2012
DOI: 10.4236/jwarp.2012.410105
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Artificial Neural Networks for Event Based Rainfall-Runoff Modeling

Abstract: The Artificial Neural Network (ANN) approach has been successfully used in many hydrological studies especially the rainfall-runoff modeling using continuous data. The present study examines its applicability to model the event-based rainfall-runoff process. A case study has been done for Ajay river basin to develop event-based rainfall-runoff model for the basin to simulate the hourly runoff at Sarath gauging site. The results demonstrate that ANN models are able to provide a good representation of an event-b… Show more

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Cited by 51 publications
(26 citation statements)
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“…Wu et al (2005) developed the using of ANNs for watershed runoff and river flow simulations. Back propagation (This technique is also sometimes called backward propagation of errors) ANN, runoff models applied by Sarkar et al (2006) to estimate and prediction daily runoff for a part of the Satluj river basin of India. Comparison of different ANN models applied by Kisi (2007) for short term daily river flow estimation.…”
Section: Introductionmentioning
confidence: 99%
“…Wu et al (2005) developed the using of ANNs for watershed runoff and river flow simulations. Back propagation (This technique is also sometimes called backward propagation of errors) ANN, runoff models applied by Sarkar et al (2006) to estimate and prediction daily runoff for a part of the Satluj river basin of India. Comparison of different ANN models applied by Kisi (2007) for short term daily river flow estimation.…”
Section: Introductionmentioning
confidence: 99%
“…The developed ANN models have been able to predict this information with great accuracy. This shows that ANNs can be very efficient in modeling an eventbased rainfall-runoff process for determining the peak discharge and time to the peak discharge very accurately [12].…”
Section: Generalmentioning
confidence: 99%
“…Tampelini et al [15] presented the application of Elman neural network for rainfallrunoff simulation in Brazil. Sarkar and Kumar [16] modeled the event-based rainfall-runoff process using the ANN technique over the Ajay River basin. Hasanpour Kashani et al [17] evaluated capacity of the ANN [multilayer perceptron (MLP)] and Volterra model to approximate arbitrary non-linear rainfall-runoff processes in north of Iran.…”
Section: Introductionmentioning
confidence: 99%