Regression Analysis and Artificial Neural Network Approach to Predict of Surface Roughness in Milling Process

Zaineb Hameed Neamah, Ahmad Al Al-Talabi, Asma A. Mohammed Ali
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引用次数: 0

Abstract

Surface roughness (Ra) has a significant influence on the fatigue strength, corrosion resistance, and aesthetic appeal of machine components. Ra is hence a crucial manufacturing process parameter. This study predicts Ra of aluminum alloy Al-7024 after milling. Regression analysis and artificial neural network (ANN) modeling approaches are suggested for predicting Ra values. For better surface roughness, the cutting parameter must be set properly. Spindle speed, feed rate, and depth of cut have been chosen as predictors. Through 31 study cases, regression and ANN were used to examine how these parameters affected Ra. The measurement of surface roughness, together with comprehensive Ra analysis and regression analysis. The findings of this investigation indicate that Ra was predicted by both the regression and ANN models. convergent results from model predictions are obtained. This convergence highlights the promising methodology used in this work to forecast Ra in the milling of Al-7024. The findings demonstrated that, in comparison to the regression model, which had an average variation from the actual values of roughly 1%, The surface roughness was accurately predicted by the ANN model.
铣削过程表面粗糙度的回归分析与人工神经网络预测
表面粗糙度(Ra)对机械部件的疲劳强度、耐腐蚀性和美观性有重要影响。因此,Ra是一个关键的制造工艺参数。对Al-7024铝合金铣削后的Ra进行了预测。建议采用回归分析和人工神经网络(ANN)建模方法预测Ra值。为了获得更好的表面粗糙度,必须正确设置切削参数。主轴转速、进给速度和切削深度被选为预测因子。通过31个研究案例,运用回归和人工神经网络分析了这些参数对Ra的影响。测量表面粗糙度,并进行综合Ra分析和回归分析。本研究结果表明,回归模型和人工神经网络模型均可预测Ra。得到了模型预测的收敛结果。这种收敛性突出了本工作中用于预测Al-7024铣削中Ra的有前途的方法。结果表明,与回归模型相比,回归模型与实际值的平均变化约为1%,人工神经网络模型准确地预测了表面粗糙度。
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