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Wind power prediction using bootstrap aggregating trees approach to enabling sustainable wind power integration in a smart grid

机译:使用引导聚合树方法进行风能预测,以实现智能电网中的可持续风能集成

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摘要

Precise prediction of wind power is important in sustainably integrating the wind power in a smart grid. The need for short-term predictions is increased with the increasing installed capacity. The main contribution of this work is adopting bagging ensembles of decision trees approach for wind power prediction. The choice of this regression approach is motivated by its ability to take advantage of many relatively weak single trees to reach a high prediction performance compared to single regressors. Moreover, it reduces the overall error and has the capacity to merge numerous models. The performance of bagged trees for predicting wind power has been compared to four commonly know prediction methods namely multivariate linear regression, support vector regression, principal component regression, and partial least squares regression. Real measurements recorded every ten minutes from an actual wind turbine are used to illustrate the prediction quality of the studied methods. Results showed that the bagged trees regression approach reached the highest prediction performance with a coefficient of determination of 0.982. The result showed that the bagged trees approach is followed by support vector regression with Gaussian kernel, the same model when using a quadratic kernel, and the multivariate linear regression, partial least squares, and principal component regression gave the lowest prediction. The investigated models in this study can represent a helpful tool for model-based anomaly detection in wind turbines.
机译:精确预测风能对于将风能可持续地集成到智能电网中至关重要。随着装机容量的增加,对短期预测的需求也会增加。这项工作的主要贡献是采用决策树方法的装袋组合进行风能预测。之所以选择这种回归方法,是因为其能够利用许多相对较弱的单个树来实现比单个回归器更高的预测性能。此外,它减少了总体误差,并具有合并众多模型的能力。袋装树用于预测风能的性能已与四种众所周知的预测方法进行了比较,即多元线性回归,支持向量回归,主成分回归和偏最小二乘回归。每十分钟从实际风力涡轮机记录的实际测量值用于说明所研究方法的预测质量。结果表明,袋装树木的回归方法达到了最高的预测性能,确定系数为0.982。结果表明,袋装树方法之后是使用高斯核的支持向量回归,使用二次核时的模型相同,而多元线性回归,偏最小二乘和主成分回归给出的预测最低。本研究中的研究模型可以代表一种有用的工具,用于风力涡轮机中基于模型的异常检测。

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