A Comparison of Optimization Methods for the Transparent Conducting Oxide Application of Ga-doped ZnO
Created by W.Langdon from
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- @InProceedings{Kim:2008:ICNC,
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author = "Hyun-Soo Kim and Sang-Gyu Lee and Seung-Soo Han and
Hyeon Bae and Tae-Ryong Jeon and Sungshin Kim",
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title = "A Comparison of Optimization Methods for the
Transparent Conducting Oxide Application of {Ga}-doped
{ZnO}",
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booktitle = "Fourth International Conference on Natural
Computation, ICNC '08",
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year = "2008",
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month = oct,
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volume = "1",
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pages = "126--130",
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keywords = "genetic algorithms, genetic programming, error
back-propagation algorithm, fractional factorial
design, neural networks, optimal process conditions,
optimization methods, particle swarm optimization,
transparent conducting oxide, backpropagation,
dielectric thin films, electrical engineering
computing, gallium, neural nets, particle swarm
optimisation, zinc compounds",
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DOI = "doi:10.1109/ICNC.2008.806",
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abstract = "In this paper, statistical experimental design is used
to characterize the transparent conducting oxide
process of Ga-doped ZnO. Fractional factorial design
with three center points are employed. In the process
modeling, neural networks trained by the error
back-propagation algorithm and genetic programming are
applied to map the relationships between several input
factors and resistivity. Both modeling methods are
typical modeling methods for local and global
approaches. Subsequently, both genetic algorithms and
particle swarm optimization are used to identify the
optimal process conditions to minimize resistivity. The
results of the two approaches are compared, and the
optimized resistivity found by the particle swarm
method was slightly better than that found by genetic
algorithms. More importantly, repeated applications of
particle swarm optimization yielded process conditions
with smaller standard deviations, implying greater
consistency in recipe generation.",
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notes = "Also known as \cite{4666824}",
- }
Genetic Programming entries for
Hyun-Soo Kim
Sang-Gyu Lee
Seung-Soo Han
Hyeon Bae
Tae-Ryong Jeon
Sungshin Kim
Citations