Intercomparison of downscaling methods for daily precipitation with emphasis on wavelet-based hybrid models
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- @Article{KUMAR:2021:JH,
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author = "Yeditha Pavan Kumar and Rathinasamy Maheswaran and
Ankit Agarwal and Bellie Sivakumar",
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title = "Intercomparison of downscaling methods for daily
precipitation with emphasis on wavelet-based hybrid
models",
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journal = "Journal of Hydrology",
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volume = "599",
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pages = "126373",
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year = "2021",
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ISSN = "0022-1694",
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DOI = "doi:10.1016/j.jhydrol.2021.126373",
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URL = "https://www.sciencedirect.com/science/article/pii/S0022169421004200",
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keywords = "genetic algorithms, genetic programming, Precipitation
downscaling, General circulation models, Statistical
downscaling, Neural Networks, Wavelets",
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abstract = "Downscaling of local daily precipitation from
large-scale climatic variables is required for
assessing the impact of climate change on hydrology and
water resources. This study proposes wavelet transform
(WT)-based Feed-Forward Neural Network (FF-NN) and
Nonlinear Auto Regressive with exogenous inputs Network
(NARX-NN) models for downscaling daily precipitation.
The models are applied to a large river basin, the
Krishna River basin, in the Indian subcontinent.
Several climatic variables, including geo-potential
heights, wind direction, vorticity, humidity, air
temperature, mean sea level pressure, meridional
velocity at surface, and 500hpa and 850hpa levels, are
considered based on their statistical correlations. The
results are evaluated using different performance
measures and the ability of the models to capture the
extreme events at five selected grid points (in
different locations) having varying climatic
characteristics is assessed. The performance of the
proposed wavelet-based models is also compared with
that of four different traditional and recent
downscaling methods: Multiple Linear Regression (MLR),
Statistical Downscaling Model (SDSM), Genetic
Programming (GP), and Artificial Neural Networks
(ANNs). The results reveal that the wavelet-based
neural network models (WT-FF-NN and WT-NARX-NN) are
robust compared to the other methods in terms of their
ability to capture the regional precipitation patterns
and the extreme events. The improvement in the
wavelet-based models can be attributed to their ability
to unravel the hidden relationship between the
predictors and precipitation. It is also observed that
there is considerable increase in the correlation
between precipitation and the decomposed climatic
variables. All these results suggest that wavelets aid
in unravelling the relationship between local
precipitation and large-scale climatic variables and
improving the overall performance of the downscaling
models",
- }
Genetic Programming entries for
Yeditha Pavan Kumar
Rathinasamy Maheswaran
Ankit Agarwal
Bellie Sivakumar
Citations