Litcius/Paper detail

A Deep Reinforcement Learning Based Scheduling Policy for Reconfigurable Manufacturing Systems

Jiecheng Tang, Konstantinos Salonitis

2021Procedia CIRP24 citationsDOIOpen Access PDF

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.

Topics & Concepts

Reinforcement learningControl reconfigurationScheduling (production processes)Computer scienceFactory (object-oriented programming)Distributed computingArtificial intelligenceIndustrial engineeringEngineeringEmbedded systemOperations managementProgramming languageFlexible and Reconfigurable Manufacturing SystemsScheduling and Optimization AlgorithmsDigital Transformation in Industry