Reconfigurable manufacturing system scheduling: a deep reinforcement learning approach

Date

2022-05-26

Advisors

Journal Title

Journal ISSN

Volume Title

Publisher

Elsevier

Department

Type

Conference paper

ISSN

2212-8271

item.page.extent-format

Citation

Tang J, Haddad Y, Salonitis K. (2022) Reconfigurable manufacturing system scheduling: a deep reinforcement learning approach. Procedia CIRP, Volume 107, pp. 1198-1203. 55th CIRP Conference on Manufacturing Systems 2022, 29 June - 1 July 2022, Lugano, Switzerland

Abstract

Reconfigurable Manufacturing Systems (RMS) bring new possibilities toward meeting demand fluctuations while, at the same time, challenges scheduling efficiency. This paper presents a novel approach that, for the scheduling problem of RMS on multiple products, finds a dynamic control policy via a group of deep reinforcement learning agents. These teamed agents, embedded with a shared value decomposition network, aim on minimising the make-span of a constant updating order group by guiding a group of automated guided vehicles to move modules of machine, raw materials, and finished products inside the system.

Description

item.page.description-software

item.page.type-software-language

item.page.identifier-giturl

Keywords

Reconfigurable Manufacturing System, Multi-agent System, Deep Reinforcement Learning, Flexible Job-shop Scheduling Problem

Rights

Attribution-NonCommercial-NoDerivatives 4.0 International

item.page.relationships

item.page.relationships

item.page.relation-supplements