A data-driven machine learning approach for yaw control applications of wind farms

Theoretical and Applied Mechanics Letters - Tập 13 - Trang 100471 - 2023
Christian Santoni1, Zexia Zhang1, Fotis Sotiropoulos2, Ali Khosronejad1
1Department of Civil Engineering, Stony Brook University, Stony Brook, NY 11794, United States
2Mechanical and Nuclear Engineering, Virginia Commonwealth University, VA 23284, United States

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