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Modeling Dynamic Spatial Correlations of Geographically Distributed Wind Farms and Constructing Ellipsoidal Uncertainty Sets for Optimization-Based Generation Scheduling

机译:建模分布式风电场的动态空间相关性,并为基于优化的发电计划构建椭球不确定性集

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The correlation information is very important for system operations with geographically distributed wind farms, and necessary for optimization-based generation scheduling methods such as the robust optimization (RO). The purpose of this paper is to provide the dynamic spatial correlations between the geographically distributed wind farms and apply them to model the ellipsoidal uncertainty sets for the robust unit commitment model. A stochastic dynamic system is established for the distributed wind farms based on a mesoscale numerical weather prediction (NWP) model, wind speed downscaling, and wind power curve models. By combining the observed wind generation measurements, a dynamic backtracking framework based on the extended Kalman filter is applied to predict the wind generation and the dynamic spatial correlations for the wind farms. In case studies, the new method is tested on actual wind farms and compared with the Gaussian copula method. The testing results validate the effectiveness of the new method. It is shown that the new method can provide more favorable interval forecasts for the aggregate wind generation than the Gaussian copula method in the entire forecast horizon, and by using the predicted spatial correlations, we can obtain more accurate ellipsoidal uncertainty sets than the Gaussian copula method and the frequently used budget uncertainty set (BUS).
机译:相关性信息对于具有地理分布的风电场的系统操作非常重要,对于基于优化的发电计划方法(如鲁棒优化(RO))是必需的。本文的目的是提供地理分布的风电场之间的动态空间相关性,并将其应用于鲁棒的机组承诺模型的椭圆不确定性集建模。基于中尺度数值天气预报(NWP)模型,风速降尺度和风能曲线模型,为分布式风电场建立了随机动态系统。通过组合观测到的风力发电量测,基于扩展卡尔曼滤波器的动态回溯框架可用于预测风力发电量以及风电场的动态空间相关性。在案例研究中,该新方法已在实际风电场中进行了测试,并与高斯copula方法进行了比较。测试结果验证了该新方法的有效性。结果表明,与高斯copula方法相比,新方法在总风能范围内可以提供更有利的风电间隔预报,并且通过使用预测的空间相关性,我们可以获得比gauss copula方法更准确的椭圆不确定性集。以及经常使用的预算不确定性集合(BUS)。

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