Title :
Data-driven diagnosing for unanticipated fault by a general process model
Author :
Jiongqi Wang ; Dayi Wang ; Zhangming He ; Haiyin Zhou
Author_Institution :
Dept. of Math. & Syst. Sci., Nat. Univ. of Defense Technol., Changsha, China
Abstract :
The improvement of unanticipated fault detection and diagnosis (UFDD) capability is a difficult point, and is also a tendency for research and application. In this paper, a general process model (GPM) for unanticipated fault diagnosis is established. And combined with the characteristics of monitoring data, the corresponding diagnosis methods are researched. The model and the methods are used for online unanticipated fault detection, isolation and recognition. The GPM for the unanticipated fault diagnosis is designed, by adopting a three-layer progressive structure, which is comprised of an inherent detection layer (IDL), an unanticipated isolation layer (UIL) and an unanticipated recognition layer (URL). Several key problems in the GPM are analyzed, including the establishment and evaluation of detection statistics, the extraction of fault feature direction, and the design of fault isolation criterion and the calculation of contribution factor. The proposed model and methods are driven by pure data and they can detect and diagnose the unanticipated fault. The proposed approach is evaluated by using an example of a satellite´s attitude control system, and excellent results have been obtained.
Keywords :
fault diagnosis; feature extraction; reliability theory; GPM; IDL; UFDD capability; UIL; URL; contribution factor calculation; data-driven diagnosing; detection statistics; fault feature direction extraction; fault isolation criterion design; general process model; inherent detection layer; online unanticipated fault detection; online unanticipated fault isolation; online unanticipated fault recognition; satellite attitude control system; three-layer progressive structure; unanticipated fault detection and diagnosis capability; unanticipated isolation layer; unanticipated recognition layer; Attitude control; Data models; Fault detection; Fault diagnosis; Mathematical model; Monitoring; Testing; Unanticipated fault; data-driven design; detection and diagnosis; general process model; system identification;
Conference_Titel :
Chinese Automation Congress (CAC), 2013
Conference_Location :
Changsha
Print_ISBN :
978-1-4799-0332-0
DOI :
10.1109/CAC.2013.6775778