A parametric assessing and intelligent forecasting of the energy and exergy performances of a dish concentrating photovoltaic/thermal collector considering six different nanofluids and applying two meticulous soft computing paradigms
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- @Article{ASKARI:2022:renene,
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author = "Ighball Baniasad Askari and Amin Shahsavar and
Mehdi Jamei and Francesco Calise and Masoud Karbasi",
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title = "A parametric assessing and intelligent forecasting of
the energy and exergy performances of a dish
concentrating photovoltaic/thermal collector
considering six different nanofluids and applying two
meticulous soft computing paradigms",
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journal = "Renewable Energy",
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volume = "193",
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pages = "149--166",
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year = "2022",
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ISSN = "0960-1481",
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DOI = "doi:10.1016/j.renene.2022.04.155",
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URL = "https://www.sciencedirect.com/science/article/pii/S0960148122006231",
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keywords = "genetic algorithms, genetic programming, Dish
concentrating photovoltaic thermal system, Exergy,
Multi-gene genetic optimization, Nanofluid,
Thermodynamic analysis",
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abstract = "In the present study, the application of six engine
oil-based Nano fluids (NFs) in a solar concentrating
photovoltaic thermal (CPVT) collector is investigated.
The calculations were performed for different values of
nanoparticle volume concentration, receiver tube
diameter, concentrator surface area, receiver length,
receiver actual to the maximum number of channels
ratio, beam radiation, and a constant volumetric flow
rate. Besides, two novel soft computing paradigms
namely, the cascaded forward neural network (CFNN) and
Multi-gene genetic programming (MGGP) were adopted to
predict the first law efficiency (?I) and second law
efficiency (?II) of the system based on the influential
parameters, as the input features. It was found that
the increase of nanoparticle concentration leads to an
increase in ?I and a decrease in ?II. Moreover, the
rise of both the concentrator surface area (from 5 m2
to 20 m2) and beam irradiance (from 150 W/m2 to 1000
W/m2) entails an increase in both the ?I (by 39percent
and 261percent) and ?II (by 55percent and 438percent).
Furthermore, it was reported that the pattern of
changes in both ?I and ?II with serpentine tube
diameter, receiver plate length, and absorber tube
length is increasing-decreasing. The results of
modeling demonstrated that the CFNN had superior
performance than the MGGP model",
- }
Genetic Programming entries for
Ighball Baniasad Askari
Amin Shahsavar
Mehdi Jamei
Francesco Calise
Masoud Karbasi
Citations