Application Of Genetic Algorithms For Robust Parameter Optimization
Parameter optimization can be achieved by many methods such as Monte-Carlo, full, and fractional factorial designs. Genetic algorithms (GA) are fairly recent in this respect but afford a novel method of parameter optimization. In GA, there is an initial pool of individuals each with its own speci...
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my.ump.umpir.16522015-03-03T07:52:10Z http://umpir.ump.edu.my/id/eprint/1652/ Application Of Genetic Algorithms For Robust Parameter Optimization Belavendram, N. TJ Mechanical engineering and machinery Parameter optimization can be achieved by many methods such as Monte-Carlo, full, and fractional factorial designs. Genetic algorithms (GA) are fairly recent in this respect but afford a novel method of parameter optimization. In GA, there is an initial pool of individuals each with its own specific phenotypic trait expressed as a ‘genetic chromosome’. Different genes enable individuals with different fitness levels to reproduce according to natural reproductive gene theory. This reproduction is established in terms of selection, crossover and mutation of reproducing genes. The resulting child generation of individuals has a better fitness level akin to natural selection, namely evolution. Populations evolve towards the fittest individuals. Such a mechanism has a parallel application in parameter optimization. Factors in a parameter design can be expressed as a genetic analogue in a pool of sub-optimal random solutions. Allowing this pool of sub-optimal solutions to evolve over several generations produces fitter generations converging to a pre-defined engineering optimum. In this paper, a genetic algorithm is used to study a seven factor non-linear equation for a Wheatstone bridge as the equation to be optimized. A comparison of the full factorial design against a GA method shows that the GA method is about 1200 times faster in finding a comparable solution. Universiti Malaysia Pahang 2010 Article PeerReviewed application/pdf en http://umpir.ump.edu.my/id/eprint/1652/1/11_M_M_Rahman_28072010_9_clean.pdf Belavendram, N. (2010) Application Of Genetic Algorithms For Robust Parameter Optimization. International Journal of Automotive and Mechanical Engineering (IJAME), 2. pp. 211-220. ISSN 1985-9325(Print); ISSN: 2180-1606 (Online) |
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TJ Mechanical engineering and machinery Belavendram, N. Application Of Genetic Algorithms For Robust Parameter Optimization |
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Parameter optimization can be achieved by many methods such as Monte-Carlo, full,
and fractional factorial designs. Genetic algorithms (GA) are fairly recent in this respect
but afford a novel method of parameter optimization. In GA, there is an initial pool of
individuals each with its own specific phenotypic trait expressed as a ‘genetic
chromosome’. Different genes enable individuals with different fitness levels to
reproduce according to natural reproductive gene theory. This reproduction is
established in terms of selection, crossover and mutation of reproducing genes. The
resulting child generation of individuals has a better fitness level akin to natural
selection, namely evolution. Populations evolve towards the fittest individuals. Such a
mechanism has a parallel application in parameter optimization. Factors in a parameter
design can be expressed as a genetic analogue in a pool of sub-optimal random
solutions. Allowing this pool of sub-optimal solutions to evolve over several
generations produces fitter generations converging to a pre-defined engineering
optimum. In this paper, a genetic algorithm is used to study a seven factor non-linear
equation for a Wheatstone bridge as the equation to be optimized. A comparison of the
full factorial design against a GA method shows that the GA method is about 1200
times faster in finding a comparable solution. |
format |
Article |
author |
Belavendram, N. |
author_facet |
Belavendram, N. |
author_sort |
Belavendram, N. |
title |
Application Of Genetic Algorithms For Robust Parameter
Optimization
|
title_short |
Application Of Genetic Algorithms For Robust Parameter
Optimization
|
title_full |
Application Of Genetic Algorithms For Robust Parameter
Optimization
|
title_fullStr |
Application Of Genetic Algorithms For Robust Parameter
Optimization
|
title_full_unstemmed |
Application Of Genetic Algorithms For Robust Parameter
Optimization
|
title_sort |
application of genetic algorithms for robust parameter
optimization |
publisher |
Universiti Malaysia Pahang |
publishDate |
2010 |
url |
http://umpir.ump.edu.my/id/eprint/1652/1/11_M_M_Rahman_28072010_9_clean.pdf http://umpir.ump.edu.my/id/eprint/1652/ |
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1643664439711367168 |
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13.209306 |