Abstract

A novel pattern recognition method based on Empirical Mode Decomposition (EMD) and extreme gradient boosting (XGBoost) is proposed to recognize the disturbance events in phase sensitive optical time-domain reflectometer ( $\varphi $ -OTDR) to reduce nuisance alarm rate (NAR) and improve real-time performance in this paper. Eleven typical eigenvectors are extracted from components obtained by EMD of the disturbance signals and XGBoost is selected as a classifier to identify different type of disturbance signals. Five kinds of disturbance events, including watering, knocking, climbing, pressing and false disturbance event, can be identified, effectively. Experimental results show that NAR is 4.10% and identification time is 0.093 s. The recognition accuracy for the five patterns is 97.96%, 95.90%, 91.10%, 94.84% and 99.69%, respectively. The effectiveness of the proposed method is evaluated by using confusion matrix and decision boundary visualization. Experimental results demonstrate that our proposed pattern recognition method based on XGBoost has better performance in recognition rate and recognition time than other commonly used methods, such as support vector machine (SVM), Gradient Boosting Decision Tree (GBDT), Random Forest (RF) and Adaptive Boosting (Adaboost).

Highlights

  • Fiber-optic distributed disturbance sensors based on phase-sensitive optical time-domain reflectometer (φ-OTDR) have drawn intensive attention due to their low loss, simple structure, chemical stability, anti-electromagnetic interference

  • PARRERN RECOGNITION BASED ON XGBoost ALGORITHM In this paper, we propose a pattern recognition method with the combination of Empirical Mode Decomposition (EMD) and XGBoost in φ-OTDR

  • DETERMINATION OF IMFS FOR FEATURE EXTRACTION In order to improve the accuracy of recognition and reduce nuisance alarm rate (NAR), it is necessary to determine the number of decomposition layers of EMD

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Summary

INTRODUCTION

Fiber-optic distributed disturbance sensors based on phase-sensitive optical time-domain reflectometer (φ-OTDR) have drawn intensive attention due to their low loss, simple structure, chemical stability, anti-electromagnetic interference. The monitoring system adopt a combined structure of φ-OTDR and fiber-optic interferometers i.e. Mach-Zehnder Interference [11] or Michelson Interferometers [12] These schemes can efficiently reduce NAR, but hardware structure become more complicated and the system cost increases significantly. Another is to select and optimize pattern recognition methods to improve the recognition accuracy of disturbance events. It is still a challenge to find the optimal features and high-performance classifier to further improve the identification rate and reduce the identification time. We propose a novel pattern recognition method based on the combination of EMD energy analysis and XGBoost algorithm to reduce NAR and shorten recognition time of disturbance events in φ-OTDR.

PARRERN RECOGNITION BASED ON XG
EMPIRICIAL MODE DECOMPOSITION
EXTREME GRADIENT BOOSTING
THE CLASSIFIER PERFORMANCE
CONCLUSION
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