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Stochastic parallel machine scheduling using reinforcement learning

Juxihong Julaiti, Seog‐Chan Oh, D DAS, Soundar Kumara

2022Journal of Advanced Manufacturing and Processing15 citationsDOI

Abstract

Abstract In a high‐mix and low‐volume manufacturing facility, heterogeneous jobs introduce frequent reconfiguration of machines which increases the chance of unplanned machine breakdowns. As machines are often nonidentical and their performance degrades over time, it is critical to consider the heterogeneity and non‐stationarity of the machines during scheduling. We propose a reinforcement learning‐based framework with a novel sampling method to train the agent to schedule heterogeneous jobs on non‐stationary unreliable parallel machines to minimize weighted tardiness. The results indicate that the new sampling approach expedites the learning process and the resulting policy significantly outperforms static dispatching rules.

Topics & Concepts

TardinessComputer scienceReinforcement learningScheduling (production processes)Control reconfigurationScheduleArtificial intelligenceJob shop schedulingMathematical optimizationMachine learningMathematicsEmbedded systemOperating systemScheduling and Optimization AlgorithmsSupply Chain and Inventory ManagementAssembly Line Balancing Optimization
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