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Machine learning analysis for a flexibility energy approach towards renewable energy integration with dynamic forecasting of electricity balancing power

机译:机器学习分析可实现灵活能源方法的可再生能源集成,并动态预测电力平衡功率

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One of the most important instruments to be able to provide the needed level of flexibility in the electricity system supporting renewable energy integration are balancing markets. We propose a dynamic approach of balancing procurement using machine learning algorithms. We apply a simulation for a Dynamic Day-Ahead Dimensioning Model to the Austrian delta control area. By using public data on renewables, generation and load we show that dynamic dimensioning and procurement of balancing power enables savings in comparison to static dimensioning and procurement with the same level of security.
机译:能够在支持可再生能源集成的电力系统中提供所需级别的灵活性的最重要的工具之一就是平衡市场。我们提出了一种使用机器学习算法来平衡采购的动态方法。我们将动态超前尺寸标注模型的模拟应用于奥地利三角洲控制区域。通过使用有关可再生能源,发电和负荷的公共数据,我们表明,与具有相同安全级别的静态尺寸确定和采购相比,动态尺寸确定和平衡功率的采购可节省成本。

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