A Reversible Evolvable Network Architecture and Methodology to Overcome the Heat Generation Problem in Molecular Scale Brain Building
Created by W.Langdon from
gp-bibliography.bib Revision:1.8051
- @InProceedings{degaris:2002:gecco:lbp,
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title = "A Reversible Evolvable Network Architecture and
Methodology to Overcome the Heat Generation Problem in
Molecular Scale Brain Building",
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author = "Hugo {de Garis} and Jonathan Dinerstein and
Ravichandra Sriram",
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booktitle = "Late Breaking Papers at the Genetic and Evolutionary
Computation Conference (GECCO-2002)",
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editor = "Erick Cant{\'u}-Paz",
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year = "2002",
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month = jul,
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pages = "83--90",
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address = "New York, NY",
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publisher = "AAAI",
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publisher_address = "445 Burgess Drive, Menlo Park, CA 94025",
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keywords = "genetic algorithms, genetic programming",
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URL = "http://www.iss.whu.edu.cn/degaris/papers/RENN.pdf",
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abstract = "Today's irreversible computing style, in which bits of
information are routinely wiped out (e.g. a NAND gate
has 2 input bits, and only 1 output bit), cannot
continue. If Moore's Law remains valid until 2020, as
many commentators think, then the heat generated in
molecular scale circuits that Moore's Law will provide,
would be so intense that they will explode [Hall 1992].
To avoid such heat generation problems, it has been
known since the early 1970s [Bennet 1973] that the
secret to ``heatless computation'' is to compute
reversibly, i.e. not to destroy bits, by sending in the
input bit-string through a computer built from
reversible logic gates (e.g. Fredkin gates [Fredkin et
al 1982], to record the output answer and then send the
output bit-string backwards through the computer to
obtain the original input bit-string. This reversible
style of computing takes twice as long, but does not
destroy bits, hence does not generate heat. (Landauer's
principle states that the heat generated from
irreversible computing is derived from the destruction
of bits of information [Landauer 1961]). The first
author intends to build artificial brains over the
remaining 20 years of his active research career, by
evolving (neural) network modules directly in
electronics (at electronic speeds) in their 100,000s
and assembling them into artificial brains. In the next
10-20 years, electronic circuitry will reach molecular
scales; hence a conceptual problem needs to be faced.
How to make evolvable (neural) networks that are
reversible? This paper proposes a reversible evolvable
Boolean network architecture and methodology which, it
is hoped, will stimulate the evolvable hardware and
evolvable neural network research communities to devote
more effort towards solving this problem, which can
only accentuate as Moore's Law continues to bite.",
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notes = "Late Breaking Papers, {GECCO-2002}. A joint meeting of
the eleventh International Conference on Genetic
Algorithms ({ICGA-2002}) and the seventh Annual Genetic
Programming Conference ({GP-2002}) part of
cantu-paz:2002:GECCO:lbp",
- }
Genetic Programming entries for
Hugo de Garis
Jonathan Dinerstein
Ravichandra Sriram
Citations