A Stochastic Generator of Global Monthly Wind Energy with Tukey g-and-h Autoregressive Processes
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Yuan Yan | Marc G. Genton | Stefano Castruccio | Jaehong Jeong | M. Genton | S. Castruccio | J. Jeong | Yuanhai Yan
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