Reservoir Inflow Prediction by Employing Response Surface-Based Models Conjunction with Wavelet and Bootstrap Techniques

Reservoir inflow prediction is a vital subject in the field of hydrology because it determines the flood event. The negative impact of the floods could be minimized greatly if the flood frequency is predicted accurately in advance. In the present study, a novel hybrid model, bootstrap quadratic resp...

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Published inMathematical problems in engineering Vol. 2021; pp. 1 - 9
Main Authors Shehzad, Muhammad Ahmed, Bashir, Adnan, Noor Ul Amin, Muhammad, Khosa, Saima Khan, Aslam, Muhammad, Ahmad, Zubair
Format Journal Article
LanguageEnglish
Published New York Hindawi 10.11.2021
John Wiley & Sons, Inc
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ISSN1024-123X
1026-7077
1563-5147
1563-5147
DOI10.1155/2021/4086918

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Summary:Reservoir inflow prediction is a vital subject in the field of hydrology because it determines the flood event. The negative impact of the floods could be minimized greatly if the flood frequency is predicted accurately in advance. In the present study, a novel hybrid model, bootstrap quadratic response surface is developed to test daily streamflow prediction. The developed bootstrap quadratic response surface model is compared with multiple linear regression model, first-order response surface model, quadratic response surface model, wavelet first-order response surface model, wavelet quadratic response surface model, and bootstrap first-order response surface model. Time series data of monsoon season (1 July to 30 September) for the year 2010 of the Chenab river basin are analyzed. The studied models are tested by using performance indices: Nash–Sutcliffe coefficient of efficiency, mean absolute error, persistence index, and root mean square error. Results reveal that the proposed model, i.e., bootstrap quadratic response surface shows good performance and produces optimum results for daily reservoir inflow prediction than other models used in the study.
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ISSN:1024-123X
1026-7077
1563-5147
1563-5147
DOI:10.1155/2021/4086918