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首页> 外文期刊>International journal of cognitive informatics and natural intelligence >Event Detection and Classification for Fiber Optic Perimeter Intrusion Detection System
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Event Detection and Classification for Fiber Optic Perimeter Intrusion Detection System

机译:光纤周边入侵检测系统事件检测与分类

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摘要

A perimeter intrusion detection system (PIDS) is critical for the security of a shale gas field. Among many technologies, the fiber optic sensor-based method is the most widely used, due to its passive, low-cost, long-life, and strong anti-interference ability and strong environmental adaptability. This article proposes an event detection and classification method for a fiber optic PIDS. In general, three types of features are extracted for an improved double-threshold method to improve the probability of detection. Also, the detected intrusion events are distinguished by a support vector machine with wavelet features to reduce the nuisance alarm rate. Experiments on the PIDS in Chongqing Fuling's shale gas field show that detection algorithms based on the feature of short-time energy and short-time wavelet coefficient energy are much better, and the performance of event classification is satisfactory.
机译:周边入侵检测系统(PID)对于页岩气田的安全性至关重要。在许多技术中,基于光纤传感器的方法是最广泛使用的,由于其被动,低成本,长寿命和强烈的抗干扰能力和强烈的环境适应性。本文提出了用于光纤PID的事件检测和分类方法。通常,提取三种类型的特征以提高改进的双阈值方法以改善检测的概率。而且,检测到的入侵事件通过具有小波特征的支持向量机来区分,以降低滋扰报警速率。重庆涪陵页岩气田PID的实验表明,基于短时能量和短时小波系数能量的检测算法好得多,事件分类的性能令人满意。

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