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Real-time Distributed Fiber Optic Sensor for Security Systems: Performance, Event Classification and Nuisance Mitigation

机译:用于安全系统的实时分布式光纤传感器:性能,事件分类和缓解干扰

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摘要

The success of any perimeter intrusion detection system depends on three important performance parameters: the probability of detection (POD), the nuisance alarm rate (NAR), and the false alarm rate (FAR). The most fundamental parameter, POD, is normally related to a number of factors such as the event of interest, the sensitivity of the sensor, the installation quality of the system, and the reliability of the sensing equipment. The suppression of nuisance alarms without degrading sensitivity in fiber optic intrusion detection systems is key to maintaining acceptable performance. Signal processing algorithms that maintain the POD and eliminate nuisance alarms are crucial for achieving this. In this paper, a robust event classification system using supervised neural networks together with a level crossings (LCs) based feature extraction algorithm is presented for the detection and recognition of intrusion and non-intrusion events in a fence-based fiber-optic intrusion detection system. A level crossings algorithm is also used with a dynamic threshold to suppress torrential rain-induced nuisance alarms in a fence system. Results show that rain-induced nuisance alarms can be suppressed for rainfall rates in excess of 100 mm/hr with the simultaneous detection of intrusion events. The use of a level crossing based detection and novel classification algorithm is also presented for a buried pipeline fiber optic intrusion detection system for the suppression of nuisance events and discrimination of intrusion events. The sensor employed for both types of systems is a distributed bidirectional fiber-optic Mach-Zehnder (MZ) interferometer.
机译:任何外围入侵检测系统的成功都取决于三个重要的性能参数:检测概率(POD),有害警报率(NAR)和错误警报率(FAR)。最基本的参数POD通常与许多因素有关,例如感兴趣的事件,传感器的灵敏度,系统的安装质量以及传感设备的可靠性。在光纤入侵检测系统中抑制干扰警报而不降低灵敏度是保持可接受性能的关键。维持POD并消除有害警报的信号处理算法对于实现这一点至关重要。本文提出了一种基于监督神经网络的鲁棒事件分类系统,并结合基于水平交叉点(LC)的特征提取算法,对基于围栏的光纤入侵检测系统中的入侵和非入侵事件进行检测和识别。 。平交道口算法还与动态阈值一起使用,以抑制栅栏系统中暴雨引起的令人讨厌的警报。结果表明,在同时检测到入侵事件的情况下,降雨率超过100 mm / hr时,可以抑制降雨引起的滋扰警报。还提出了一种基于水平交叉点的检测和新颖的分类算法,用于掩埋管道光纤入侵检测系统,用于抑制令人讨厌的事件和识别入侵事件。两种类型的系统都采用的传感器是分布式双向马赫曾德尔(MZ)干涉仪。

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