Abstract

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 (R2). 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.

Highlights

  • Academic Editor: Samuel Yousefi is paper deals with the prediction of surface roughness in manufacturing polycarbonate (PC) by applying Bayesian optimization for machine learning models. e 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

  • 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). e 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 (R2). e overall results indicate that the XG Boosting Regressor (XGB) and CAT models predict Ra with the greatest accuracy

  • Prediction Accuracy of Various Baseline Models. e analyzed performance of multilayer perceptron neural network (MLP-NN), SVR, CAT, XGB, DTR, and Gradient Boosted Trees (GBTs) baseline regression models in terms of Ra prediction for diamond ultraturning is reported

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Summary

Introduction

Academic Editor: Samuel Yousefi is paper deals with the prediction of surface roughness in manufacturing polycarbonate (PC) by applying Bayesian optimization for machine learning models. e 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 a series of works, Krolczyk et al [9, 10] have constructed second-order polynomial prediction functions for predicting the surface roughness and tool life in the dry machining of duplex stainless steel In such a mathematical model, the influence of different parameters, namely, cutting speed, feed, and depth of cut, has been revealed based on the Student’s t-test (comparison of two mean values of populations with Gaussian distributions and homogeneous variances). Elangovan et al [8] built a Multiple Linear Regression (MLR) model to predict surface roughness on the basis of input parameters: feed rate, depth of cut, spindle speed, flank wear, and vibration signal. Ozgoren et al [18] have employed the ANN technique to predict the power and torque values obtained from a beta-type Stirling engine

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