A deep reinforcement learning based scheduling policy for reconfigurable manufacturing systems

Date published

2021-10-20

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Publisher

Elsevier

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Type

Conference paper

ISSN

2212-8271

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Citation

Tang J, Salonitis K. (2021) A deep reinforcement learning based scheduling policy for reconfigurable manufacturing systems. Procedia CIRP, Volume 103, pp. 1-7. 9th CIRP global Web conference (CIRPe 2021): Sustainable, resilient, and agile manufacturing and service operations : Lessons from COVID-19, 26-28 October 2021, Saint-Etienne, France

Abstract

Reconfigurable manufacturing systems (RMS) is one of the trending paradigms toward a digitalised factory. With its rapid reconfiguring capability, finding a far-sighted scheduling policy is challenging. Reinforcement learning is well-equipped for finding highly efficient production plans that would bring near-optimal future rewards. For minimising reconfiguring actions, this paper uses a deep reinforcement learning agent to make autonomous decision with a built-in discrete event simulation model of a generic RMS. Aiming at the completion of the assigned order lists while minimising the reconfiguration actions, the agent outperforms the conventional first-in-first-out dispatching rule after self-learning.

Description

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Github

Keywords

Reconfigurable manufacturing system, scheduling, reinforcement learning, dueling double deep q learning, discrete event simulation

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Attribution-NonCommercial-NoDerivatives 4.0 International

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