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Design mining interacting wind turbines
Authors
Anderson J. D
Axelrod R.
+33 more
Barthelmie R. J.
Bartz-Beielstein T
Bull L
Charwat A. F.
Eroğlu Y.
Hampsey M.
Hao L.
Hasager C. B.
Hillis W. D
Husbands P.
Jin Y.
Kim H. S.
Kinzel M.
Koza J
Kusiak A.
Larry Bull
Lipton J. I.
Marmidis G.
Miller J. S.
Nolfi S.
Ong Y. S.
Paredis J
Park J.-W.
Preen R. J.
Rechenberg I.
Richard J. Preen
Rosenblatt F
Salcedo-Sanz S.
Symes M. D.
Theis M.
Toja-Silva F.
Wang S.
Wiegand R. P.
Publication date
15 January 2015
Publisher
'MIT Press - Journals'
Doi
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on
arXiv
Abstract
© 2016 by the Massachusetts Institute of Technology. An initial study has recently been presented of surrogate-assisted evolutionary algorithms used to design vertical-axis wind turbines wherein candidate prototypes are evaluated under fan-generated wind conditions after being physically instantiated by a 3D printer. Unlike other approaches, such as computational fluid dynamics simulations, no mathematical formulations were used and no model assumptions weremade. This paper extends that work by exploring alternative surrogate modelling and evolutionary techniques. The accuracy of various modelling algorithms used to estimate the fitness of evaluated individuals from the initial experiments is compared. The effect of temporally windowing surrogate model training samples is explored. A surrogateassisted approach based on an enhanced local search is introduced; and alternative coevolution collaboration schemes are examined
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Crossref
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info:doi/10.1162%2Fevco_a_0014...
Last time updated on 01/04/2019