一种新的基于挖掘设备识别的地下网络监控系统

R. Xu, Jianzhong Wang, Tianlei Wang, Jiuwen Cao, H. Zeng
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引用次数: 0

摘要

本文提出了一种保护城市地下管线免受开挖设备外部破坏的智能网络监控系统。在每个监测点,实现了麦克风阵列的实时声学采集,并嵌入了智能挖掘设备识别算法。针对整个城市,设计了基于多监测点融合的监控平台。提出了一种新的统计特征提取方法,从采集到的声信号中挖掘有用的、有代表性的信息。然后,利用流行的极限学习机(ELM)和正则化极限学习机(RELM)训练的人工神经网络对各监测点的开挖设备进行识别。为了证明该系统的有效性,本文进行了实验。研究了四种最具破坏性设备的识别性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A novel excavation device recognition based underground network surveilliance system
In this paper, we propose an intelligent network surveillance system to protect the urban underground pipelines from external damages caused by excavation devices. At each monitoring site, a microphone array is implemented for real-time acoustic collection and an intelligent excavation device recognition algorithm is embedded. A surveillance platform built on the fusion of multi monitoring sites is designed for a whole city. A novel statistical feature extraction method is first developed to mining the useful and representative information for the collected acoustic signals. Then, an artificial neural network trained by the popular extreme learning machine (ELM) and the regularized ELM (RELM) is used to perform the recognition of excavation devices in each monitoring site. To show the efficiency of the proposed system, experiments are conducted in this paper. Recognition performance on four most destructive devices is studied.
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