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四种机器学习方法在短期风能预测中的应用研究

多哈·布达劳伊 图里亚·海地 费萨尔·艾尔玛利亚 穆尼尔·德里

全球能源互联网(英文)2023,Vol.6Issue(6):726-737,12.
全球能源互联网(英文)2023,Vol.6Issue(6):726-737,12.DOI:10.1016/j.gloei.2023.11.006

四种机器学习方法在短期风能预测中的应用研究

Application of four machine-learning methods to predict short-horizon wind energy

多哈·布达劳伊 1图里亚·海地 1费萨尔·艾尔玛利亚 1穆尼尔·德里1

作者信息

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摘要

Abstract

Renewable energy has garnered attention due to the need for sustainable energy sources.Wind power has emerged as an alternative that has contributed to the transition towards cleaner energy.As the importance of wind energy grows,it can be crucial to provide forecasts that optimize its performance potential.Artificial intelligence(AI)methods have risen in prominence due to how well they can handle complicated systems while enhancing the accuracy of prediction.This study explored the area of AI to predict wind-energy production at a wind farm in Yalova,Turkey,using four different AI approaches:support vector machines(SVMs),decision trees,adaptive neuro-fuzzy inference systems(ANFIS)and artificial neural networks(ANNs).Wind speed and direction were considered as essential input parameters,with wind energy as the target parameter,and models are thoroughly evaluated using metrics such as the mean absolute percentage error(MAPE),coefficient of determination(R²),and mean absolute error(MAE).The findings accentuate the superior performance of the SVM,which delivered the lowest MAPE(2.42%),the highest R²(0.95),and the lowest MAE(71.21%)compared with actual values,while ANFIS was less effective in this context.The main aim of this comparative analysis was to rank the models to move to the next step in improving the least efficient methods by combining them with optimization algorithms,such as metaheuristic algorithms.

关键词

风能预测/支持向量机/决策树/自适应模糊推理系统/人工神经网络

Key words

Wind Energy Prediction/Support Vector Machines/Decision Trees/Adaptive Neuro-Fuzzy Inference Systems/Artificial Neural Networks

引用本文复制引用

多哈·布达劳伊,图里亚·海地,费萨尔·艾尔玛利亚,穆尼尔·德里..四种机器学习方法在短期风能预测中的应用研究[J].全球能源互联网(英文),2023,6(6):726-737,12.

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