Artificial neural network in the prediction of surface roughness: A comparative study

Habeeb Al-Ani
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Abstract

Surface roughness is a key parameter to consider in the machining of aluminum alloy. It is rendered as one of the important determinants of the performance of mechanical instruments or components. Owing to its excellent mechanical properties, and ease of machinability, Aluminum 6061 (Al6061) is rendered a popular choice in many industries. Achieving a desired surface finish is crucial for the performance and longevity of machined components. This study aimed to compare the predictive performance of the artificial neural network (ANN) model versus the response surface methodology (RSM) in the prediction of surface roughness in the turning process of Al6061. ANN performed better than RSM in the prediction of surface roughness (A20 index 0.93 and 0.86 for ANN and RSM models respectively). MAPE and sMAPE were also found to be lower in the ANN model compared with the RSM model (8.06 versus 9.69, and 0.039 versus 0.047 respectively) indicating that the ANN model had a better predictive performance compared with the RSM model. Both ANN and RSM models showed that cutting speed and feed rate were the most important determinants of surface roughness in the turning process of Al6061 in other words to achieve a smoother surface during the turning process of Al6061 high cutting speed and low feed rate should be used. The findings of this study reflect the potential utility of ANN in the prediction and subsequently optimizing cutting parameters to achieve a smoother surface.
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人工神经网络在表面粗糙度预测中的应用:比较研究
表面粗糙度是铝合金加工中需要考虑的一个关键参数。它被认为是机械仪器或部件性能的重要决定因素之一。由于其优异的机械性能和易于切削加工,铝6061 (Al6061)在许多行业中都是受欢迎的选择。达到理想的表面光洁度对于机加工部件的性能和寿命至关重要。本研究旨在比较人工神经网络(ANN)模型与响应面法(RSM)在预测Al6061车削过程表面粗糙度方面的预测性能。人工神经网络对表面粗糙度的预测优于RSM模型(A20指数分别为0.93和0.86)。与RSM模型相比,人工神经网络模型的MAPE和sMAPE也较低(分别为8.06比9.69,0.039比0.047),表明人工神经网络模型比RSM模型具有更好的预测性能。ANN和RSM模型均表明,切削速度和进给速度是影响Al6061车削加工表面粗糙度的最重要因素,即为使Al6061车削加工表面更光滑,应采用高切削速度和低进给速度。本研究的结果反映了人工神经网络在预测和随后优化切削参数以获得更光滑表面方面的潜在效用。
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