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Inicio  /  Hydrology  /  Vol: 5 Par: 3 (2018)  /  Artículo
ARTÍCULO
TITULO

Anticipate Manning?s Coefficient in Meandering Compound Channels

Abinash Mohanta    
Kanhu Charan Patra and Bibhuti Bhusan Sahoo    

Resumen

Estimating Manning?s roughness coefficient (??) ( n ) is one of the essential factors in predicting the discharge in a stream. Present research work is focused on prediction of Manning?s ?? n in meandering compound channels by using the Group Method of Data Handling Neural Network (GMDH-NN) approach. The width ratio (??) ( a ) , relative depth (??) ( ß ) , sinuosity (??) ( s ) , Channel bed slope (????) ( S o ) , and meander belt width ratio (??) ( ? ) are specified as input parameters for the development of the model. The performance of GMDH-NN is evaluated with two different machine learning techniques, namely the support vector regression (SVR) and multivariate adaptive regression spline (MARS) with various statistical measures. Results indicate that the proposed GMDH-NN model predicts the Manning?s ?? n satisfactorily as compared to the MARS and SVR model. This GMDH-NN approach can be useful for practical implementation as the prediction of Manning?s coefficient and subsequently discharge through Manning?s equation in the compound meandering channels are found to be quite adequate.

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