Publications
2015
Zhao, Yang; Wen, Jin; Wang, Shengwei
Diagnostic Bayesian networks for diagnosing air handling units faults – Part II: Faults in coils and sensors Journal Article
In: Applied Thermal Engineering, vol. 90, pp. 145-157, 2015, ISSN: 1359-4311.
Abstract | Links | BibTeX | Tags: Air handling unit, Bayesian network, Fault detection, Fault diagnosis
@article{ZHAO2015145,
title = {Diagnostic Bayesian networks for diagnosing air handling units faults – Part II: Faults in coils and sensors},
author = {Yang Zhao and Jin Wen and Shengwei Wang},
url = {https://www.sciencedirect.com/science/article/pii/S1359431115006584},
doi = {https://doi.org/10.1016/j.applthermaleng.2015.07.001},
issn = {1359-4311},
year = {2015},
date = {2015-01-01},
journal = {Applied Thermal Engineering},
volume = {90},
pages = {145-157},
abstract = {This is the second part of a study on diagnostic Bayesian networks (DBNs)-based method for diagnosing faults in air handling units (AHUs) in buildings. In this part, 4 DBNs are developed to diagnose faults in heating/cooling coils, sensors and faults in secondary supply chilled water/heating water systems. There are 18 typical faults concerned and 35 fault detectors introduced. The DBNs are developed mainly on the basis of first principles and fault patterns resulted from literature and three AHU fault detection and diagnosis (FDD) projects. Efficient fault detection rules/methods from a comprehensive literature survey are integrated into the DBNs. Also, some new fault detection rules are developed. The 4 DBNs were evaluated using experimental data from ASHRAE Project RP-1312. Results show that the proposed DBNs effectively diagnosed AHU faults.},
keywords = {Air handling unit, Bayesian network, Fault detection, Fault diagnosis},
pubstate = {published},
tppubtype = {article}
}
This is the second part of a study on diagnostic Bayesian networks (DBNs)-based method for diagnosing faults in air handling units (AHUs) in buildings. In this part, 4 DBNs are developed to diagnose faults in heating/cooling coils, sensors and faults in secondary supply chilled water/heating water systems. There are 18 typical faults concerned and 35 fault detectors introduced. The DBNs are developed mainly on the basis of first principles and fault patterns resulted from literature and three AHU fault detection and diagnosis (FDD) projects. Efficient fault detection rules/methods from a comprehensive literature survey are integrated into the DBNs. Also, some new fault detection rules are developed. The 4 DBNs were evaluated using experimental data from ASHRAE Project RP-1312. Results show that the proposed DBNs effectively diagnosed AHU faults.
2014
Xiao, Fu; Zhao, Yang; Wen, Jin; Wang, Shengwei
Bayesian network based FDD strategy for variable air volume terminals Journal Article
In: Automation in Construction, vol. 41, pp. 106-118, 2014, ISSN: 0926-5805.
Abstract | Links | BibTeX | Tags: Bayesian network, Fault detection, Fault diagnosis, VAV terminal
@article{XIAO2014106,
title = {Bayesian network based FDD strategy for variable air volume terminals},
author = {Fu Xiao and Yang Zhao and Jin Wen and Shengwei Wang},
url = {https://www.sciencedirect.com/science/article/pii/S0926580513001878},
doi = {https://doi.org/10.1016/j.autcon.2013.10.019},
issn = {0926-5805},
year = {2014},
date = {2014-01-01},
journal = {Automation in Construction},
volume = {41},
pages = {106-118},
abstract = {This paper presents a diagnostic Bayesian network (DBN) for fault detection and diagnosis (FDD) of variable air volume (VAV) terminals. The structure of the DBN illustrates qualitatively the casual relationships between faults and symptoms. The parameters of the DBN describe quantitatively the probabilistic dependences between faults and evidence. The inputs of the DBN are the evidences which can be obtained from measurements in building management systems (BMSs) and manual tests. The outputs are the probabilities of faults concerned. Two rules are adopted to isolate the fault on the basis of the fault probabilities to improve the robustness of the method. Compared with conventional rule-based FDD methods, the proposed method can work well with uncertain and incomplete information, because the faults are reported with probabilities rather than in the Boolean format. Evaluations are made on a dynamic simulator of a VAV air-conditioning system serving an office space using TRNSYS. The results show that it can correctly diagnose ten typical VAV terminal faults.},
keywords = {Bayesian network, Fault detection, Fault diagnosis, VAV terminal},
pubstate = {published},
tppubtype = {article}
}
This paper presents a diagnostic Bayesian network (DBN) for fault detection and diagnosis (FDD) of variable air volume (VAV) terminals. The structure of the DBN illustrates qualitatively the casual relationships between faults and symptoms. The parameters of the DBN describe quantitatively the probabilistic dependences between faults and evidence. The inputs of the DBN are the evidences which can be obtained from measurements in building management systems (BMSs) and manual tests. The outputs are the probabilities of faults concerned. Two rules are adopted to isolate the fault on the basis of the fault probabilities to improve the robustness of the method. Compared with conventional rule-based FDD methods, the proposed method can work well with uncertain and incomplete information, because the faults are reported with probabilities rather than in the Boolean format. Evaluations are made on a dynamic simulator of a VAV air-conditioning system serving an office space using TRNSYS. The results show that it can correctly diagnose ten typical VAV terminal faults.