A hybrid multiple sensor fault detection, diagnosis and reconstruction algorithm for chiller plants

K. F. Fong*, C. K. Lee, M. K. H. Leung, Y. J. Sun, Guangya Zhu, Seung Hyo Baek, X. J. Luo, Tim Ka Kui Lo, Hetty Sin Ying Leung

*Corresponding author for this work

Research output: Journal Publications and ReviewsRGC 21 - Publication in refereed journalpeer-review

Abstract

In a chiller plant, primary or critical sensors are used to control the system operation while secondary sensors are installed to monitor the performance/health of individual equipment. Current sensor fault detection and diagnosis (SFDD) approaches are not applicable to secondary sensors which usually are not involved in the system control. Consequently, a hybrid multiple sensor fault detection, diagnosis and reconstruction (HMSFDDR) algorithm for chiller plants was developed. Machine learning and pattern recognition were used to predict the primary sensor faults through the comparison of the weekly performance curves. With the primary sensor signals reconstructed, the secondary sensor faults were estimated based on mass and energy balance. By applying the algorithm with various logged plant data and comparison with site checking results, a maximum of 75% effectiveness could be achieved. The merits of the present approach were further justified through off-site sensor testing which reinforced the usefulness of proposed HMSFDDR algorithm. © 2023 International Building Performance Simulation Association (IBPSA).
Original languageEnglish
Pages (from-to)588-608
JournalJournal of Building Performance Simulation
Volume16
Issue number5
Online published22 Mar 2023
DOIs
Publication statusPublished - 2023

Research Keywords

  • big data analytics
  • chiller plant
  • Fault detection and diagnosis
  • machine learning
  • pattern recognition
  • sensor faults

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