TY - JOUR
T1 - Reinforcement learning approach to scheduling of precast concrete production
AU - Kim, Taehoon
AU - Kim, Yong Woo
AU - Lee, Dongmin
AU - Kim, Minju
N1 - Publisher Copyright:
© 2022
PY - 2022/2/15
Y1 - 2022/2/15
N2 - The production scheduling of precast concrete (PC) is essential for successfully completing PC construction projects. The dispatching rules, widely used in practice, have the limitation that the best rule differs according to the shop conditions. In addition, mathematical programming and the metaheuristic approach, which would improve performance, entail more computational time with increasing problem size, let alone its models being revised as the problem size changes. This study proposes a PC production scheduling model based on a reinforcement learning approach, which has the advantages of a general capacity to solve various problem conditions with fast computation time and good performance in real-time. The experimental study shows that the proposed model outperformed other methods by 4–12% of the total tardiness and showed an average winning rate of 77.0%. The proposed model could contribute to the successful completion of off-site construction projects by supporting the stable progress of PC construction.
AB - The production scheduling of precast concrete (PC) is essential for successfully completing PC construction projects. The dispatching rules, widely used in practice, have the limitation that the best rule differs according to the shop conditions. In addition, mathematical programming and the metaheuristic approach, which would improve performance, entail more computational time with increasing problem size, let alone its models being revised as the problem size changes. This study proposes a PC production scheduling model based on a reinforcement learning approach, which has the advantages of a general capacity to solve various problem conditions with fast computation time and good performance in real-time. The experimental study shows that the proposed model outperformed other methods by 4–12% of the total tardiness and showed an average winning rate of 77.0%. The proposed model could contribute to the successful completion of off-site construction projects by supporting the stable progress of PC construction.
KW - Deep Q-network
KW - Precast concrete
KW - Production scheduling
KW - Reinforcement learning
UR - https://www.scopus.com/pages/publications/85122621238
U2 - 10.1016/j.jclepro.2022.130419
DO - 10.1016/j.jclepro.2022.130419
M3 - Article
AN - SCOPUS:85122621238
SN - 0959-6526
VL - 336
JO - Journal of Cleaner Production
JF - Journal of Cleaner Production
M1 - 130419
ER -