数: 1

Abstract

Heat resistive super alloys (HRSAs) which are commonly known as Inconel alloys are extensively used in aeronautical, food processing and automobile industries. The machinability and parametric optimization of Inconel 825 have not been reported much in the literatures. This study attempts to experimentally investigate and optimize the process parameters during machining Inconel 825 for multiple performance characteristics. Spindle speed (N), feed rate (f) and depth of cut (d) are optimized for different responses namely surface roughness (Ra), cutting force (Fz) and metal removal rate (MRR). Feed is found to have the highest influence on Ra and Fz. A mathematical model based on multiple regression analysis is developed for predicting Ra, Fz and MRR. Taguchi analysis is used for optimizing single objective through mean effect plots. For simultaneously optimizing all the responses a weighted combination of objective function is formulated and optimized using genetic algorithm (GA).The optimum parametric combination being 1200 rpm, 0.113 mm/rev and 0.825 mm for N, f and d respectively. In the present work analytical hierarchy processes (AHP) is employed for evaluating weights for each performance measures based on their relative importance. Also, Pareto optimality approach is used for obtaining optimum solutions that produce components with maximum MRR at desired value of Ra is another new contribution of this research. The Pareto optimal solution yields a minimum surface roughness of 1.42µm at N=1204.5 rpm, f=0.124 mm/rev and d=0.503 mm. This is quite lower than the minimum value of 1.6µm obtained experimentally. The NSGA-II result was verified experimentally and the actual surface roughness obtained was1.46µm resulting in an error percentage of 2.8%. The developed approach can be economically applied for the production of quality components from Inconel 825 by industries.
基于遗传算法和层次分析法的车削性能多目标优化
耐热高温合金(hrsa)通常被称为铬镍铁合金,广泛应用于航空、食品加工和汽车工业。关于Inconel 825的可加工性和参数优化,文献报道不多。本研究试图通过实验研究和优化加工英科乃尔825的多种性能特性的工艺参数。主轴转速(N)、进给速度(f)和切削深度(d)针对不同的响应进行了优化,即表面粗糙度(Ra)、切削力(Fz)和金属去除率(MRR)。饲料对Ra和Fz的影响最大。建立了基于多元回归分析的Ra、Fz和MRR预测数学模型。田口分析法通过平均效应图对单个目标进行优化。为了同时优化所有响应,建立了目标函数的加权组合,并采用遗传算法进行优化。N、f和d的最佳参数组合分别为1200 rpm、0.113 mm/rev和0.825 mm。在目前的工作中,采用层次分析法(AHP)根据各绩效指标的相对重要性来评价其权重。此外,利用Pareto最优方法获得在期望Ra值下产生MRR最大的组分的最优解是本研究的另一个新贡献。当N=1204.5 rpm, f=0.124 mm/rev, d=0.503 mm时,Pareto最优解的最小表面粗糙度为1.42µm。这比实验得到的最小值1.6µm要低得多。实验验证了NSGA-II的结果,得到的实际表面粗糙度为1.46µm,误差百分比为2.8%。所开发的方法可以经济地应用于工业生产高质量的因科乃尔825部件。
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