Please use this identifier to cite or link to this item: http://ir.futminna.edu.ng:8080/jspui/handle/123456789/13493
Title: Assessment of Stream Hydrological Response Using Artificial Neural Network: A Case Study of River Kaduna, Nigeria
Authors: Otache, Martins; John, Abayomi; Murtala Musa; Kuti
Animashaun, Iyanda Murtala
Keywords: Stream hydrological response, climate change scenario, artificial neural network, Shiroro River, dynamics
Issue Date: 2015
Publisher: Nigerian Journal of Hydrological Sciences
Abstract: Hydrological alterations may result either from changes in average condition or from changes in the distribution and timing of extreme events. In view of this, the study attempted an evaluation of the hydrological response of River Kaduna at Shiroro Dam site, Nigeria to hypothetical climate change scenarios using the Artificial Neural Network (ANN) paradigm. For the deployment of the ANN, monthly historichydrometeorological data (i.e., evaporation, rainfall, streamflow and temperature) spanning 33 years were obtained. To this end, four climate change scenarios: +10% rainfall, 2×coefficient of variation in rainfall, -10% rainfall and +30C average temperature were considered. The historical data were used as input to the ANN and selected monthly synthetic streamflow hydrographs in the seasons (i.e., dry and wet) were generated with an average high value of the goodness-of-fit (R2=0.96). The response pattern indicated a variability index for the River to be in the range of 0.85-1.25 while for the recession pattern it is 0.75-0.81. It is imperative to note that the ANN enhanced the generalization of the flow dynamics of the extreme events (peak and low flow regime) with relative predictability capacity values of 103% ( ) and 96.35% ( ), respectively. However considering the fact that the upgraded temperature and coefficient of variation in rainfall might impact negatively on the average runoff, flow variability, flood frequency and predictability, there is the need for the use of an extensive hydrometeorological data base coupled withthe application of associated risk value for effective flood forecasting in real-time.
URI: http://repository.futminna.edu.ng:8080/jspui/handle/123456789/13493
ISSN: 2315 – 6686.
Appears in Collections:Agric. and Bioresources Engineering

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