Computational approaches for annual maximum river flow series

Studies of annual peak discharge and its temporal variations are widely used in the planning and decision making process of water resources management. Very recently, soft computing techniques are gaining ground for time series analysis of hydrological events such as rainfall and runoff. In this stu...

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Main Authors: Harinarayan Tiwari, Subash Pd. Rai, Nayan Sharma, Dheeraj Kumar
Format: Article
Language:English
Published: Elsevier 2017-03-01
Series:Ain Shams Engineering Journal
Subjects:
ANN
Online Access:http://www.sciencedirect.com/science/article/pii/S2090447915001422
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spelling doaj-88701ee9af9541b89887910cb38896ba2021-06-02T06:25:16ZengElsevierAin Shams Engineering Journal2090-44792017-03-0181515810.1016/j.asej.2015.07.016Computational approaches for annual maximum river flow seriesHarinarayan TiwariSubash Pd. RaiNayan SharmaDheeraj KumarStudies of annual peak discharge and its temporal variations are widely used in the planning and decision making process of water resources management. Very recently, soft computing techniques are gaining ground for time series analysis of hydrological events such as rainfall and runoff. In this study Artificial Neural Network (ANN) has been used in combination with wavelet to model the annual maximum flow discharge of rivers. The results of ANN-Wavelet (WANN) model indicate overall low coherence (R2 = 0.39) better than ANN (R2 = 0.31) in isolation. In the present analysis, the authors also conceded a probabilistic distributional analysis of river flow time series which has greater potential to better reflect peak flow dynamics. The results highlight that the overall performance of probability distribution models is superior to WANN model. Instead of that WANN is better than probabilistic models to find the global maxima of the series.http://www.sciencedirect.com/science/article/pii/S2090447915001422ProbabilityWaveletANNKosiPeak discharge
collection DOAJ
language English
format Article
sources DOAJ
author Harinarayan Tiwari
Subash Pd. Rai
Nayan Sharma
Dheeraj Kumar
spellingShingle Harinarayan Tiwari
Subash Pd. Rai
Nayan Sharma
Dheeraj Kumar
Computational approaches for annual maximum river flow series
Ain Shams Engineering Journal
Probability
Wavelet
ANN
Kosi
Peak discharge
author_facet Harinarayan Tiwari
Subash Pd. Rai
Nayan Sharma
Dheeraj Kumar
author_sort Harinarayan Tiwari
title Computational approaches for annual maximum river flow series
title_short Computational approaches for annual maximum river flow series
title_full Computational approaches for annual maximum river flow series
title_fullStr Computational approaches for annual maximum river flow series
title_full_unstemmed Computational approaches for annual maximum river flow series
title_sort computational approaches for annual maximum river flow series
publisher Elsevier
series Ain Shams Engineering Journal
issn 2090-4479
publishDate 2017-03-01
description Studies of annual peak discharge and its temporal variations are widely used in the planning and decision making process of water resources management. Very recently, soft computing techniques are gaining ground for time series analysis of hydrological events such as rainfall and runoff. In this study Artificial Neural Network (ANN) has been used in combination with wavelet to model the annual maximum flow discharge of rivers. The results of ANN-Wavelet (WANN) model indicate overall low coherence (R2 = 0.39) better than ANN (R2 = 0.31) in isolation. In the present analysis, the authors also conceded a probabilistic distributional analysis of river flow time series which has greater potential to better reflect peak flow dynamics. The results highlight that the overall performance of probability distribution models is superior to WANN model. Instead of that WANN is better than probabilistic models to find the global maxima of the series.
topic Probability
Wavelet
ANN
Kosi
Peak discharge
url http://www.sciencedirect.com/science/article/pii/S2090447915001422
work_keys_str_mv AT harinarayantiwari computationalapproachesforannualmaximumriverflowseries
AT subashpdrai computationalapproachesforannualmaximumriverflowseries
AT nayansharma computationalapproachesforannualmaximumriverflowseries
AT dheerajkumar computationalapproachesforannualmaximumriverflowseries
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