4.6 Article

Dynamic Calibration Method of Sensor Drift Fault in HVAC System Based on Bayesian Inference

Journal

SENSORS
Volume 22, Issue 14, Pages -

Publisher

MDPI
DOI: 10.3390/s22145348

Keywords

sensor drift fault; Bayesian inference (BI); field dynamic calibration; fault detection; HVAC system

Funding

  1. National Natural Science Foundation of China [51906181]
  2. 2021 year Construction Technology Plan Project of Hubei Province
  3. Excellent Young and Middle-aged Talent in Universities of Hubei Province, China [Q20181110]

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A dynamic calibration method based on Bayesian inference has been developed for sensor drift faults in HVAC systems. The results show that this method effectively improves the calibration accuracy of drift faults with high detection accuracy.
Sensor drift fault calibration is essential to maintain the operation of heating, ventilation and air conditioning systems (HVAC) in buildings. Bayesian inference (BI) is becoming more and more popular as a commonly used sensor fault calibration method. However, this method focused mainly on sensor bias fault, and it could be difficult to calibrate drift fault that changes with time. Therefore, a dynamic calibration method for sensor drift fault of HVAC systems based on BI is developed. Taking the drift fault calibration of the chilled water supply temperature sensor of the chiller as an example, the performance of the proposed dynamic calibration method is evaluated. Results show that the combination of the Exponentially Weighted Moving-Average (EWMA) method with high detection accuracy and the proposed BI dynamic calibration method can effectively improve the calibration accuracy of drift fault, and the Mean Absolute Percentage Error (MAPE) value between the calibrated and normal data is less than 5%.

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