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ESTIMATION. OF MISSING RAINFALL DATA THROUGH ARTIFICIAL NEURAL NETWORK (ANN

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dc.contributor.author Meena, Banwari Lal
dc.date.accessioned 2014-11-21T11:25:32Z
dc.date.available 2014-11-21T11:25:32Z
dc.date.issued 2010
dc.identifier M.Tech en_US
dc.identifier.uri http://hdl.handle.net/123456789/9994
dc.guide Agarwal, J. P.
dc.guide Jain, M. K.
dc.description.abstract Continuous hydrological observations are required for assessment of water resources from a catchment for planning and design. However, gaps in the hydrological data series are common due to variety of reasons. For meaningful hydrological analysis, missing values specially rainfall data in such data series are often reconstructed using statistical and deterministic methods. Depending upon the type of data and the information available, different techniques are employed to find the missing rainfall values. In this report, some of the methods commonly employed for filling missing hydrological data / rainfall data have been discussed taking the catchment of Purna river in Maharashtra. Back-propagation technique of ANN has also been used along with Arithmetic Average, Normal Ratio and Inverse Distance Methods, in present study to predict the missing rainfall values and compare the results obtained by various methods. ANN model developed for prediction of missing rainfall values is trained with different learning algorithms, learning rates, and number of neurons in its hidden layer. The aim was to develop a network which provides an optimum output. On comparison of the results, ANN was found to be the most efficient technique to predict the missing rainfall data in comparison to the traditional methods. en_US
dc.language.iso en en_US
dc.subject HYDROENERGY en_US
dc.subject MISSING RAINFALL DATA en_US
dc.subject ARTIFICIAL NEURAL NETWORK en_US
dc.subject HYDROLOGICAL DATA SERIES en_US
dc.title ESTIMATION. OF MISSING RAINFALL DATA THROUGH ARTIFICIAL NEURAL NETWORK (ANN en_US
dc.type M.Tech Dessertation en_US
dc.accession.number G20662 en_US


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