Evolutionary design for energy-efficient approximate digital circuits
Created by W.Langdon from
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- @Article{NOROUZI:2018:MM,
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author = "Hamed Norouzi and Mostafa E. Salehi",
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title = "Evolutionary design for energy-efficient approximate
digital circuits",
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journal = "Microprocessors and Microsystems",
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volume = "57",
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pages = "52--64",
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year = "2018",
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keywords = "genetic algorithms, genetic programming, Cartesian
Genetic Programming, Approximate computing,
Evolutionary algorithm, Discrete Cosine Transform",
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ISSN = "0141-9331",
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DOI = "doi:10.1016/j.micpro.2018.01.002",
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URL = "http://www.sciencedirect.com/science/article/pii/S014193311630179X",
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abstract = "Energy and computation efficiency are of the major
concerns in ever-growing embedded systems. Approximate
computing as a new design methodology trades precision
for energy efficiency. Evolutionary algorithms as an
optimization approach would explore the possible space
of the solution to find the best and efficient
solutions and hence, are compatible with approximate
computing objectives. This paper exploits Cartesian
Genetic Programming (CGP) as a powerful design approach
to bring novel and newfound approximate solutions. Our
contributions are twofold: First, proposing a new
simple yet effective seeding approach for CGP which
decreases the evolution time and computational effort
and also increases the precision of the resulted
evolved circuits. Second, proposing an offline
pre-evolution approach in order to reduce the
complexity of design and hence, make it possible to use
CGP for designing more complex problems. The results of
evolving arithmetic benchmarks show improvement of the
proposed seeding technique both in precision of evolved
circuits and also the required computational effort.
Also, exploiting the pre-evolution approach for
multiplier benchmark reduce the size of truth tables
over 94percent and not only make it possible to use CGP
to design larger multipliers, but also breaks down the
power delay product (PDP) parameter more than 65percent
in compression with some state of the art approximate
and exact multipliers",
- }
Genetic Programming entries for
Hamed Norouzi
Mostafa E Salehi
Citations