Publication:
Prediction of maximum annual flood discharges using artificial neural network approaches

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Kankal, Murat

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Anılan, Tuğçe
Nacar, Sinan
Yüksek, Ömer

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Croatian Society of Civil Engineers

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Abstract

The applicability of artificial neural network (ANN) approaches for estimation of maximum annual flows is investigated in the paper. The performance of three neural network models is compared: multi layer perceptron neural networks (MLP_NN), generalized feed forward neural networks (GFF_NN), and principal component analysis with neural networks (PCA_ NN). The proposed approaches were applied to 33 stream-gauging stations. It was found that the optimal 3-hidden layered PCA_NN method was more appropriate than the optimal MLP_NN and GFF_NN models for the estimation of maximum annual flows.

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Artificial neural networks, Principal component analysis, Maximum annual flows, L-moments approach, Frequency-analysis, Index-flood, Feedforward networks, Streamflow, Basin, Classification, Rainfall, Quality, Engineering

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Anılan, T. vd. (2020). "Prediction of maximum annual flood discharges using artificial neural network approaches". Gradevinar, 72(3), 215-224.

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