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Probabilistic Load Flow Approach Considering Dependencies of Wind Speed, Solar Irradiance, Electrical Load and Energy Exchange with a Joint Probability Distribution Model

机译:考虑与联合概率分布模型的风速,太阳辐照度,电负荷和能量交换依赖性的概率负荷流动方法

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摘要

The modelling of stochastic feed-ins and demands becomes essential for transmission grid operation and planning due to the extension of renewable energy sources (RES). Neglecting the correlation between uncertain variables and/or oversimplifying the distribution through the assumption of Normal distributions leads to the inaccurate determination of future network states. Therefore, the uncertainties need to be accurately modelled in order to be used in a probabilistic load flow approach. This paper analyses the characteristics of wind speed and solar irradiance for different locations throughout countries and models the dependencies between them. In addition, the total electrical load and the energy exchange between neighbouring countries are analysed. All of these uncertainties are modelled together in a high-dimensional joint probability distribution using pair-copula constructions. The model is applied to generate samples and determine the probability of extreme events, e.g. high RES production and low demand. The probability for rather high load (>65 GW) and low RES production with wind speed less than 3 m/s and solar irradiance less than 100 W m ² at 90% of all stations is e.g. 0.064%. In addition, the model is integrated in a probabilistic load flow approach in order to analyse the German transmission grid for a future scenario of the year 2025. With the copula, samples are generated as an input for the Monte Carlo simulation approach. The approach enables the assessment of planned HVDC lines. When considering the HVDC lines, the load on the AC lines can be significantly reduced.
机译:由于可再生能源(RES)的扩展,随机馈电和需求的建模对于传输网格运行和规划变得必不可少。忽略不确定变量与/或通过正常分布的假设超薄分布的相关性导致未来网络状态的不准确确定。因此,需要准确地建模不确定性,以便以概率负载流动方法使用。本文分析了各种国家的不同地点的风速和太阳辐照的特点,并模拟了它们之间的依赖关系。此外,分析了总电负载和邻国之间的能量交换。所有这些不确定性都使用对拷贝结构的高维联结概率分布在一起建模。该模型用于生成样本并确定极端事件的概率,例如,高分辨率的生产和低需求。对于相当高的负载(> 65GW)和低res生产的概率,风速小于3米/秒,而且太阳辐照度小于100 Wm²的所有车站的90%是例如90%的。 0.064%。此外,该模型以概率的负载流方法集成,以分析德国传输网格,以便在2025年的未来情景中分析德国传输网格。通过Copula,将产生样本作为蒙特卡罗模拟方法的输入。该方法能够评估计划的HVDC线路。在考虑HVDC线路时,可以显着降低AC线路上的负载。

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  • 作者

    Marie-Louise Kloubert;

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  • 年度 2020
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  • 原文格式 PDF
  • 正文语种 eng
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