JOURNAL ARTICLE

Deep reinforcement learning for dynamic scheduling of a flexible job shop

Renke LiuRajesh PiplaniCarlos Toro

Year: 2022 Journal:   International Journal of Production Research Vol: 60 (13)Pages: 4049-4069   Publisher: Taylor & Francis

Abstract

The ability to handle unpredictable dynamic events is becoming more important in pursuing agile and flexible production scheduling. At the same time, the cyber-physical convergence in production system creates massive amounts of industrial data that needs to be mined and analysed in real-time. To facilitate such real-time control, this research proposes a hierarchical and distributed architecture to solve the dynamic flexible job shop scheduling problem. Double Deep Q-Network algorithm is used to train the scheduling agents, to capture the relationship between production information and scheduling objectives, and make real-time scheduling decisions for a flexible job shop with constant job arrivals. Specialised state and action representations are proposed to handle the variable specification of the problem in dynamic scheduling. Additionally, a surrogate reward-shaping technique to improve learning efficiency and scheduling effectiveness is developed. A simulation study is carried out to validate the performance of the proposed approach under different scenarios. Numerical results show that not only does the proposed approach deliver superior performance as compared to existing scheduling strategies, its advantages persist even if the manufacturing system configuration changes.

Keywords:
Dynamic priority scheduling Two-level scheduling Computer science Fair-share scheduling Reinforcement learning Scheduling (production processes) Rate-monotonic scheduling Flow shop scheduling Job shop Distributed computing Lottery scheduling Agile software development Industrial engineering Job shop scheduling Real-time computing Engineering Artificial intelligence Operations management Computer network

Metrics

246
Cited By
38.69
FWCI (Field Weighted Citation Impact)
49
Refs
1.00
Citation Normalized Percentile
Is in top 1%
Is in top 10%

Citation History

Topics

Scheduling and Optimization Algorithms
Physical Sciences →  Engineering →  Industrial and Manufacturing Engineering
Elevator Systems and Control
Physical Sciences →  Engineering →  Control and Systems Engineering
Digital Transformation in Industry
Physical Sciences →  Engineering →  Industrial and Manufacturing Engineering

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