Abstract

In order to investigate the thermal effect of a servo axis’ positioning error on the accuracy of machine tools, an empirical modeling method was proposed, which considers both the geometric and thermal positioning error. Through the analysis of the characteristics of the positioning error curves, the initial geometric positioning error was modeled with polynomial fitting, while the thermal positioning error was built with an empirical modeling method. Empirical modeling maps the relationship between the temperature points and thermal error directly, where the multi-collinearity among the temperature variables exists. Therefore, fuzzy clustering combined with principal component regression (PCR) is applied to the thermal error modeling. The PCR model can preserve information from raw variables and eliminate the effect of multi-collinearity on the error model to a certain degree. The advantages of this modeling method are its high-precision and strong robustness. Experiments were conducted on a three-axis machine tool. A criterion was also proposed to select the temperature-sensitivity points. The fitting accuracy of the comprehensive error modeling could reach about 89%, and the prediction accuracy could reach about 86%. The proposed modeling method was proven to be effective and accurate enough to predict the positioning error at any time during the machine tool operation.

Highlights

  • With the development of the machine manufacturing industry, the demand for highprecision machine tools is increasing

  • The fitting results of the principal component regression (PCR) model in

  • I.I. fitting results of the PCR model in

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Summary

Introduction

With the development of the machine manufacturing industry, the demand for highprecision machine tools is increasing. A better accuracy, and a higher removal rate is provided by high-precision machine tools than that of traditional machine tools. High-speed machining technology can provide high spindle revolution, high axial feed rate, and a high-CPU (Central Processing Unit) processing speed. The more heat is generated by the high-speed machining technology, and the more the accuracy of the machine tools is damaged. Induced error is demonstrated as one of the greatest contributors to the accuracy of the high-precision and ultra-precision machine tools. A thermally induced error can account for 40–70% of the total errors [1,2,3], which must be reduced to keep the accuracy of the machine tools during processing

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