Sensor selection and tool wear prediction with data-driven models for precision machining

被引:5
|
作者
Han S. [1 ]
Yang Q. [2 ]
Pattipati K.R. [2 ]
Bollas G.M. [1 ]
机构
[1] Department of Chemical & Biomolecular Engineering, University of Connecticut, Storrs, CT
[2] Department of Electrical & Computer Engineering, University of Connecticut, Storrs, CT
关键词
milling process; regression models; sensor selection; tool wear prediction;
D O I
10.1002/amp2.10143
中图分类号
学科分类号
摘要
Estimation of tool wear in precision machining is vital in the traditional subtractive machining industry to reduce processing cost, improve manufacturing efficiency and product quality. In this vein, fusion of time and frequency-domain features of commonly sensed signals can provide an early indication of tool wear and improve its prediction accuracy for prognostics and health management. This paper presents a data-driven methodology and a complete tool chain for the inference of precision machining tool wear from fused machine measurements, such as cutting force, power, audio and vibration signals, and quantify the usefulness of each measurement. Indicators of tool wear are extracted from time-domain signal statistics, frequency-domain analysis, and time-frequency domain analysis. Correlation coefficients between the extracted features (indicators) and the tool wear are used to select the most informative features. Principal Component Analysis and Partial Least-Squares are used to reduce the dimensionality of the feature space. Regression models, including linear regression, support vector regression, Decision tree regression, neural network regression and Gaussian process regression, are used to predict the tool wear using data from a Haas milling machine performing spiral boss face milling. The performance of the regression models based on subsets of sensors validates the preliminary estimates about the saliency of the sensors. The experimental results show that the proposed methods can predict the machine tool wear precisely, with readily available sensor measurements. Neural network and Gaussian process regression were able to achieve good estimates of tool wear at different machine operating conditions. The most informative signal in predicting tool wear was shown to be the vibration signal. Time-frequency domain features were the most informative features among the combination of features of three domains. In addition, using partial least squares components extracted from the original features of signals led to higher prediction accuracy. © 2022 American Institute of Chemical Engineers.
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