Efficient Modelling and Simulation Of Wind Power Using Online Sequential Learning Algorithm For Feed Forward Networks
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DOI: 10.26480/jmerd.01.2019.109.115
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Keywords
Extreme Learning Machine (ELM); Online Sequential ELM (OS ELM); Wind power modelling; Back Propagation (BP);All these keywords.
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