Serbian Journal of Electrical Engineering (Jan 2011)

Applications of predictive maintenance techniques in industrial systems

  • Marjanović Aleksandra,
  • Kvaščev Goran,
  • Tadić Predrag,
  • Đurović Željko

DOI
https://doi.org/10.2298/SJEE1103263M
Journal volume & issue
Vol. 8, no. 3
pp. 263 – 279

Abstract

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Prognostic methods represent a new methodology for system maintenance which offers significant time and cost savings. The paper offers a short overview of the available prognosis techniques and proposes the implementation of one model-based and one data-driven method. As a representative of the model-based methods the autoregressive moving average (ARMA) modeling approach is chosen. The estimated model parameters are further used for implementing the early change detector which is realized as a Neyman-Pearson hypothesis test. On the other hand, hidden Markov model (HMM) based prognosis illustrates the use of data-driven techniques. Using the cross-correlation input-output functions, HMM prognosis algorithm is proposed, as a suitable way of timely detection. Both techniques were implemented to detect performance changes of the water level sensor in a steam separator system in thermal power plants.

Keywords