Back to Search
Start Over
Gaussian process regression for tool wear prediction
- Source :
- Mechanical Systems and Signal Processing. 104:556-574
- Publication Year :
- 2018
- Publisher :
- Elsevier BV, 2018.
-
Abstract
- To realize and accelerate the pace of intelligent manufacturing, this paper presents a novel tool wear assessment technique based on the integrated radial basis function based kernel principal component analysis (KPCA_IRBF) and Gaussian process regression (GPR) for real-timely and accurately monitoring the in-process tool wear parameters (flank wear width). The KPCA_IRBF is a kind of new nonlinear dimension-increment technique and firstly proposed for feature fusion. The tool wear predictive value and the corresponding confidence interval are both provided by utilizing the GPR model. Besides, GPR performs better than artificial neural networks (ANN) and support vector machines (SVM) in prediction accuracy since the Gaussian noises can be modeled quantitatively in the GPR model. However, the existence of noises will affect the stability of the confidence interval seriously. In this work, the proposed KPCA_IRBF technique helps to remove the noises and weaken its negative effects so as to make the confidence interval compressed greatly and more smoothed, which is conducive for monitoring the tool wear accurately. Moreover, the selection of kernel parameter in KPCA_IRBF can be easily carried out in a much larger selectable region in comparison with the conventional KPCA_RBF technique, which helps to improve the efficiency of model construction. Ten sets of cutting tests are conducted to validate the effectiveness of the presented tool wear assessment technique. The experimental results show that the in-process flank wear width of tool inserts can be monitored accurately by utilizing the presented tool wear assessment technique which is robust under a variety of cutting conditions. This study lays the foundation for tool wear monitoring in real industrial settings.
- Subjects :
- 0209 industrial biotechnology
Artificial neural network
Computer science
business.industry
Mechanical Engineering
Stability (learning theory)
Aerospace Engineering
Pattern recognition
02 engineering and technology
Kernel principal component analysis
Computer Science Applications
Support vector machine
020303 mechanical engineering & transports
020901 industrial engineering & automation
0203 mechanical engineering
Control and Systems Engineering
Kriging
Kernel (statistics)
Signal Processing
Radial basis function
Artificial intelligence
Tool wear
business
Civil and Structural Engineering
Subjects
Details
- ISSN :
- 08883270
- Volume :
- 104
- Database :
- OpenAIRE
- Journal :
- Mechanical Systems and Signal Processing
- Accession number :
- edsair.doi...........2d795ae2470ec1980b5136e0c883fc6f