Enhanced Fault Detection in Energy Systems Using Individual Contextual Forgetting Factors in Recursive Principal Component Analysis

Research output: Contribution to journalJournal articleResearchpeer-review

Abstract

Improving maintenance strategies is an important component in reducing wastes of energy in industrial systems and especially energy systems, as they represent a large proportion of our total energy use. The use of fault detection methods can help transition to proactive maintenance methods and automate the detection of faults using data from the systems themselves. However, the presence of normal operational changes must be accounted for to avoid false alarms, as static fault detection methods cannot handle them. A recursive fault detection method, specifically recursive principal component analysis (RPCA), is applied to real building data in this paper to aid in addressing this challenge. Additionally, improvements to the aspect of updating forgetting factors, which are integral to RPCA's functionality, is also proposed which allows for enhanced adaptability. The results show that the improvement increases adaptability when setpoints are changed and provides similar performance otherwise. Lastly, the application of this was shown to significantly reduce false alarms in the building application, while still detecting the known faults.
Original languageEnglish
Article number114851
JournalEnergy and Buildings
Volume324
Number of pages19
ISSN0378-7788
DOIs
Publication statusPublished - 1. Dec 2024

Keywords

  • Fault detection
  • Adaptive methods
  • Building energy systems
  • Recursive principal component analysis
  • Forgetting factor

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