Using Vehicle Interior Noise Classification for Monitoring Urban Rail Transit Infrastructure
Abstract
:1. Introduction
- A smartphone-based onboard data collection framework for vehicle interior noise and dynamic responses of the car body was established.
- The theory of Shannon entropy was considered when selecting the optimal window size for segmenting the multi-source time-series signals.
- A multi-classification model for subway vehicle interior noise was established based on the XGBoost algorithm. The generation of a set of 45 features and performing feature selection based on different methods were also included.
- Case studies were conducted to extend the application scenario for the analysis of abnormal noise causes and evaluating the effect of rail grinding.
2. Research Methodology
3. Data Collection and Description
4. Model Approach
4.1. Data Segmentation and Time Window
4.2. Data Balance Using the Synthetic Minority Oversampling Technique (SMOTE)
4.3. Features
4.4. Feature Selection Based on IG
4.5. Multi-Classification Model for Vehicle Interior Noise Based on XGBoost
5. Results and Discussions
5.1. Optimal Time Window Size and Data Balance
5.2. Feature Selection Based on the Importance Score
5.3. Comparisons with Other Methods
5.4. Case Studies to Extend the Model Application Scenarios
6. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Category | Feature | Definition | |
---|---|---|---|
Time-domain | f1 | Segment energy | |
f2 | Root mean square (RMS) of the segment | ||
f3 | Zero cross rate | ||
Frequency-domain | f4 | Spectral centroid | |
f5 | Spectral bandwidth | [29] | |
f6 | Spectral roll-off | ||
f7 | Spectral bandwidth to energy ratio | ||
f8 | Spectral entropy | ||
f9 | Energy to spectral entropy ratio | ||
f10–f21 | First 12 MFCCs | ||
f22–f33 | First-order derivatives of f10–f21 | ||
f34–f45 | Second-order derivatives of f10–f21 |
The Model Trained with Unbalanced Data | The Model Trained with Balanced Training Data | ||||||
---|---|---|---|---|---|---|---|
Classes | Precision | Recall | F1 score | Precision | Recall | F1 score | Support |
Other noises | 0.94 | 0.94 | 0.94 | 0.87 | 0.95 | 0.91 | 3671 |
Broadcast | 0.96 | 0.98 | 0.97 | 0.98 | 0.92 | 0.95 | 11,274 |
Squeal | 0.95 | 0.97 | 0.96 | 0.86 | 1.00 | 0.92 | 444 |
Rumble | 0.95 | 0.89 | 0.92 | 0.82 | 0.97 | 0.89 | 466 |
Beep | 0.95 | 0.73 | 0.83 | 0.70 | 0.87 | 0.78 | 834 |
Classifier | Accuracy | Precision | Running Time (s) | |
---|---|---|---|---|
XGBoost | 0.923 | 0.96 | 0.95 | 15.06 |
K-nearest Neighbours | 0.704 | 0.84 | 0.72 | 2.51 |
Decision Trees | 0.851 | 0.91 | 0.92 | 3.12 |
Random Forest | 0.923 | 0.96 | 0.94 | 77.88 |
Gradient Boost | 0.925 | 0.96 | 0.94 | 340.31 |
AdaBoost | 0.651 | 0.77 | 0.64 | 67.70 |
ANN | 0.880 | 0.93 | 0.94 | 173.22 |
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Wang, Y.; Wang, P.; Wang, Q.; Chen, Z.; He, Q. Using Vehicle Interior Noise Classification for Monitoring Urban Rail Transit Infrastructure. Sensors 2020, 20, 1112. https://doi.org/10.3390/s20041112
Wang Y, Wang P, Wang Q, Chen Z, He Q. Using Vehicle Interior Noise Classification for Monitoring Urban Rail Transit Infrastructure. Sensors. 2020; 20(4):1112. https://doi.org/10.3390/s20041112
Chicago/Turabian StyleWang, Yifeng, Ping Wang, Qihang Wang, Zhengxing Chen, and Qing He. 2020. "Using Vehicle Interior Noise Classification for Monitoring Urban Rail Transit Infrastructure" Sensors 20, no. 4: 1112. https://doi.org/10.3390/s20041112
APA StyleWang, Y., Wang, P., Wang, Q., Chen, Z., & He, Q. (2020). Using Vehicle Interior Noise Classification for Monitoring Urban Rail Transit Infrastructure. Sensors, 20(4), 1112. https://doi.org/10.3390/s20041112