Home
Scholarly Works
Dual deep reinforcement learning agents-based...
Journal article

Dual deep reinforcement learning agents-based integrated order acceptance and scheduling of mass individualized prototyping

Abstract

Coordinating order acceptance decisions with production scheduling to maximize revenue is challenging for Mass Individualized Prototyping (MIP) service providers. This paper presents a dual deep reinforcement learning agents-based (DDRLA) integrated order acceptance and scheduling (IOAS) for improving revenue. Firstly, a deep reinforcement learning-based virtual production scheduling (VPS) agent together with 8 state features and 11 action rules is designed. The VPS agent quickly and virtually reschedules a dynamically-arriving accepted order to evaluate the overall impact of accepting this order, including consumed capacity and increased revenue. Then, a deep reinforcement learning-based order acceptance decision (OAD) agent is designed. Based on the information guidance resulting from an interaction with the VPS agent, the OAD agent selectively accepts orders to maximize long-term gains, as well as to improve system resilience in the presence of a high ratio of urgent orders. The experiment results show that the proposed DDRLA method has better performance, compared with other IOAS approaches.

Authors

Leng J; Guo J; Zhang H; Xu K; Qiao Y; Zheng P; Shen W

Journal

Journal of Cleaner Production, Vol. 427, ,

Publisher

Elsevier

Publication Date

November 15, 2023

DOI

10.1016/j.jclepro.2023.139249

ISSN

0959-6526

Labels

Contact the Experts team