Go top
Conference paper information

Anomaly detection of a cooling water pump of a power plant based on its virtual digital twin constructed with deep learning techniques

M.A. Sanz-Bobi, S. Orbach, F.J. Bellido-López, A. Muñoz, D. González-Calvo, T. Álvarez Tejedor

8th European Conference of the Prognostics and Health Management Society - PHME24, Prague (Czech Republic). 03-05 July 2024


Summary:

This paper aims to explore the use of recent approaches of deep learning techniques for anomaly detection of potential failure modes in a cooling water pump working in a gas-combined cycle in a power plant. Two different deep learning techniques have been tested: neural networks and reinforcement learning. Two virtual digital twins were developed with each family of deep learning techniques, able to simulate the behavior of the cooling water pump in the absence of pump failure modes. Each virtual digital twin consists of several models for predicting the expected evolution of significant behavior variables when no anomalies exist. Examples of these variables are bearing temperatures or vibrations in different pump locations. All the data used comes from the SCADA system. The main features and hyperparameters in the virtual digital twins are presented, and demonstration examples are included.


Keywords: Deep learning, reinforcement learning, anomaly detection, digital twin


DOI: DOI icon https://doi.org/10.36001/phme.2024.v8i1.4004

Published in PHME 2024, vol: Vol 8, N.1, pp: 187-195, ISBN: 978-1-936263-40-0

Publication date: 2024-06-27.



Citation:
M.A. Sanz-Bobi, S. Orbach, F.J. Bellido-López, A. Muñoz, D. González-Calvo, T. Álvarez Tejedor, Anomaly detection of a cooling water pump of a power plant based on its virtual digital twin constructed with deep learning techniques, 8th European Conference of the Prognostics and Health Management Society - PHME24, Prague (Czech Republic). 03-05 July 2024. In: PHME 2024: Proceedings of the 8th European Conference of the Prognostics and Health Management Society 2024, vol. Vol 8, N.1, ISBN: 978-1-936263-40-0


    Research topics:
  • Smart industry: life cycle analysis and asset management
  • Smart industry: maintenance, reliability and diagnosis with self and deep learning techniques
  • Smart industry: artificial agent design using deep reinforcement learning
  • Smart industry: application of deep learning techniques to industrial processes
  • Energy data analytics
  • Data analytics

Request Request the document to be emailed to you.