识别风和太阳斜坡事件

A. Florita, B. Hodge, K. Orwig
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引用次数: 68

摘要

风能和太阳能在电网中发挥着越来越重要的作用,但其固有的功率可变性会增加电力系统运行的不确定性。一种有助于减轻影响并提供更大灵活性的解决方案是加强风能和太阳能的预测;然而,它的相对效用也是不确定的。在太阳能和风能的可变性中,大型斜坡事件的影响是主要关注的问题。与此同时,对于什么是斜坡事件没有明确的定义,不同的行动领域使用了不同的标准。在这里,最初用于趋势记录数据压缩的旋转门算法被应用于从历史操作数据中识别变量生成斜坡事件。以简单和自动化的方式识别坡道是一项关键任务,它可以为更大的工作提供支持:1)定义风能和太阳能预测的新指标,试图捕捉预测错误对系统运行和经济的真正影响;2)以数据驱动的方式为各种电力系统模型提供信息,以进行卓越的探索性模拟研究。两者都允许对敏感性和有意义的相关性进行推断,以及量化概率方法的价值,以便将来在实践中使用。
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Identifying Wind and Solar Ramping Events
Wind and solar power are playing an increasing role in the electrical grid, but their inherent power variability can augment uncertainties in the operation of power systems. One solution to help mitigate the impacts and provide more flexibility is enhanced wind and solar power forecasting; however, its relative utility is also uncertain. Within the variability of solar and wind power, repercussions from large ramping events are of primary concern. At the same time, there is no clear definition of what constitutes a ramping event, with various criteria used in different operational areas. Here, the swinging door algorithm, originally used for data compression in trend logging, is applied to identify variable generation ramping events from historic operational data. The identification of ramps in a simple and automated fashion is a critical task that feeds into a larger work of 1) defining novel metrics for wind and solar power forecasting that attempt to capture the true impact of forecast errors on system operations and economics, and 2) informing various power system models in a data-driven manner for superior exploratory simulation research. Both allow inference on sensitivities and meaningful correlations, as well as quantify the value of probabilistic approaches for future use in practice.
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