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Selection of Numerical Weather Forecast Features for PV Power Predictions with Random Forests

机译:随机森林光伏发电预测的数值天气预报特征选择

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The increasing volatility introduced to power grids by renewable energy sources makes it necessary that the accuracy of energy forecasts are improved. Photovoltaic (PV) power plants hold the biggest share of installed capacity of renewable energy in Germany, so that high quality PV power forecasts are vital for a cost efficient operation of the underlying electrical grid. In this paper, we evaluate multiple Numerical Weather Prediction (NWP) parameters for their ability to improve PV power forecasting features. The importance of features is decided by a Random Forest algorithm. Furthermore, the resulting top ranked features are tested by performing PV power forecasts with Support Vector Regression, Random Forest, and linear regression models.
机译:可再生能源给电网带来的波动性不断增加,因此有必要提高能源预测的准确性。光伏(PV)电厂在德国可再生能源装机容量中占有最大份额,因此高质量的PV功率预报对于基础电网的经济高效运行至关重要。在本文中,我们评估了多个数值天气预报(NWP)参数,以提高光伏发电预报功能。特征的重要性由随机森林算法决定。此外,通过使用支持向量回归,随机森林和线性回归模型执行PV功率预测来测试最终排名最高的功能。

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