DOI:​10.1016/J.MECHATRONICS.2015.04.007
Corpus ID: 108072491
Extreme learning machine approach for sensorless wind speed estimation
V. Nikolic, S. Motamedi, +3 authors M. Arif
Published 2016
Engineering
Mechatronics
Precise predictions of wind speed play important role in determining the feasibility of harnessing wind energy. In fact, reliable wind predictions offer secure and minimal economic risk situation to… Expand
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