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Reinforcement learning for optimal policy learning in condition‐based maintenance

Aniket Adsule, Makarand S. Kulkarni, Asim Tewari

2020IET Collaborative Intelligent Manufacturing16 citationsDOIOpen Access PDF

Abstract

Condition‐based maintenance (CBM) involves taking decisions on maintenance or repair based on the actual deterioration conditions of the components. The long‐run average cost is minimised by choosing the right maintenance action at the right time. In this study, the CBM decision‐making problem is modelled as a continuous semi‐Markov decision process (CSMDP). It consists of a chain of states representing various stages of deterioration, a set of maintenance actions, their costs and scheduled inspection policy. The application of a reinforcement learning (RL) algorithm based on the average reward for CSMDPs in CBM is described. The RL algorithm is used to learn the optimal maintenance decisions and inspection schedule based on the current health state of the component.

Topics & Concepts

Reinforcement learningMarkov decision processQ-learningOptimal maintenanceScheduleComputer scienceMaintenance actionsSet (abstract data type)Condition-based maintenanceComponent (thermodynamics)ReinforcementProcess (computing)Markov chainPreventive maintenanceMarkov processOperations researchArtificial intelligenceReliability engineeringEngineeringMachine learningMathematicsStructural engineeringOperating systemProgramming languageStatisticsPhysicsThermodynamicsReliability and Maintenance OptimizationMachine Fault Diagnosis TechniquesSoftware Reliability and Analysis Research