Genetic programming and cellular automata for fast flood modelling on multi-core CPU and many-core GPU computers
Created by W.Langdon from
gp-bibliography.bib Revision:1.8129
- @PhdThesis{phd/ethos/Gibson15,
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title = "Genetic programming and cellular automata for fast
flood modelling on multi-core {CPU} and many-core {GPU}
computers",
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author = "Michael John Gibson",
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year = "2015",
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school = "University of Exeter",
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address = "UK",
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month = "24 " # aug,
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keywords = "genetic algorithms, genetic programming, GPU",
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URL = "https://ore.exeter.ac.uk/repository/bitstream/handle/10871/20364/GibsonM.pdf",
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URL = "http://hdl.handle.net/10871/20364",
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URL = "http://ethos.bl.uk/OrderDetails.do?uin=uk.bl.ethos.681895",
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size = "257 pages",
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abstract = "Many complex systems in nature are governed by simple
local interactions, although a number are also
described by global interactions. For example, within
the field of hydraulics the Navier-Stokes equations
describe free-surface water flow, through means of the
global preservation of water volume, momentum and
energy. However, solving such partial differential
equations (PDEs) is computationally expensive when
applied to large 2D flow problems. An alternative which
reduces the computational complexity, is to use a local
derivative to approximate the PDEs, such as finite
difference methods, or Cellular Automata (CA). The high
speed processing of such simulations is important to
modern scientific investigation especially within urban
flood modelling, as urban expansion continues to
increase the number of impervious areas that need to be
modelled. Large numbers of model runs or large spatial
or temporal resolution simulations are required in
order to investigate, for example, climate change,
early warning systems, and sewer design optimisation.
The recent introduction of the Graphics Processor Unit
(GPU) as a general purpose computing device (General
Purpose Graphical Processor Unit, GPGPU) allows this
hardware to be used for the accelerated processing of
such locally driven simulations. A novel CA
transformation for use with GPUs is proposed here to
make maximum use of the GPU hardware. CA models are
defined by the local state transition rules, which are
used in every cell in parallel, and provide an
excellent platform for a comparative study of possible
alternative state transition rules. Writing local state
transition rules for CA systems is a difficult task for
humans due to the number and complexity of possible
interactions, and is known as the inverse problem for
CA. Therefore, the use of Genetic Programming (GP)
algorithms for the automatic development of state
transition rules from example data is also investigated
in this thesis. GP is investigated as it is capable of
searching the intractably large areas of possible state
transition rules, and producing near optimal solutions.
However, such population-based optimisation algorithms
are limited by the cost of many repeated evaluations of
the fitness function, which in this case requires the
comparison of a CA simulation to given target data.
Therefore, the use of GPGPU hardware for the
accelerated learning of local rules is also developed.
Speed-up factors of up to 50 times over serial Central
Processing Unit (CPU) processing are achieved on simple
CA, up to 5-10 times speedup over the fully parallel
CPU for the learning of urban flood modelling rules.
Furthermore, it is shown GP can generate rules which
perform competitively when compared with human
formulated rules. This is achieved with generalisation
to unseen terrains using similar input conditions and
different spatial/temporal resolutions in this
important application domain.",
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notes = "British Library, EThOS",
- }
Genetic Programming entries for
Michael J Gibson
Citations