Application of Genetic Algorithm Technique for Machining Parameters Optimization in Drilling of Stainless Steel

Q3 Engineering
T. Kannan, B. Kumar, G. Kannan, M. Umar, Mohammad Chand Khan
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引用次数: 4

Abstract

Abstract This work is aimed at developing relations between the pertinent variables that affect drilling process of stainless steel using artificial neural network. The experiments were conducted on vertical CNC machining centre. The parameters used were spindle speed and feed rate. The effect of machining parameters on entry burr height, exit burr height and surface roughness was experimentally evaluated for different spindle speeds and feed rates. A model was established between the drilling parameters and experimentally obtained data using ANN. The predicted values and measured values are fairly close, which indicates that the developed model can be effectively used to predict the burr height and surface roughness in drilling of stainless steel. Genetic algorithm (GA) technique was used in this work to identify the optimized drilling parameters. Confirmation test was conducted with the optimized parameters and it was found that confirmation test results were similar to that of GA-predicted output values.
遗传算法技术在不锈钢钻孔加工参数优化中的应用
摘要本工作旨在利用人工神经网络建立影响不锈钢钻孔过程的相关变量之间的关系。实验在立式数控加工中心上进行。使用的参数是主轴转速和进给速度。在不同主轴转速和进给速度下,实验评估了加工参数对毛刺高度、毛刺高度和表面粗糙度的影响。利用人工神经网络建立了钻孔参数与实验数据之间的模型。预测值与实测值相当接近,表明所建立的模型可以有效地预测不锈钢钻孔过程中的毛刺高度和表面粗糙度。采用遗传算法(GA)技术确定最优钻井参数。对优化后的参数进行验证试验,验证试验结果与ga预测输出值基本一致。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Mechanics and Mechanical Engineering
Mechanics and Mechanical Engineering Engineering-Automotive Engineering
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