Wear Prediction of Tool Based on Modal Decomposition and MCNN-BiLSTM
Abstract
:1. Introduction
1.1. Literature Review
1.2. Research Gaps and Contributions
2. Problem Description
3. Predicting Tool Wear Based on MCNN BiLSTM
3.1. Tool Wear Prediction Framework
3.2. Data Processing
3.2.1. Multivariate Correlation Analysis
3.2.2. Empirical Mode Decomposition
- (1)
- Perform multiple random perturbations on the original sensor signal to obtain multiple sets of disturbance signals: , ; EMD decomposes the new signal to obtain the first subsequence:
- (2)
- By averaging the created N subsequences, the first subsequence of the CEEMDAN decomposition is obtained, and the residual of the first subsequence is also calculated to be removed.
- (3)
- Add a pair of positive and negative white Gaussian noise to to obtain a new signal. Use the new signal as the carrier for EMD decomposition to obtain the first subsequence , from which we can obtain the second subsequence of CEEMDAN decomposition and the residual after eliminating the second subsequence.
- (4)
- Repeat the above steps until the residual signal obtained is a monotonic function and cannot be further decomposed. The original signal is reproduced as follows:
3.3. Deep Combination Prediction Model
4. Validation and Analysis
4.1. Raw Data
4.1.1. Dataset Selection
4.1.2. Data Filtering
4.1.3. Mode Decomposition
4.2. Evaluating Indicator
4.3. Experimental Environment
4.4. Result Analysis
4.4.1. Module Verification
4.4.2. Comparison with Other Models
4.4.3. Exploring the Expandability of Models
5. Conclusions
- (1)
- The sensor signals during tool processing may better handle nonlinear and non-stationary signals after filtering and CEEMDAN, boosting local characteristics.
- (2)
- The developed model will predict tool wear values more accurately because it can more efficiently mine spatiotemporal properties in cutting signals.
- (3)
- This method’s prediction accuracy outperforms the SVR model, GRU model, B-LSTM model, B-BiLSTM model, 1DCNN-BiLSTM model, and 2DCNN model.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Ref. | Method | Advantage | Deficiency |
---|---|---|---|
Li [33] | SVR | Analyzing the characteristics of specific tools resulted in high prediction accuracy | The time required for analysis is long, and the model lacks universality |
Ren [34] | GRU | Multi sensor feature fusion | The network is simple, but its performance is poor when dealing with big data |
Li [35] | SVR | EMD decomposition of signals to amplify signal features | The network is simple, but its performance is poor when dealing with big data |
Wang [36] | Physical model | Integrating data-driven models to improve universality | The network is simple, but its performance is poor when dealing with big data |
Huang [8] | DCNN | Multi sensor feature fusion | Manually extracting features while ignoring hidden features of the data itself |
Xu [37] | CNN | Built a more powerful neural network | The original signal has noise, which affects the prediction speed and accuracy |
Liang [38] | SVM | Integration with data-driven models, mining more features | The model has no universality |
He [39] | BPNN | Designed a new SSAE model to learn more valuable and deeper features from the original signal | Only one monitoring signal was used, without considering predictive stability |
Duan [40] | SVR | Integrating MS-SPCANet for autonomous feature extraction | Principal component analysis, difficult to mine hidden features in data |
Li [41] | Physical model | Integrating the parameters of empirical equations to improve the interpretability of modeling | The time required for analysis is long, and the resulting model is not universally applicable |
Signal | Select or Not | Pearson | Spearman |
---|---|---|---|
Fx | yes | 0.9716 | 0.9937 |
Fy | yes | 0.9293 | 0.9541 |
Fz | yes | 0.9750 | 0.9182 |
Vx | no | 0.0697 | 0.0583 |
Vy | no | 0.0604 | 0.0845 |
Vz | no | 0.0603 | 0.1054 |
AE | yes | 0.5707 | 0.4892 |
Variable | Description | Value |
---|---|---|
Epoch | Training rounds | 500 |
Batch size | Batch size | 24 |
Learning rate | Learning rate | 0.001 |
Step size | Interval of learning rate decline | 1000 |
Gamma | Adjustment multiple of learning rate | 1 |
Dropout rate | Dropout rate | 0.3 |
Method | C1 | C4 | C6 | ||||||
---|---|---|---|---|---|---|---|---|---|
RMSE | MAE | R2 | RMSE | MAE | R2 | RMSE | MAE | R2 | |
Developed model | 11.2946 | 9.5785 | 0.95364 | 18.3126 | 14.0382 | 0.77384 | 8.6167 | 6.7801 | 0.92771 |
Developed model * | 8.2968 | 6.7914 | 0.96468 | 12.8521 | 9.9263 | 0.88154 | 7.6667 | 5.9884 | 0.95794 |
Method | RMSE | MAE |
---|---|---|
SVR | 31.5 | 24.9 |
GRU | 36.3615 | 31.422 |
B-LSTM | 33.859 | 28.9897 |
B-BiLSTM | 26.4284 | 21.1652 |
1DCNN-BiLSTM | 12.396 | 10.9944 |
2DCNN | 15.3604 | 11.4455 |
Developed model | 7.6667 | 5.9884 |
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He, Z.; Liu, Y.; Pang, X.; Zhang, Q. Wear Prediction of Tool Based on Modal Decomposition and MCNN-BiLSTM. Processes 2023, 11, 2988. https://doi.org/10.3390/pr11102988
He Z, Liu Y, Pang X, Zhang Q. Wear Prediction of Tool Based on Modal Decomposition and MCNN-BiLSTM. Processes. 2023; 11(10):2988. https://doi.org/10.3390/pr11102988
Chicago/Turabian StyleHe, Zengpeng, Yefeng Liu, Xinfu Pang, and Qichun Zhang. 2023. "Wear Prediction of Tool Based on Modal Decomposition and MCNN-BiLSTM" Processes 11, no. 10: 2988. https://doi.org/10.3390/pr11102988
APA StyleHe, Z., Liu, Y., Pang, X., & Zhang, Q. (2023). Wear Prediction of Tool Based on Modal Decomposition and MCNN-BiLSTM. Processes, 11(10), 2988. https://doi.org/10.3390/pr11102988