首页> 外文期刊>Fortschritt-Berichte VDI, Reihe 6. Energietechnik >Operational impacts of large-scale wind power generation in the German power system and effects of integration measures - Analyses with a stochastic electricity market model
【24h】

Operational impacts of large-scale wind power generation in the German power system and effects of integration measures - Analyses with a stochastic electricity market model

机译:大规模风力发电对德国电力系统的运营影响和整合措施的影响-用随机电力市场模型进行分析

获取原文
       

摘要

A strong increase of onshore and offshore wind power capacities is an official political target in Germany and other countries. The wind energy shares therefore rise in many power systems. Wind power generation has other characteristics than the power generation by conventional power plants. The wind is a natural resource that is fluctuating. The meteorological dependency leads to a limited predictability of the available power. A third aspect is the concentration of wind farms at locations with high wind yields as in the North of Germany. From a methodological point of view, the thesis focuses on the analysis of the three aspects with regard to the power system operation and the development of related modelling approaches. This especially refers to the application of a stochastic optimization model for the system analysis and to the simulation of wind power generation and wind power forecasts. The application orientated focus is on a scenario analysis of the German power system in 2020. The analysis aims at the identification of promising system adaptations that lead to an improved wind power integration and a more efficient power system operation. Before the model presentation, the importance of the three aspects above is discussed giving the basics for the latter modelling. It is shown that the residual load fluctuations are increased by the wind power generation, especially if they are related to the residual load levels. The flexibility of thermal power plants is also regarded here. An analysis of operational uncertainties shows the importance of wind power forecast errors in relation to load forecast errors. The DC load flow model and characteristics of the transmission grid are explained. A stochastic market model is presented that allows an integrative analysis of the wind power integration. One characteristic of the optimization model is the application of a rolling planning so that forecast errors can be specifically considered. A main modification of the model compared to earlier model versions is given by the representation of grid constraints. A grid reduction approach is developed that reduces the transmission grid to a simplified structure that is applied in the market model. The grid reduction approach is based on a comparison of DC load flow solutions in the reduced and unreduced grid. Additionally, an approach for the calculation of tertiary reserves is given. The approach considers the wind forecast quality and combines probabilistic elements with an optimization. The simulation of wind power generation and forecasts combines different analyses and methods. General quantitative relations between the variability of wind power generation and the geographical region size are derived. The equations are applied in the simulation of wind power generation that is based on adapted wind power curves. The adapted power curves consider regional smoothing effects in the transformation of wind speed to wind power. The simulation results reflect the high variability of the concentrated offshore wind power. For the simulation of the wind power forecasts, a scenario generation method based on moment matching is presented that allows simulating non Gaussian distributed forecast errors and their correlations. The results of a statistical analysis of measured forecast errors are used in the simulation. An empirical relation between error correlation and geographical distance is for example given. The German forecast quality that is simulated for 2020 assuming an improvement of forecasting by 20% is, related to the installed capacity, similar to the one of today due to the high spatial concentration of the offshore capacities. For the scenario analysis of the power system in 2020, the power plant portfolios of twelve German regions and other parameters are derived based on different sources.
机译:陆上和海上风力发电能力的强劲增长是德国和其他国家/地区的官方政治目标。因此,在许多电力系统中,风能份额增加了。风力发电具有不同于常规发电厂的发电的其他特征。风是一种不断波动的自然资源。气象依赖性导致可用功率的有限可预测性。第三个方面是风电场集中在高风能发电量的地区,例如德国北部。从方法论的角度出发,本文着重分析了电力系统运行的三个方面以及相关建模方法的发展。这尤其是指随机优化模型在系统分析中的应用以及在风能发电和风能预测模拟中的应用。面向应用程序的重点是对2020年德国电力系统的情景分析。该分析旨在确定有前途的系统调整方案,这些方案可带来改进的风电集成和更有效的电力系统运行。在进行模型演示之前,将讨论上述三个方面的重要性,并为后者建模提供基础。结果表明,风力发电增加了残余负荷的波动,特别是当它们与残余负荷水平有关时。这里也考虑了火力发电厂的灵活性。对运行不确定性的分析表明,风力发电预测误差相对于负荷预测误差的重要性。解释了直流潮流模型和输电网的特性。提出了一种随机市场模型,可以对风电集成进行综合分析。优化模型的一个特征是滚动计划的应用,因此可以特别考虑预测误差。与早期模型版本相比,模型的主要修改是通过网格约束表示的。开发了一种网格缩减方法,该方法将输电网格缩减为市场模型中应用的简化结构。减少电网的方法基于缩小和未缩小电网中直流潮流解决方案的比较。此外,给出了一种计算第三级准备金的方法。该方法考虑了天气预报质量,并结合了概率元素和优化。风力发电和预报的模拟结合了不同的分析和方法。推导了风力发电的可变性与地理区域大小之间的一般定量关系。该等式被应用于基于适应的风力曲线的风力发电的仿真中。调整后的功率曲线考虑了将风速转换为风能时的区域平滑效应。仿真结果反映了集中海上风电的高度可变性。为了模拟风电功率预测,提出了一种基于矩匹配的情景生成方法,该方法可以模拟非高斯分布的预测误差及其相关性。在仿真中使用对测量的预测误差进行统计分析的结果。例如,给出了误差相关性与地理距离之间的经验关系。假设到2020年为止德国的预测质量模拟提高了20%,这与装机容量有关,由于海上容量的高度集中,与今天的装机容量相似。为了对2020年的电力系统进行情景分析,德国12个地区的电厂资产组合以及其他参数是基于不同的来源得出的。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号