Title :
A Prognostic-Information-Based Order-Replacement Policy for a Non-Repairable Critical System in Service
Author :
Zhao-Qiang Wang ; Wenbin Wang ; Chang-Hua Hu ; Xiao-Sheng Si ; Wei Zhang
Author_Institution :
Dept. of Autom., Hi-Tech Inst. of Xi´an, Xi´an, China
Abstract :
This paper proposes a prognostic-information-based joint order-replacement policy for a non-repairable critical system in service. The primary difference from existing work is to take the online condition monitoring data into consideration during the joint decision-making process. Towards this end, the system´s degradation trajectory is modeled by a Wiener process whose parameters are real-time estimated based on the newly obtained condition monitoring data by utilizing the expectation maximization algorithm and Bayesian inference. By doing so, the remaining useful life distribution of the system of interest can be predicted in real-time, which is then used as the prognostic information to dynamically update the optimal ordering and replacement times jointly. This process makes the jointly obtained order-replacement decisions rely on the prognostic information available from the system´s degradation monitoring. Finally, a practical case study of the inertial navigation system in aircraft is provided to validate the proposed joint decision policy.
Keywords :
Bayes methods; aircraft navigation; condition monitoring; decision making; expectation-maximisation algorithm; inertial navigation; inference mechanisms; mechanical engineering computing; remaining life assessment; stochastic processes; Bayesian inference; Wiener process; aircraft; expectation maximization algorithm; inertial navigation system; joint decision-making process; nonrepairable critical system; online condition monitoring data; optimal ordering times; optimal replacement times; order-replacement decisions; prognostic-information-based joint order-replacement policy; remaining useful life distribution; system degradation trajectory; Condition monitoring; Decision making; Degradation; Joints; Predictive models; Real-time systems; Decision-making; ordering time; prognostic information; remaining useful life; replacement time;
Journal_Title :
Reliability, IEEE Transactions on
DOI :
10.1109/TR.2014.2371016