An embedded simulation approach for modeling the thermal conductivity of 2D nanoscale material
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- @Article{Garg:2014:SMPT,
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author = "A. Garg and V. Vijayaraghavan and C. H. Wong and
K. Tai and Liang Gao",
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title = "An embedded simulation approach for modeling the
thermal conductivity of {2D} nanoscale material",
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journal = "Simulation Modelling Practice and Theory",
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year = "2014",
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volume = "44",
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month = may,
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pages = "1--13",
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ISSN = "1569-190X",
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DOI = "doi:10.1016/j.simpat.2014.02.003",
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URL = "http://www.sciencedirect.com/science/article/pii/S1569190X14000276",
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keywords = "genetic algorithms, genetic programming, multi-gene
genetic programming, Graphene modelling, Nanomaterial
characteristics, Nanomaterial modelling, Thermal
conductivity modelling",
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abstract = "The thermal property of single layer graphene sheet is
investigated in this work by using an embedded approach
of molecular dynamics (MD) and soft computing method.
The effect of temperature and Stone-Thrower-Wales (STW)
defects on the thermal conductivity of graphene sheet
is first analysed using MD simulation. The data
obtained using the MD simulation is then fed into the
paradigm of soft computing approach, multi-gene genetic
programming (MGGP), which was specifically designed to
model the response of thermal conductivity of graphene
sheet with changes in system temperature and STW defect
concentration. We find that our proposed MGGP model is
able to model the thermal conductivity of graphene
sheet very well which can be used to complement the
analytical solution developed by MD simulation.
Additionally, we also conducted sensitivity and
parametric analysis to find out specific influence and
variation of each of the input system parameters on the
thermal conductivity of graphene sheet. It was found
that the STW defects has the most dominating influence
on the thermal conductivity of graphene sheet.",
- }
Genetic Programming entries for
Akhil Garg
Venkatesh Vijayaraghavan
Chee How Wong
Kang Tai
Liang Gao
Citations