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Applying Bayesian Optimization for Machine Learning Models in Predicting the Surface Roughness in Single-Point Diamond Turning Polycarbonate

机译:应用贝叶斯优化对机器学习模型预测单点金刚石转动聚碳酸酯表面粗糙度

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This paper deals with the prediction of surface roughness in manufacturing polycarbonate (PC) by applying Bayesian optimization for machine learning models. The input variables of ultraprecision turning—namely, feed rate, depth of cut, spindle speed, and vibration of the X- , Y-, and Z -axis—are the main factors affecting surface quality. In this research, six machine learning- (ML-) based models—artificial neural network (ANN), Cat Boost Regression (CAT), Support Vector Machine (SVR), Gradient Boosting Regression (GBR), Decision Tree Regression (DTR), and Extreme Gradient Boosting Regression (XGB)—were applied to predict the surface roughness (Ra). The predictive performance of the baseline models was quantitatively assessed through error metrics: root means square error (RMSE), mean absolute error (MAE), and coefficient of determination ( R 2 ). The overall results indicate that the XGB and CAT models predict Ra with the greatest accuracy. In improving baseline models such as XGB and CAT, the Bayesian optimization (BO) is next used to determine their best hyperparameters, and the results indicate that XGB is the best model according to the evaluation metrics. Results have shown that the performance of the models has been improved significantly with BO. For example, the values of RMSE and MAE of XGB have decreased from 0.0076 to 0.0047 and from 0.0063 to 0.0027, respectively, for the training dataset. Using the testing dataset, the values of RMSE and MAE of XGB have decreased from 0.4033 to 0.2512 and from 0.2845 to 0.2225, respectively. Moreover, the vibrations of the X , Y , and Z axes and feed rate are the most significant feature in predicting the results, which is in high accordance with the literature. We find that, in a specified value domain, the vibration of the axes has a greater influence on the surface quality than does the cutting condition.
机译:本文通过对机器学习模型应用贝叶斯型优化来处理制造聚碳酸酯(PC)的表面粗糙度的预测。超自眼转向的输入变量 - 即进料速率,切割深度,X-,Y和Z轴的振动,是影响表面质量的主要因素。在本研究中,六种机器学习 - (ML-)模型 - 人工神经网络(ANN),CAT提升回归(CAT),支持向量机(SVR),渐变升压回归(GBR),决策树回归(DTR),和极端梯度升压回归(XGB) - 施加以预测表面粗糙度(RA)。通过误差度量定量评估基线模型的预测性能:根部意味着方误差(RMSE),平均误差(MAE)和确定系数(R 2)。总体结果表明XGB和CAT模型以最大的准确性预测RA。在改进XGB和CAT之类的基线模型中,接下来使用贝叶斯优化(BO)来确定其最佳的超参数,结果表明XGB是根据评估指标的最佳模型。结果表明,模型的性能与博有显着改善。例如,XGB的RMSE和MAE的值分别从0.0076降至0.0047,分别为训练数据集的0.0063至0.0027。使用测试数据集,XGB的RMSE和MAE的值分别从0.4033减少到0.2512,分别为0.2845至0.2225。此外,X,Y和Z轴和进料速率的振动是预测结果中最重要的特征,这与文献高。我们发现,在指定的值域中,轴的振动对表面质量的影响比切割条件更大。

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