Tool and Workpiece Condition Classification Using Empirical Mode Decomposition (EMD) with Hilbert–Huang Transform (HHT) of Vibration Signals and Machine Learning Models
Abstract
:1. Introduction
2. Materials and Method
2.1. Vibration Signal Capturing and Processing for TWCM System
2.1.1. Experimental Set-Up
2.1.2. Advanced Vibration Signal Processing
3. Results and Discussions
4. Conclusions
- 1.
- Neural network feed-forward backprop with an SCG ML model was first adopted to classify the tool classes, with a fair error of 0.102. A better model was observed to provide better performance.
- 2.
- SVM and KNN were applied to feature classification with both 5-fold and 10-fold cross-validation, and the effectiveness of the models was evaluated by determining the error loss of both models.
- 3.
- The lowest error loss of 0.4752 was observed with the SVM model when 5-fold cross-validation was implemented, whereas, with the KNN model, the lowest error loss was observed to be 0.0166 when 5-fold cross-validation was implemented. In this case, feature selection using GA was implemented before ML classification.
- 4.
- The lowest error loss of 0.4881 was observed with the SVM model when 10-fold cross-validation was implemented, whereas, with the KNN model, the lowest error loss was observed to be 0.0109 when 10-fold cross-validation was implemented. Similarly, feature selection using GA was implemented before ML classification.
- 5.
- When all the features were used (no feature selection was performed), the lowest error loss of 0.1170 was observed for the SVM model when 10-fold cross-validation was implemented, whereas, with the KNN model, the lowest error loss was observed to be 0.1606 when 10-fold cross-validation was implemented.
- 6.
- Moreover, when all the features were used (no feature selection was performed), the lowest error loss of 0.1021 was observed for the SVM model when 5-fold cross-validation was implemented, whereas, with the KNN model, the lowest error loss was observed to be 0.1870 when 5-fold cross-validation was implemented.
- 7.
- Of the two models, KNN performed better in classifying the tool classes during the machining operation when the decomposition method was applied to the vibration signals captured during the operation.
- 8.
- SVM models performed better when all the features extracted from vibration signals were considered, compared to when feature selection was implemented, whereas, for the KNN model, the performance was better when feature selection was implemented.
- 9.
- The methodology developed based on tool classification using advanced signal processing techniques can be used to classify product quality output based on work requirements in terms of roughness parameters.
Supplementary Materials
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
TCM | Tool Condition Monitoring |
FFT | Fast Fourier Transform |
DWT | Discrete Wavelet Transform |
SVM | Support Vector Machine |
KNN | K-Nearest Neighbor |
SCG | Scaled Conjugate Gradient |
ML | Machine Learning |
HHT | Hilbert–Huang Transform |
TWCM | Tool and Workpiece Condition Monitoring |
WT | Wavelet Transform |
RW | Roulette Wheel |
VMB | Variational Mode Decomposition |
LSVM | Linear Support Vector Machine |
PCA | Principal Component Analysis |
LR | Logistic Regression |
ANN | Artificial Neural Networks |
CNN | Convolutional Neural Network |
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Olalere, I.O.; Olanrewaju, O.A. Tool and Workpiece Condition Classification Using Empirical Mode Decomposition (EMD) with Hilbert–Huang Transform (HHT) of Vibration Signals and Machine Learning Models. Appl. Sci. 2023, 13, 2248. https://doi.org/10.3390/app13042248
Olalere IO, Olanrewaju OA. Tool and Workpiece Condition Classification Using Empirical Mode Decomposition (EMD) with Hilbert–Huang Transform (HHT) of Vibration Signals and Machine Learning Models. Applied Sciences. 2023; 13(4):2248. https://doi.org/10.3390/app13042248
Chicago/Turabian StyleOlalere, Isaac Opeyemi, and Oludolapo Akanni Olanrewaju. 2023. "Tool and Workpiece Condition Classification Using Empirical Mode Decomposition (EMD) with Hilbert–Huang Transform (HHT) of Vibration Signals and Machine Learning Models" Applied Sciences 13, no. 4: 2248. https://doi.org/10.3390/app13042248
APA StyleOlalere, I. O., & Olanrewaju, O. A. (2023). Tool and Workpiece Condition Classification Using Empirical Mode Decomposition (EMD) with Hilbert–Huang Transform (HHT) of Vibration Signals and Machine Learning Models. Applied Sciences, 13(4), 2248. https://doi.org/10.3390/app13042248