Design of Computational Models for Hydroturbine Units Based on a Nonparametric Regression Approach with Adaptation by Evolutionary Algorithms
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- @Article{bukhtoyarov:2021:Computation,
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author = "Vladimir Viktorovich Bukhtoyarov and
Vadim Sergeevich Tynchenko",
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title = "Design of Computational Models for Hydroturbine Units
Based on a Nonparametric Regression Approach with
Adaptation by Evolutionary Algorithms",
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journal = "Computation",
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year = "2021",
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volume = "9",
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number = "8",
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keywords = "genetic algorithms, genetic programming",
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ISSN = "2079-3197",
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URL = "https://www.mdpi.com/2079-3197/9/8/83",
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DOI = "doi:10.3390/computation9080083",
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abstract = "This article deals with the problem of designing
regression models for evaluating the parameters of the
operation of complex technological
equipment--hydroturbine units. A promising approach to
the construction of regression models based on
nonparametric Nadaraya-Watson kernel estimates is
considered. A known problem in applying this approach
is to determine the effective values of
kernel-smoothing coefficients. Kernel-smoothing factors
significantly impact the accuracy of the regression
model, especially under conditions of variability of
noise and parameters of samples in the input space of
models. This fully corresponds to the characteristics
of the problem of estimating the parameters of
hydraulic turbines. We propose to use the evolutionary
genetic algorithm with an addition in the form of a
local-search stage to adjust the smoothing
coefficients. This ensures the local convergence of the
tuning procedure, which is important given the high
sensitivity of the quality criterion of the
nonparametric model. On a set of test problems, the
results were obtained showing a reduction in the
modelling error by 20percent and 28percent for the
methods of adjusting the coefficients by the standard
and hybrid genetic algorithms, respectively, in
comparison with the case of an arbitrary choice of the
values of such coefficients. For the task of estimating
the parameters of the operation of a hydroturbine unit,
a number of promising approaches to constructing
regression models based on artificial neural networks,
multidimensional adaptive splines, and an evolutionary
method of genetic programming were included in the
research. The proposed nonparametric approach with a
hybrid smoothing coefficient tuning scheme was found to
be most effective with a reduction in modelling error
of about 5percent compared with the best of the
alternative approaches considered in the study, which,
according to the results of numerical experiments, was
the method of multivariate adaptive regression
splines.",
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notes = "also known as \cite{computation9080083}",
- }
Genetic Programming entries for
Vladimir Viktorovich Bukhtoyarov
Vadim Sergeevich Tynchenko
Citations