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Forecasting Solar Power Ramp Events Using Machine Learning Classification Techniques

机译:使用机器学习分类技术预测太阳能斜坡事件

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The growing integration level of wind and solar energy resources introduces new challenges for the reliable operation of the electric grid. Tasks such as managing high ramp-rates of renewable generation, optimal energy management of energy storage systems, and voltage regulator settings on feeders with distributed generation, may be improved with the availability of solar power forecasts, especially those with accurate ramp event prediction. This paper presents classification techniques to classify and forecast the solar power ramp events. A case study over an entire year is conducted and several evaluation metrics are considered to assess the performance of the classification models of solar power ramp event forecasts.
机译:风和太阳能资源的不断增长的一体化水平引入了电网可靠运行的新挑战。可以提高太阳能预测的可用性,尤其是那些具有精确斜坡事件预测的可再生生成的可再生生成,能量存储系统的最佳能量管理和具有分布式发电的馈电器的电压调节器设置的任务。本文介绍了分类技术,以对太阳能斜坡事件进行分类和预测。进行全年的案例研究,并考虑了几项评估指标,以评估太阳能斜坡事件预测的分类模型的性能。

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