Coupling wavelet transform with multivariate adaptive regression spline for simulating suspended sediment load: Independent testing approach

Accurate prediction of suspended sediment load (SSL) of a river is very important as it directly affects the performance of the corresponding hydraulic structures. SSL can give valuable information...

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