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Dive into the research topics where Ahmed Elssidig Nasr is active.

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Featured researches published by Ahmed Elssidig Nasr.


Hydrological Sciences Journal-journal Des Sciences Hydrologiques | 2007

A Comparative Study of Three Neural Network Forecast Combination Methods for simulated river flows of different Rainfall-runoff models

Asaad Y. Shamseldin; Kieran M. O'Connor; Ahmed Elssidig Nasr

Abstract The performances of three artificial neural network (NN) methods for combining simulated river flows, based on three different neural network structures, are compared. These network structures are: the simple neural network (SNN), the radial basis function neural network (RBFNN) and the multi-layer perceptron neural network (MLPNN). Daily data of eight catchments, located in different parts of the world, and having different hydrological and climatic conditions, are used to enable comparisons of the performances of these three methods to be made. In the case of each catchment, each neural network combination method synchronously uses the simulated river flows of four rainfall—runoff models operating in design non-updating mode to produce the combined river flows. Two of these four models are black-box, the other two being conceptual models. The results of the study show that the performances of all three combination methods are, on average, better than that of the best individual rainfall—runoff model utilized in the combination, i.e. that the combination concept works. In terms of the Nash-Sutcliffe model efficiency index, the MLPNN combination method generally performs better than the other two combination methods tested. For most of the catchments, the differences in the efficiency index values of the SNN and the RBFNN combination methods are not significant but, on average, the SNN form performs marginally better than the more complex RBFNN alternative. Based on the results obtained for the three NN combination methods, the use of the multi-layer perceptron neural network (MLPNN) is recommended as the appropriate NN form for use in the context of combining simulated river flows.


Water Research | 2007

A comparison of SWAT, HSPF and SHETRAN/GOPC for modelling phosphorus export from three catchments in Ireland.

Ahmed Elssidig Nasr; Michael Bruen; P. Jordan; Richard Moles; Gerard Kiely; Paul Byrne


Hydrology and Earth System Sciences | 2002

Comparison of different forms of the Multi-layer Feed-Forward Neural Network method used for river flow forecasting

Asaad Y. Shamseldin; Ahmed Elssidig Nasr


Journal of Hydrology | 2008

Development of neuro-fuzzy models to account for temporal and spatial variations in a lumped rainfall-runoff model

Ahmed Elssidig Nasr; Michael Bruen


Paper presented at the National Hydrology Seminar 2004 : The Water Framework Directive - Monitoring & Modelling Issues for River Basin Management, November 2004, Tullamore, co. Offaly | 2004

Physically-based, distributed, catchment modelling for estimating sediment and phosphorus loads to rivers and lakes : issues of model complexity, spatial and temporal scales and data requirements

Ahmed Elssidig Nasr; Michael Bruen; P. Jordan; Richard Moles; Gerard Kiely; Paul Byrne


Presented at the 7th IWA International Specialised Conference on Diffuse Pollution and Basin Management, Dublin, Ireland, 17-21 August 2003 | 2003

Modelling phosphorus loss from agricultural catchments : a comparison of the performance of SWAT, HSPF and SHETRAN for the Clarianna catchment

Ahmed Elssidig Nasr; Michael Bruen; Geoff Parkin; Steve J. Birkinshaw; Richard Moles; Paul Byrne


Archive | 2013

Water Quality and The Water Framework Directive - Neuro-Fuzzy Models for Use in River Basin District Management

Ahmed Elssidig Nasr; Michael Bruen


7th IWA International Specialised Conference on Diffuse Polution and Basin Management, held in Dublin 17-21 August 2003 | 2003

Comparison of physically based catchment models for estimating Phosphorus losses

Ahmed Elssidig Nasr; Michael Bruen


Presented at the 7th International Water Association Symposium on Systems Analysis and Integrated Assessment in Water Management, Washington, D.C., 7-9 May 2007 | 2007

Coupling system model with fuzzy logic rules for use in runoff and total phosphorus load prediction in a catchment

Ahmed Elssidig Nasr; Michael Bruen


Archive | 2014

08 - STATISTICAL ANALYSIS OF RIVER LOW FLOWS IN SUPPORT OF WATER RESOURCES MANAGEMENT PLANNING IN THE SHANNON INTERNATIONAL RIVER BASIN DISTRICT

Ahmed Elssidig Nasr; Michael Bruen

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Michael Bruen

University College Dublin

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Paul Byrne

University of Limerick

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Gerard Kiely

University College Cork

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Jianqing Yang

University College Dublin

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Kieran M. O'Connor

National University of Ireland

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Antti Taskinen

Finnish Environment Institute

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