Rainfall-runoff modeling through regression in the reproducing kernel Hilbert space algorithm

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Date

2020

Authors

Mir Jafar Sadegh Safari
Shervin Rahimzadeh Arashloo
Ali Danandeh Mehr

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Publisher

Elsevier B.V.

Open Access Color

Green Open Access

Yes

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Abstract

In this study Regression in the Reproducing Kernel Hilbert Space (RRKHS) technique which is a non-linear regression approach formulated in the reproducing kernel Hilbert space (RRKHS) is applied for rainfall-runoff (R-R) modeling for the first time. The RRKHS approach is commonly applied when the data to be modeled is highly non-linear and consequently the common linear approaches fail to provide satisfactory performance. The calibration and verification processes of the RRKHS for one- and multi-day ahead forecasting R-R models were demonstrated using daily rainfall and streamflow measurement from a mountainous catchment located in the Black Sea region Turkey. The efficacy of the new approach in each forecasting scenario was compared with those of other benchmarks namely radial basis function artificial neural network and multivariate adaptive regression splines. The results illustrate the superiority of the RRKHS approach to its counterparts in terms of different performance indices. The range of relative peak error (PE) is found as 0.009–0.299 for the best scenario of the RRKHS model which illustrates the high accuracy of RRKHS in peak streamflow estimation. The superior performance of the RRKHS model may be attributed to its formulation in a very high (possibly infinite) dimensional space which facilitates a more accurate regression analysis. Based on the promising results of the current study it is expected that the proposed approach would be applied to other similar environmental modeling problems. © 2020 Elsevier B.V. All rights reserved.

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Keywords

Multivariate Adaptive Regression Splines, Radial Basis Function, Rainfall-runoff Modeling, Regression In The Reproducing Kernel Hilbert Space, Catchments, Hilbert Spaces, Radial Basis Function Networks, Rain, Runoff, Stream Flow, Vector Spaces, Calibration And Verification, Environmental Model, Multivariate Adaptive Regression Splines, Non-linear Regression, Radial Basis Function Artificial Neural Networks, Rainfall-runoff Modeling, Reproducing Kernel Hilbert Spaces, Streamflow Measurements, Regression Analysis, Algorithm, Artificial Neural Network, Calibration, Catchment, Environmental Modeling, Forecasting Method, Nonlinearity, Rainfall-runoff Modeling, Regression Analysis, Streamflow, Black Sea Coast [turkey], Turkey, Catchments, Hilbert spaces, Radial basis function networks, Rain, Runoff, Stream flow, Vector spaces, Calibration and verification, Environmental model, Multivariate adaptive regression splines, Non-linear regression, Radial basis function artificial neural networks, Rainfall-runoff modeling, Reproducing Kernel Hilbert spaces, Streamflow measurements, Regression analysis, algorithm, artificial neural network, calibration, catchment, environmental modeling, forecasting method, nonlinearity, rainfall-runoff modeling, regression analysis, streamflow, Black Sea Coast [Turkey], Turkey, Radial basis function, Rainfall-runoff modeling, Regression in the reproducing kernel Hilbert space, Multivariate adaptive regression splines

Fields of Science

0207 environmental engineering, 02 engineering and technology

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OpenCitations Citation Count
37

Source

Journal of Hydrology

Volume

587

Issue

Start Page

125014

End Page

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CrossRef : 39

Scopus : 44

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Mendeley Readers : 47

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