Coupling wavelet transform with multivariate adaptive regression spline for simulating suspended sediment load: Independent testing approach
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Vahid Nourani | Jalal Shiri | Sepideh Karimi | Vahid Nourani | J. Shiri | S. Karimi | Naser Shiri | Naser Shiri
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