Summary
In building automation system, timely detecting the operational faults in water chillers is crucial to system operation management. As a linear data transformation technique, the performance of principal component analysis (PCA) based chiller fault detection method is limited, especially for the incipient ones, due to the nonlinearities in chillers. In addition, the control limit for the monitoring statistic, such as squared prediction error (SPE), is determined under the Gaussian assumption of the score variables, which can hardly be satisfied in water chillers. Therefore, an enhanced fault detection method with the application of kernel density estimation (KDE) and kernel entropy component analysis (KECA) algorithm is reported in this paper. Cauchy-Schwarz (CS) divergence was evaluated as monitoring statistic to measure the cosine of the angle between two data sets after being projected onto a dominated subspace, and then adopted as an index for dissimilarity. KDE with its bandwidth being optimized was also applied to estimate the distribution of the CS divergence, so that the control limit for fault monitoring could be determined. The proposed KDE based KECA-CS method was validated using the experimental data from ASHRAE RP-1043, and further compared to the PCA -SPE, kernel principal component analysis (KPCA)-SPE, and KECA-SPE methods. Results showed that the best performance could be realized when using the KDE based KECA-CS method. The reported fault detection ratio was over 68% for the seven typical chiller faults even at their corresponding least severity level. The average fault detection accuracy was over 90%.
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Details
- Original title: An enhanced fault detection method for centrifugal chillers using kernel density estimation based kernel entropy component analysis.
- Record ID : 30028719
- Languages: English
- Subject: Technology
- Source: International Journal of Refrigeration - Revue Internationale du Froid - vol. 129
- Publication date: 2021/09
- DOI: http://dx.doi.org/10.1016/j.ijrefrig.2021.04.019
- Document available for consultation in the library of the IIR headquarters only.
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Indexing
- Themes: Chillers
- Keywords: Failure; Detection; Optimization; Modelling; Water chiller
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A simplified physical model-based fault detecti...
- Author(s) : ZHAO Y., WANG S., XIAO F., et al.
- Date : 2013/04
- Languages : English
- Source: HVAC&R Research - vol. 19 - n. 3
View record
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A fault detection and diagnosis strategy with e...
- Author(s) : XIAO F., ZHENG C. Y., WANG S. W.
- Date : 2011/12
- Languages : English
- Source: Applied Thermal Engineering - vol. 31 - n. 17-18
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A model-based online fault detection and diagno...
- Author(s) : CUI J., WANG S.
- Date : 2005/10
- Languages : English
- Source: International Journal of thermal Sciences - vol. 44 - n. 10
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Parallel deep neural network for scalable coupl...
- Author(s) : CHEN S., LIU Z., CHEN K., ZHU X., JIN X., DU Z.
- Date : 2023/08/21
- Languages : English
- Source: Proceedings of the 26th IIR International Congress of Refrigeration: Paris , France, August 21-25, 2023.
- Formats : PDF
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Study on the support vector data description (S...
- Author(s) : LI G., HU Y., CHEN H., et al.
- Date : 2015/08/16
- Languages : English
- Source: Proceedings of the 24th IIR International Congress of Refrigeration: Yokohama, Japan, August 16-22, 2015.
- Formats : PDF
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