Optimum analytical design of medical heat sink with convex parabolic fin including variable thermal conductivity and mass transfer
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- @Article{BABAELAHI:2017:EML,
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author = "Mojtaba Babaelahi and Hamed Eshraghi",
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title = "Optimum analytical design of medical heat sink with
convex parabolic fin including variable thermal
conductivity and mass transfer",
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journal = "Extreme Mechanics Letters",
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volume = "15",
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pages = "83--90",
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year = "2017",
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keywords = "genetic algorithms, genetic programming, Medical heat
sink, Convex parabolic, Variable thermal conductivity,
Fractional, Generalizes differential transformation
method (GDTM)",
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ISSN = "2352-4316",
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DOI = "doi:10.1016/j.eml.2017.06.005",
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URL = "http://www.sciencedirect.com/science/article/pii/S2352431616302826",
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abstract = "Electronic medical devices have become more powerful
in recent years. These medical devices contain arrays
of electronic components, which required
high-performance heat sinks to prevent from overheating
and damaging. For the design of high-performance
medical heat sinks, the temperature distribution should
be evaluated. Thus, in this paper, the Generalized
Differential Transformation Method (GDTM) is applied to
the medical heat sink with a convex parabolic
convective fin with variable thermal conductivity and
mass transfer. In the first section of the current
paper, the general heat balance equation related to the
medical heat sink with convex parabolic fins is
derived. Because of the fractional type of derivative,
the concept of GDTM is employed to derive analytical
solutions. The major aim of this study, which is
exclusive for this article, is to find the closed-form
analytical solution for the fractional differential
equation in considered heat sink for the first time. In
the next step, multiobjective optimization of the
considerable fin is performed for minimum volume and
maximum thermal efficiency. For evaluation of optimum
design at various environmental conditions, the
multiobjective optimizations are performed for a wide
range of environmental conditions. In the final step,
the results of multiobjective optimization in various
environmental conditions are applied to the genetic
programming tool and suitable analytical correlations
are created for optimum geometrical design",
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keywords = "genetic algorithms, genetic programming, Medical heat
sink, Convex parabolic, Variable thermal conductivity,
Fractional, Generalizes differential transformation
method (GDTM)",
- }
Genetic Programming entries for
Mojtaba Babaelahi
Hamed Eshraghi
Citations