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   very-short term wind speed forecasting via distance algorithm in machine learning  
   
نویسنده shaterzadeh yazdi alireza ,kucuktezcan cavit fatih
منبع journal of modeling and simulation in electrical and electronics engineering - 2022 - دوره : 2 - شماره : 3 - صفحه:19 -24
چکیده    This paper proposes distance matrices, euclidean, and offset translation methods in machine learning prediction of wind speed. the primary aim for this research is to design forecasting models for very short-term and short-term wind speed prediction based on these two methods by using historical data on wind speed. the test data is collected at a wind power station at 10 minutes intervals. furthermore, we evaluate the output in different time horizons in comparison to the benchmark method (persistence). to ensure the output results, comparing this method with the persistence method is essential. the proposed method performance was evaluated and compared with the conventional persistence method performance in terms of mean absolute error.
کلیدواژه very short-term prediction ,wind speed prediction ,distance matrices ,machine learning
آدرس bahcesehir university, department of electrical engineering, turkey, bahcesehir university, department of electrical engineering, turkey
پست الکترونیکی cavifatih.kucuktezcan@eng.bau.edu.tr
 
     
   
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