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Journal of Applied Sciences

Year: 2004 | Volume: 4 | Issue: 4 | Page No.: 675-679
DOI: 10.3923/jas.2004.675.679

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Authors


Guangrui Wen


Xining Zhang


Keywords


  • machinery condition prediction
  • recurrent neurla networks model
  • feedforward neural networks model
  • multi step prediction
Research Article

Prediction Method of Machinery Condition Based on Recurrent Neural Networks Models

Guangrui Wen and Xining Zhang
In order to overcome the disadvantage of traditional feedforward neural networks in long-term prediction of machinery condition, a new neural model, so called the multi-step recurrent prediction model based on recurrent neural network is proposed. A learning algorithm of recurrent model for long-term prediction is also presented, which is supposed to obtain better predictions of machinery condition. The feasibility of recurrent neural model is examined by applying it to forecast a simulated time series and predict the behavior of large rotating machinery. Experimental results revealed that the recurrent model could achieve better prediction accuracy and provided cogent proof for realization of prognostic maintenance.
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How to cite this article

Guangrui Wen and Xining Zhang, 2004. Prediction Method of Machinery Condition Based on Recurrent Neural Networks Models. Journal of Applied Sciences, 4: 675-679.

DOI: 10.3923/jas.2004.675.679

URL: https://scialert.net/abstract/?doi=jas.2004.675.679

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