Litcius/Paper detail

A Prognosis-Centered Intelligent Maintenance Optimization Framework Under Uncertain Failure Threshold

Li Yang, Yi Chen, Xiaobing Ma, Qingan Qiu, Rui Peng

2023IEEE Transactions on Reliability105 citationsDOI

Abstract

Condition-based maintenance (CBM), as a key component of asset health management, is crucial to enhance the operational safety and availability of diverse mechatronic systems, such as railway vehicles, wind power equipment, nuclear devices, etc. A common phenomenon observed in CBM is the existence of dispersibility regarding degradation-induced failure threshold, which affects the precision of maintenance decisions. This article addresses such challenges by scheduling a prognosis-centered intelligent CBM policy, which harnesses dynamic lifetime information to support both scheduled and opportunistic maintenance decision-making. The degradation is characterized by a generalized-form stochastic process, and the lifetime distribution is assessed through the fusion of multiple uncertainties. A dynamic reliability criterion is set to determine whether and when to postpone maintenance, whose interval is controlled by the remaining lifetime as well as an optimizable safety coefficient. The postponement interval, in turn, enables the planning of opportunistic maintenance to mitigate system downtime. The operational cost rate is minimized through the joint optimization of the inspection interval, conditional reliability threshold, and safety coefficient. The superiorities of the proposed policy over some conventional/heuristic maintenance policies are demonstrated by a case study on filed maintenance planning of high-speed train bearing.

Topics & Concepts

DowntimeReliability engineeringCondition-based maintenanceMaintenance actionsOptimal maintenanceMaintenance engineeringReliability (semiconductor)Interval (graph theory)Computer scienceEngineeringScheduling (production processes)Power (physics)Operations managementCombinatoricsQuantum mechanicsMathematicsPhysicsReliability and Maintenance OptimizationMachine Fault Diagnosis TechniquesSoftware Reliability and Analysis Research
A Prognosis-Centered Intelligent Maintenance Optimization Framework Under Uncertain Failure Threshold | Litcius