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Simulating European wind power generation applying statistical downscaling to reanalysis data

机译:将统计缩小比例应用于重新分析数据来模拟欧洲风力发电

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摘要

The growing share of electricity production from solar and mainly wind resources constantly increases the stochastic nature of the power system. Modelling the high share of renewable energy sources and in particular wind power - crucially depends on the adequate representation of the intermittency and characteristics of the wind resource which is related to the accuracy of the approach in converting wind speed data into power values. One of the main factors contributing to the uncertainty in these conversion methods is the selection of the spatial resolution. Although numerical weather prediction models can simulate wind speeds at higher spatial resolution (up to 1 x 1 km) than a reanalysis (generally, ranging from about 25 km to 70 km), they require high computational resources and massive storage systems: therefore, the most common alternative is to use the reanalysis data. However, local wind features could not be captured by the use of a reanalysis technique and could be translated into misinterpretations of the wind power peaks, ramping capacities, the behaviour of power prices, as well as bidding strategies for the electricity market. This study contributes to the understanding what is captured by different wind speeds spatial resolution datasets, the importance of using high resolution data for the conversion into power and the implications in power system analyses. It is proposed a methodology to increase the spatial resolution from a reanalysis. This study presents an open access renewable generation time series dataset for the EU-28 and neighbouring countries at hourly intervals and at different geographical aggregation levels (country, bidding zone and administrative territorial unit), for a 30 year period taking into account the wind generating fleet at the end of 2015. (C) 2017 The Authors. Published by Elsevier Ltd.
机译:来自太阳能和主要是风能资源的电力生产所占份额的不断增长,不断提高了电力系统的随机性。对可再生能源尤其是风能的高份额进行建模-关键取决于风能的间歇性和特性的适当表示,这与将风速数据转换为功率值的方法的准确性有关。导致这些转换方法不确定性的主要因素之一是空间分辨率的选择。尽管数值天气预报模型可以比重新分析(通常介于25 km至70 km之间)以更高的空间分辨率(高达1 x 1 km)模拟风速,但它们需要大量的计算资源和庞大的存储系统:因此,最常见的替代方法是使用重新分析数据。但是,使用重新分析技术无法捕获局部风能,并且可能会误解为风电峰值,容量增加,电价行为以及电力市场的竞标策略。这项研究有助于理解不同风速的空间分辨率数据集所捕获的内容,使用高分辨率数据转换成电能的重要性以及对电力系统分析的意义。提出了一种通过重新分析来提高空间分辨率的方法。这项研究提出了欧盟28国和邻国的开放获取可再生能源发电时间序列数据集,该数据集按小时间隔和不同地理汇总级别(国家,招标区域和行政区域单位)进行了30年的计算,并考虑了风力发电机队在2015年底。(C)2017作者。由Elsevier Ltd.发布

著录项

  • 来源
    《Applied Energy》 |2017年第1期|155-168|共14页
  • 作者单位

    European Commiss, DG Joint Res Ctr, Knowledge Energy Union Unit, Energy Transport & Climate Directorate, Petten, Netherlands;

    European Commiss, DC Joint Res Ctr, Energy Efficiency & Renewables Unit, Energy Transport & Climate Directorate, Ispra, Italy;

    Tech Univ Denmark, Dept Wind Energy, Lyngby, Denmark;

    European Commiss, DG Joint Res Ctr, Knowledge Energy Union Unit, Energy Transport & Climate Directorate, Petten, Netherlands;

    European Commiss, DG Joint Res Ctr, Knowledge Energy Union Unit, Energy Transport & Climate Directorate, Petten, Netherlands;

    European Commiss, DC Joint Res Ctr, Energy Efficiency & Renewables Unit, Energy Transport & Climate Directorate, Ispra, Italy;

    Tech Univ Denmark, Dept Wind Energy, Lyngby, Denmark;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Wind power generation; Hourly time series; High spatial resolution wind speed;

    机译:风力发电;每小时时间序列;高空间分辨率风速;

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