Affiliation:
1. Department of Electrical and Electronics Engineering, Pusan National University, Busan 46241, Republic of Korea
Abstract
Accurate and timely fault detection and isolation (FDI) improve the availability, safety, and reliability of target systems and enable cost-effective operations. In this study, a shared nearest neighbor (SNN)-based method is proposed to identify the fault variables of a circulating fluidized bed boiler. SNN is a derivative method of the k-nearest neighbor (kNN), which utilizes shared neighbor information. The distance information between these neighbors can be applied to FDI. In particular, the proposed method can effectively detect faults by weighing the distance values based on the number of neighbors they share, thereby readjusting the distance values based on the shared neighbors. Moreover, the data distribution is not constrained; therefore, it can be applied to various processes. Unlike principal component analysis and independent component analysis, which are widely used to identify fault variables, the main advantage of SNN is that it does not suffer from smearing effects, because it calculates the contributions from the original input space. The proposed method is applied to two case studies and to the failure case of a real circulating fluidized bed boiler to confirm its effectiveness. The results show that the proposed method can detect faults earlier (1 h 39 min 46 s) and identify fault variables more effectively than conventional methods.
Funder
National Research Foundation Korea
Korea government
Subject
Process Chemistry and Technology,Chemical Engineering (miscellaneous),Bioengineering
Reference34 articles.
1. Nearest neighbor difference rule–based kernel principal component analysis for fault detection in semiconductor manufacturing processes;Zhang;J. Chemom.,2017
2. Fault detection of multimode process based on local neighbor normalized matrix;Guo;Chemom. Intell. Lab. Syst.,2016
3. Two-dimensional Bayesian monitoring method for nonlinear multimode processes;Ge;Chem. Eng. Sci.,2011
4. A nonlinear kernel Gaussian mixture model based inferential monitoring approach for fault detection and diagnosis of chemical processes;Jie;Chem. Eng. Sci.,2012
5. Yu, J., Jang, J., Yoo, J., Park, J.H., and Kim, S. (2016, January 3–6). Leakage detection of steam boiler tube in thermal power plant using principal component analysis. Proceedings of the Annual Conference of the PHM Society 2016, Denver, CO, USA.