Follow
Liu Renke
Title
Cited by
Cited by
Year
Deep reinforcement learning for dynamic scheduling of a flexible job shop
R Liu, R Piplani, C Toro
International Journal of Production Research 60 (13), 4049-4069, 2022
802022
Can China Achieve its CO2 Emission Mitigation Target in 2030: a System Dynamics Perspective.
L Zhang, Z Jiang, R Liu, M Tang, F Wu
Polish Journal of Environmental Studies 27 (6), 2018
172018
A deep multi-agent reinforcement learning approach to solve dynamic job shop scheduling problem
R Liu, R Piplani, C Toro
Computers & Operations Research 159, 106294, 2023
92023
A review of dynamic scheduling: Context, techniques and prospects
L Renke, R Piplani, C Toro
Implementing Industry 4.0: The Model Factory as the Key Enabler for the …, 2021
72021
Deep reinforcement learning-based dynamic scheduling
R Liu
Nanyang Technological University, 2022
2022
The system can't perform the operation now. Try again later.
Articles 1–5