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A $k$ -Nearest Neighbor Algorithm-Based Near Category Support Vector Machine Method for Event Identification of $arphi$

机译:a $ k $ -nearest邻居算法 - 基于近的附近类别支持向量机方法<内联的事件识别 - 公式> $ varphi $

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摘要

In order to reduce the nuisance alarm rate (NAR) for the phase-sensitive optical time-domain reflectometer (phi-OTDR), we propose an event identification method based on the near category support vector machines (NC-SVM), which extends the current binary SVM classifier to multi-class problems by using k-nearest neighbor (kNN) algorithm. Five kinds of disturbance events, including watering, climbing, knocking, pressing, and false disturbance event, can be effectively identified for 25.05 km long phi-OTUR system. The experimental results demonstrate that the average identification rate of five disturbance events exceeds 94%, the identification time is 0.55s, and the NAR is 5.62%. Compared with the one against one multi-class SVM classifier, our proposed method has the distinguished advantage of higher identification rate, shorter identification time, and lower NAR.
机译:为了减少相位敏感光学时域反射计(PHI-OTDR)的滋扰报警速率(NAR),我们提出了一种基于近似类别支持向量机(NC-SVM)的事件识别方法,其延伸使用k最近邻(knn)算法,当前二进制SVM分类器到多级问题。可以有效地识别出五种扰动事件,包括喷水,攀爬,敲击,压和假干扰事件,可有效地识别25.05公里的PHI-OTUR系统。实验结果表明,五种扰动事件的平均识别率超过94%,鉴定时间为0.55秒,NAR为5.62%。与对一个多级SVM分类器的一个相比,我们所提出的方法具有更高的识别率,识别时间和更低的NAR的特异性优势。

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