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Selecting Representative Days for More Efficient Dynamical Climate Downscaling: Application to Wind Energy

机译:选择代表性的日子以提高效率的动态气候降尺度:在风能中的应用

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This paper describes a new computationally efficient and statistically robust sampling method for generating dynamically downscaled climatologies. It is based on a Monte Carlo method coupled with stratified sampling. A small yet representative set of "case days" is selected with guidance from a large-scale reanalysis. When downscaled, the sample closely approximates the long-term meteorological record at a location, in terms of the probability density function. The method is demonstrated for the creation of wind maps to help determine the suitability of potential sites for wind energy farms. Turbine hub-height measurements at five U. S. and European tall tower sites are used as a proxy for regional climate model (RCM) downscaled winds to validate the technique. The tower-measured winds provide an independent test of the technique, since RCM-based downscaled winds exhibit an inherent dependence upon the large-scale reanalysis fields from which the case days are sampled; these same reanalysis fields would provide the boundary conditions to the RCM. The new sampling method is compared with the current approach widely used within the wind energy industry for creating wind resource maps, which is to randomly select 365 case days for downscaling, with each day in the calendar year being represented. The new method provides a more accurate and repeatable estimate of the long-term record of winds at each tower location. Additionally, the new method can closely approximate the accuracy of the current (365 day) industry approach using only a 180-day sample, which may render climate downscaling more tractable for those with limited computing resources.
机译:本文介绍了一种新的计算有效且统计稳定的采样方法,用于生成动态缩减的气候。它基于蒙特卡罗方法和分层抽样。在大规模重新分析的指导下,选择了一小部分具有代表性的“案例日”。当按比例缩小时,样本就概率密度函数而言非常接近某个位置的长期气象记录。演示了用于创建风图的方法,以帮助确定潜在地点对风电场的适用性。在美国和欧洲的五个高塔站点上的涡轮轮毂高度测量被用作区域气候模型(RCM)缩减风的代理,以验证该技术。塔架测风提供了对该技术的独立测试,因为基于RCM的缩小风表现出对采样天数的大规模再分析场的内在依赖。这些相同的重新分析字段将为RCM提供边界条件。将该新采样方法与风能行业中广泛使用的当前方法进行了比较,以创建风资源图,该方法将随机选择365个案例日以进行降级,并代表日历年中的每一天。新方法可以更准确,可重复地估算每个塔架位置的长期风记录。此外,新方法仅使用180天的样本就可以非常接近当前(365天)行业方法的准确性,这对于那些计算资源有限的人来说,降低气候变化的规模更加容易。

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