Forecasting of Mid- and Long-Term Wind Power Using Machine Learning and Regression Models

Sina Ibne Ahmed, P. Ranganathan, H. Salehfar
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引用次数: 5

Abstract

Environmental concerns over the past decade have driven the need to harness renewable energy resources, such as wind power generation. Forecasting wind power is beneficial to power utilities; however, predicting wind power generation has proven challenging due to wind speed variability. This paper has used two machine learning algorithms, Gradient Boosting Machine (GBM) and Support Vector Machine (SVM), along with the regression model Multivariate Adaptive Regression Splines (MARS), to predict wind-based power production over medium and long-term time frames. A comparative analysis of each forecasting method is presented with the predictions that account for all features. The critical feature among the independent variables is also determined and used for comparative analysis in this study. The preliminary case study results indicate that the SVM model performs better over other models to a greater extent for substantial uncertainty in dataset but suffers from larger computational run time.
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基于机器学习和回归模型的中长期风电预测
在过去的十年里,环境问题促使人们需要利用可再生能源,比如风力发电。风电预测对电力公司有利;然而,由于风速的可变性,预测风力发电已被证明具有挑战性。本文使用了两种机器学习算法,梯度增强机(GBM)和支持向量机(SVM),以及回归模型多元自适应回归样条(MARS),来预测中长期的风电生产。对每种预测方法进行了比较分析,并给出了考虑所有特征的预测。本研究还确定了自变量之间的关键特征,并将其用于比较分析。初步的案例研究结果表明,在数据集存在较大不确定性的情况下,SVM模型在更大程度上优于其他模型,但存在较大的计算运行时间。
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