Combining global and local surrogate models to accelerate evolutionary optimization
Combining global and local surrogate models to accelerate evolutionary optimization
In this paper, we present a novel surrogate-assisted evolutionary optimization framework for solving computationally expensive problems. The proposed framework uses computationally cheap hierarchical surrogate models constructed through online learning to replace the exact computationally expensive objective functions during evolutionary search. At the first level, the framework employs a data-parallel Gaussian process based global surrogate model to filter the evolutionary algorithm (EA) population of promising individuals. Subsequently, these potential individuals undergo a memetic search in the form of Lamarckian learning at the second level. The Lamarckian evolution involves a trust-region enabled gradient-based search strategy that employs radial basis function local surrogate models to accelerate convergence. Numerical results are presented on a series of benchmark test functions and on an aerodynamic shape design problem. The results obtained suggest that the proposed optimization framework converges to good designs on a limited computational budget. Furthermore, it is shown that the new algorithm gives significant savings in computational cost when compared to the traditional evolutionary algorithm and other surrogate assisted optimization frameworks.
66-76
Zhou, Z.
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Ong, Y.S.
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Nair, P.B.
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Keane, A.J.
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Lum, K.Y.
d37541a4-936a-49bf-a4a2-711fb2b54512
2007
Zhou, Z.
ec4c2669-5686-45de-bf3f-acf80d0ed849
Ong, Y.S.
62497a6f-823e-4663-b263-4a805a00f181
Nair, P.B.
d4d61705-bc97-478e-9e11-bcef6683afe7
Keane, A.J.
26d7fa33-5415-4910-89d8-fb3620413def
Lum, K.Y.
d37541a4-936a-49bf-a4a2-711fb2b54512
Zhou, Z., Ong, Y.S., Nair, P.B., Keane, A.J. and Lum, K.Y.
(2007)
Combining global and local surrogate models to accelerate evolutionary optimization.
IEEE Transactions On Systems, Man and Cybernetics - Part C, 37 (1), .
(doi:10.1109/TSMCC.2005.855506).
Abstract
In this paper, we present a novel surrogate-assisted evolutionary optimization framework for solving computationally expensive problems. The proposed framework uses computationally cheap hierarchical surrogate models constructed through online learning to replace the exact computationally expensive objective functions during evolutionary search. At the first level, the framework employs a data-parallel Gaussian process based global surrogate model to filter the evolutionary algorithm (EA) population of promising individuals. Subsequently, these potential individuals undergo a memetic search in the form of Lamarckian learning at the second level. The Lamarckian evolution involves a trust-region enabled gradient-based search strategy that employs radial basis function local surrogate models to accelerate convergence. Numerical results are presented on a series of benchmark test functions and on an aerodynamic shape design problem. The results obtained suggest that the proposed optimization framework converges to good designs on a limited computational budget. Furthermore, it is shown that the new algorithm gives significant savings in computational cost when compared to the traditional evolutionary algorithm and other surrogate assisted optimization frameworks.
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Published date: 2007
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Local EPrints ID: 43820
URI: http://eprints.soton.ac.uk/id/eprint/43820
PURE UUID: dbabb9b0-450e-4ac2-b5b4-7900f9f19225
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Date deposited: 02 Feb 2007
Last modified: 16 Mar 2024 02:53
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Author:
Z. Zhou
Author:
Y.S. Ong
Author:
P.B. Nair
Author:
K.Y. Lum
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