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RESEARCH ON ELEVATOR GROUP SCHEDULING STRATEGY AND SIMULATION BASED ON REINFORCEMENT LEARNING ALGORITHM, 251-259.
Rui Tian and Weimin Gao
References
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DOI:
10.2316/J.2024.201-0421
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(201) Mechatronic Systems and Control - 2024
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