The added utility of nonlinear methods compared to linear methods in rescaling soil moisture products
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- @Article{Afshar:2017:RSE,
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author = "M. H. Afshar and M. T. Yilmaz",
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title = "The added utility of nonlinear methods compared to
linear methods in rescaling soil moisture products",
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journal = "Remote Sensing of Environment",
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volume = "196",
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pages = "224--237",
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year = "2017",
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ISSN = "0034-4257",
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DOI = "doi:10.1016/j.rse.2017.05.017",
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URL = "http://www.sciencedirect.com/science/article/pii/S003442571730216X",
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abstract = "In this study, the added utility of nonlinear
rescaling methods relative to linear methods in the
framework of creating a homogenous soil moisture time
series has been explored. The performances of 31 linear
and nonlinear rescaling methods are evaluated by
rescaling the Land Parameter Retrieval Model (LPRM)
soil moisture datasets to station-based watershed
average datasets obtained over four United States
Department of Agriculture (USDA) Agricultural Research
Service (ARS) watersheds. The linear methods include
first-order linear regression, multiple linear
regression, and multivariate adaptive regression
splines (MARS), whereas the nonlinear methods include
cumulative distribution function matching (CDF),
artificial neural networks (ANN), support vector
machines (SVM), Genetic Programming (GEN), and copula
methods. MARS, GEN, SVM, ANN, and the copula methods
are also implemented to use lagged observations to
rescale the datasets. The results of a total of 31
different methods show that the nonlinear methods
improve the correlation and error statistics of the
rescaled product compared to the linear methods. In
general, the method that yielded the best results using
training data improved the validation correlations, on
average, by 0.063, whereas ELMAN ANN and GEN, using
lagged observations methods, yielded correlation
improvements of 0.052 and 0.048, respectively. The
lagged observations improved the correlations when they
were incorporated into rescaling equations in linear
and nonlinear fashions, with the nonlinear methods
(particularly SVM and GEN but not ANN and copula)
benefitting from these lagged observations more than
the linear methods. The overall results show that a
large majority of the similarities between the LPRM and
watershed average datasets are due to linear relations;
however, nonlinear relations clearly exist, and the use
of nonlinear rescaling methods clearly improves the
accuracy of the rescaled product.",
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keywords = "genetic algorithms, genetic programming, Soil
moisture, Rescaling, Linear, Nonlinear, Remote
sensing",
- }
Genetic Programming entries for
Mehdi Hesami Afshar
Mustafa Tolga Yilmaz
Citations