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INTEGRAL SLIDING MODE CONTROL BASED ON EXTREME LEARNING MACHINE FOR A WIND TURBINE
Miloud Koumir, Ayoub E. Bakri, and Ismail Boumhidi
References
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Abstract
DOI:
10.2316/Journal.201.2017.3.201-2752
From Journal
(201) Mechatronic Systems and Control - 2017
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