Evaluation of machine learning-based applications in forecasting the performance of single effect absorption chiller network
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- @Article{PANAHIZADEH:2021:TSEP,
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author = "Farshad Panahizadeh and Mahdi Hamzehei and
Mahmood Farzaneh-Gord and Alvaro Antonio Ochoa Villa",
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title = "Evaluation of machine learning-based applications in
forecasting the performance of single effect absorption
chiller network",
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journal = "Thermal Science and Engineering Progress",
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volume = "26",
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pages = "101087",
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year = "2021",
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ISSN = "2451-9049",
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DOI = "doi:10.1016/j.tsep.2021.101087",
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URL = "https://www.sciencedirect.com/science/article/pii/S2451904921002481",
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keywords = "genetic algorithms, genetic programming, Absorption
chiller network, Machine learning, Coefficient of
performance, Thermal energy consumption",
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abstract = "The present study aims to predict the coefficient of
performance and thermal energy consumption of an
absorption chiller network, using three widely-used
machine learning methods of the artificial neural
network, support vector machine, and genetic
programming. To this aim, a case study was conducted on
the Marun petrochemical company in Iran. The genetic
programming was used to estimate new formulas for the
functions in terms of operational variables. Then,
using the optimization algorithm, the optimal load of
each chiller in the network was obtained. The results
revealed that the artificial neural network technique
has the highest prediction accuracy among the mentioned
methods, in which the mean square errors of the
performance coefficient and thermal energy consumption
of chiller are 1.683 times 10-8 and 8.157 times 10-8,
respectively. Also, for the support vector machine and
genetic programming methods mean square errors are
1.627 times 10-3, 1.135 times 10-3 and 2.187 times
10-3, 4.358 times 10-3, respectively. The new estimated
formulas for the performance coefficient and thermal
energy consumption of each chiller based on the genetic
programming have acceptable accuracy and their
coefficients of determination are 0.97093 and 0.95768,
respectively. Moreover, given the constant operating
variables, if the cooling load of each chiller in the
network is optimally selected, the thermal energy
consumption of the network will decrease averagely by
2.1 percent and the performance coefficient of the
network will increase by 1.3 percent",
- }
Genetic Programming entries for
Farshad Panahizadeh
Mahdi Hamzehei
Mahmood Farzaneh-Gord
Alvaro Antonio Ochoa Villa
Citations