Energies (Mar 2022)

Latent-Space Dynamics for Prediction and Fault Detection in Geothermal Power Plant Operations

  • Yingxiang Liu,
  • Wei Ling,
  • Robert Young,
  • Jalal Zia,
  • Trenton T. Cladouhos,
  • Behnam Jafarpour

DOI
https://doi.org/10.3390/en15072555
Journal volume & issue
Vol. 15, no. 7
p. 2555

Abstract

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This paper presents a latent-space dynamic neural network (LSDNN) model for the multi-step-ahead prediction and fault detection of a geothermal power plant’s operation. The model was trained to learn the dynamics of the power generation process from multivariate time-series data and the effects of exogenous variables, such as control adjustment and ambient temperature. In the LSDNN model, an encoder–decoder architecture was designed to capture cross-correlation among different measured variables. In addition, a latent space dynamic structure was proposed to propagate the dynamics in the latent space to enable prediction. The prediction power of the LSDNN was utilized for monitoring a geothermal power plant and detecting abnormal events. The model was integrated with principal component analysis (PCA)-based process monitoring techniques to develop a fault-detection procedure. The performance of the proposed LSDNN model and fault detection approach was demonstrated using field data collected from a geothermal power plant.

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