A Fault Detection Mechanism of Tunnel based on Artificial Neural

نویسندگان

  • Liu Liu
  • Ma Chengqian
چکیده

This paper has made a qualitative and quantitative analysis by establishing the tunnel fault tree and giving the minimal cut sets of the faults in tunnel, and tested the data in tunnel combined with artificial neural network. The fault detection mechanism in this article has been simulated by MatLab and processed a lot of the actual data through the tunnel operating history. Experimental results show that: This fault detection mechanism is effective.

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تاریخ انتشار 2014