Development and Application of Deep Belief Networks for Predicting Railway Operation

نویسندگان

  • OLGA FINK
  • ENRICO ZIO
  • ULRICH WEIDMANN
  • Olga Fink
  • Enrico Zio
  • Ulrich Weidmann
چکیده

In this paper, we propose to apply deep belief networks (DBN) to predict potential operational disruptions caused by rail vehicle door systems. DBN are a powerful algorithm that is able to detect and extract complex patterns and features in data and has demonstrated superior performance on several benchmark studies. A case study is shown whereby the DBN are trained and applied on real case study from a railway vehicle fleet. The DBN were shown to outperform a feedforward neural network trained by a genetic algorithm.

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تاریخ انتشار 2014