Machine learning methods for identification and classification of events in ϕ-OTDR systems: a review

Author:

Kandamali Deus F.123,Cao Xiaomin12,Tian Manling12,Jin Zhiyan12,Dong Hui4,Yu Kuanglu12ORCID

Affiliation:

1. Beijing Jiaotong University

2. Beijing Key Laboratory of Advanced Information Science and Network Technology

3. Sokoine University of Agriculture

4. A*Star Research Entities

Abstract

The phase sensitive optical time-domain reflectometer ( φ -OTDR), or in some applications called distributed acoustic sensing (DAS), has been a popularly used technology for long-distance monitoring of vibrational signals in recent years. Since φ -OTDR systems usually operate in complicated and dynamic environments, there have been multiple intrusion event signals and also numerous noise interferences, which have been a major stumbling block toward the system’s efficiency and effectiveness. Many studies have proposed different techniques to mitigate this problem mainly in φ -OTDR setup upgrades and improvements in data processing techniques. Most recently, machine learning methods for event classifications in order to help identify and categorize intrusion events have become the heated spot. In this paper, we provide a review of recent technologies from conventional machine learning algorithms to deep neural networks for event classifications aimed at increasing the recognition/classification accuracy and reducing nuisance alarm rates (NARs) in φ -OTDR systems. We present a comparative analysis of the current classification methods and then evaluate their performance in terms of classification accuracy, NAR, precision, recall, identification time, and other parameters.

Funder

Fundamental Research Funds for the Central Universities

National Natural Science Foundation of China

Outstanding Chinese and Foreign Youth Exchange Program of China Association of Science and Technology

National Research Foundation Singapore

Publisher

Optica Publishing Group

Subject

Atomic and Molecular Physics, and Optics,Engineering (miscellaneous),Electrical and Electronic Engineering

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