Yayın: Prediction of maximum annual flood discharges using artificial neural network approaches
Dosyalar
Tarih
Kurum Yazarları
Kankal, Murat
Yazarlar
Anılan, Tuğçe
Nacar, Sinan
Yüksek, Ömer
Danışman
Dil
Türü
Yayıncı:
Croatian Society of Civil Engineers
Dergi Başlığı
Dergi ISSN
Cilt Başlığı
Özet
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.
Açıklama
Kaynak:
Anahtar Kelimeler:
Konusu
Artificial neural networks, Principal component analysis, Maximum annual flows, L-moments approach, Frequency-analysis, Index-flood, Feedforward networks, Streamflow, Basin, Classification, Rainfall, Quality, Engineering
Alıntı
Anılan, T. vd. (2020). "Prediction of maximum annual flood discharges using artificial neural network approaches". Gradevinar, 72(3), 215-224.