A deep reinforcement learning approach for rail renewal and maintenance planning

Reliability Engineering & System Safety - Tập 225 - Trang 108615 - 2022
Reza Mohammadi1, Qing He1,2
1Department of Industrial and Systems Engineering, University at Buffalo (SUNY), Buffalo, NY 14260, USA
2Key Laboratory of High-speed Railway Engineering of Ministry of Education, Southwest Jiaotong University, Sichuan, 610031, China

Tài liệu tham khảo

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