基于神经网络的多分类器周界事件识别

Hu Yan, Lixin Li, Fangchun Di, Jin Hua, Qiqiang Sun
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引用次数: 5

摘要

识别周边事件可以实现更智能的周边安全系统。本文提出了一种多分类器。支持向量机(SVM)和人工神经网络(ANN)是构建分类器的底层。顶层考虑时间演化特征,采用投票机制识别入侵;此外,为了提高分类器的自适应能力,还引入了增量学习模块。该分类器已成功应用于油气管道入侵检测系统中。实际结果表明,该方法对滋扰事件和入侵事件的识别率高达94.86%,对7种入侵事件的识别率为95.29%,完全满足实际应用需求。
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ANN-based Multi Classifier for Identification of Perimeter Events
Identification of perimeter events enables smarter perimeter security systems. This paper presents a multi classifier. Support Vector Machine (SVM) and Artificial Neural Network (ANN) are the bottom to build the classifier. The top level employs voting mechanism to identify intrusions, taking time evolution characters into account. In addition, to make the classifier be more self-adaptive, an incremental learning module is introduced. The proposed classifier has been successfully applied to oil and gas pipeline intrusion detection systems. Practical results show that it can distinguish nuisance events from intrusion events at a high rate of 94.86% and for seven kinds of intrusions, the recognition rate is 95.29%, fully satisfies the real application requirement.
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