Detection of Abnormal Signals in Gas Pipes Using Neural Networks

  • Min, Hwang-Ki (School of Electrical Engineering and Computer Science KAIST) ;
  • Park, Cheol-Hoon (School of Electrical Engineering and Computer Science KAIST)
  • Published : 2008.06.18

Abstract

In this paper, we present a real-time system to detect abnormal events on gas pipes, based on the signals which are observed through the audio sensors attached on them. First, features are extracted from these signals so that they are robust to noise and invariant to the distance between a sensor and a spot at which an abnormal event like an attack on the gas pipes occurs. Then, a classifier is constructed to detect abnormal events using neural networks. It is a combination of two neural network models, a Gaussian mixture model and a multi-layer perceptron, for the reduction of miss and false alarms. The former works for miss alarm prevention and the latter for false alarm prevention. The experimental result with real data from the actual gas system shows that the proposed system is effective in detecting the dangerous events in real-time with an accuracy of 92.9%.

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