Title :
Multi-State Adaptive BIT False Alarm Reduction Under Degradation Process
Author :
Yiqian Cui ; Junyou Shi ; Zili Wang
Author_Institution :
Sch. of Reliability & Syst. Eng., Beihang Univ., Beijing, China
Abstract :
Built-in tests (BITs) are widely used in mechanical systems to detect and diagnose a fault, whereas the BIT false alarms bring much trouble for precise fault diagnosis and logistics/maintenance arrangement. The false alarm phenomenon is related to the degradation over time, and the false alarm evolution process can be typically divided into three stages. This paper proposes a condition-based multistage false alarm detection and reduction method for mechanical systems. The stages are clarified according to the degradation level and the false alarm severity. The dividing boundaries of the stages are optimized using soft margin one-versus-rest support vector machine (SVM) classifiers. The associated intermediate stage is the intense period of false alarms, and the dynamic Bayesian network inference model is developed to satisfy the requirements of accurate false alarm diagnosis. To achieve the goal of false alarm suppression, the top-level BIT outputs are updated with the original BIT alarms and the identified probable states. Finally, the proposed approach is demonstrated in the application study of a milling machine and the well-round experimental results are analyzed.
Keywords :
belief networks; built-in self test; condition monitoring; fault diagnosis; inference mechanisms; logistics; maintenance engineering; milling machines; pattern classification; production engineering computing; support vector machines; built-in test; condition-based multistage false alarm detection and reduction method; degradation process; dynamic Bayesian network inference model; false alarm diagnosis; false alarm evolution process; false alarm suppression; fault diagnosis; logistics arrangement; maintenance arrangement; mechanical systems; milling machine; multistate adaptive BIT false alarm reduction; soft margin one-versus-rest SVM classifier; support vector machine; Degradation; Hidden Markov models; Mechanical systems; Monitoring; Noise; Stress; Support vector machines; Built-in test (BIT); dynamic Bayesian network (DBN); false alarm; mechanical system; support vector machine (SVM);
Journal_Title :
Instrumentation and Measurement, IEEE Transactions on
DOI :
10.1109/TIM.2014.2349212