Submitted:
21 May 2025
Posted:
27 May 2025
You are already at the latest version
Abstract
Keywords:
1. Introduction
2. State of Polarization (SOP) as a Sensing Mechanism
3. Eavesdropping
4. Simultaneous Events
5. State-of-Polarization-Based Vibration Monitoring Architecture
5.1. Vibration Emulation and State-of-Polarization Sensing Setup
6. Machine Learning Model Architecture
6.1. Machine Learning Classifiers
6.2. Evaluation Metrics
6.2.1. Confusion Matrix
6.2.2. Accuracy
6.2.3. Precision
6.2.4. Recall
6.2.5. F-1-Score
7. Performance Analysis of Machine Learning Model
7.1. Performance Evaluation of Model Classification Scores
7.2. Performance Evaluation of ML Models using Weighted Metrics
8. Conclusion
Author Contributions
Funding
Institutional Review Board Statement
Acknowledgments
Conflicts of Interest
Abbreviations
| SOP | State of Polarization |
| SOPAS | State of Polarization Angular Speed |
| ML | Machine Learning |
| OTDR | Optical Time-Domain Reflectometer |
| DAS | Distributed Acoustic Sensing |
| DOP | Degree of Polarization |
| OFI | Optical Fiber Identification |
| SMF | Single Mode Fiber |
| LSTM | Long Short-Term Memory |
| BiGRU | Bidirectional Gated Recurrent Unit |
| DCM | Data Clustering Module |
| SNR | Signal to Noise Ratio |
| PCB | Printed Circuit Board |
| XGBoost | Extreme Gradient Boosting |
| kNN | k-Nearest Neighbor |
| RF | Random Forest |
| WPM | Weighted Performance Metric |
| TP | True Positive |
| TN | True Negative |
| FP | False Positive |
| FN | False Negative |
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| Event Type | Severity Level | Description |
|---|---|---|
| No event | None | Normal operations with no impact on fiber integrity |
| Shaking (1Hz) | Low | Ambient noise due to environmental activities |
| Shaking (3Hz) | Moderate | Minor disturbances caused by nearby environment |
| Shaking (5Hz) | High | Sustained mechanical stress |
| Shaking (10Hz) | Critical | Critical intrusion |
| Predicted Positive | Predicted Negative | |
|---|---|---|
| Actual Positive | TP | FN |
| Actual Negative | FP | TN |
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