extensively used to solve different variations of the
wind turbine layout design problem in many
previous studies. The resulted revealed that the
proposed cuckoo search algorithm produced higher
yearly energy output and better efficiency for all the
considered test scenarios and different number of
wind turbines. This signifies that the cuckoo search
algorithm was more efficient than genetic algorithm
in traversing the search space, which resulted in
better solutions by cuckoo search.
ACKNOWLEDGEMENTS
This work was supported by Deanship of Research
at King Fahd University of Petroleum & Minerals
under project number IN131012.
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