Seasonal Performance Analysis and Comparative Evaluation of Wind Power Prediction Models Using Machine Learning Techniques

Seasonal Performance Analysis and Comparative Evaluation of Wind Power Prediction Models Using Machine Learning Techniques

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DOI 10.20900/jsr.20240029
刊名
JSR
年,卷(期) 2024, 6(2)
作者
作者单位

1 Department of Electrical and Electronics Engineering, GMR Institute of Technology, Rajam, Andhra Pradesh 532127, India;
2 Department of Electrical and Electronics Engineering, Mahendra Engineering College (Autonomous), Namakkal, Tamil Nadu 637503, India;
3 Department of Electrical and Electronics Engineering, S.A. Engineering College, Chennai, Tamil Nadu 600077, India;
4 Department of Electrical and Electronics Engineering, Panimalar Engineering College, Chennai, Tamil Nadu 600123, India

Abstract
This research paper presents a novel approach to wind power prediction, focusing on seasonal analysis and machine learning models. The study addresses short-term wind power forecasting, specifically targeting the prediction of wind power generation at a given location over periods ranging from a few minutes to several days in advance. The proposed methodology integrates comprehensive seasonal analysis, leveraging four distinct seasons namely Winter, Spring, Summer, and Autumn to gain insights into wind energy production patterns. This study evaluates the performance of two machine learning models, kNN Regression and AdaBoost, across these seasons, providing valuable insights into their effectiveness in wind power prediction. This research contributes to advancing wind power forecasting methodologies by offering a comprehensive analysis of seasonal variations and leveraging machine learning techniques for accurate and reliable predictions.
KeyWord
renewable energy; wind energy; kNN Regression; AdaBoost; energy prediction
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K Karthick*,S Krishnan,N Rajavinu,B Muthuraj. Seasonal Performance Analysis and Comparative Evaluation of Wind Power Prediction Models Using Machine Learning Techniques, Journal of Sustainability Research. 2024; 6; (2). https://doi.org/10.20900/jsr.20240029.

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