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Configuration of Statistical Postprocessing Techniques for Improved Low-Level Wind Speed Forecasts in West Texas

机译:在西德克萨斯州改善低水平风速预测的统计后处理技术的配置

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The wind energy industry needs accurate forecasts of wind speeds at turbine hub height and in the rotor layer to accurately predict power output from a wind farm. Current numerical weather prediction (NWP) models struggle to accurately predict low-level winds, partially due to systematic errors within the models due to deficiencies in physics parameterization schemes. These types of errors are addressed in this study with two statistical postprocessing techniques-model output statistics (MOS) and the analog ensemble (AnEn)-to understand the value of each technique in improving rotor-layer wind forecasts. This study is unique in that it compares the techniques using a sonic detection and ranging (SODAR) wind speed dataset that spans the entire turbine rotor layer. This study uses reforecasts from the Weather Research and Forecasting (WRF) Model and observations in west Texas over periods of up to two years to examine the skill added to forecasts when applying both MOS and the AnEn. Different aspects of the techniques are tested, including model horizontal and vertical resolution, number of predictors, and training set length. Both MOS and the AnEn are applied to several levels representing heights in the turbine rotor layer (40, 60, 80, 100, and 120 m). This study demonstrates the degree of improvement that different configurations of each technique provides to raw WRF forecasts, to help guide their use for low-level wind speed forecasts. It was found that both AnEn and MOS show significant improvement over the raw WRF forecasts, but the two methods do not differ significantly from each other.
机译:风能行业在涡轮枢纽高度和转子层中需要准确的风速预测,以精确地预测来自风电场的功率输出。目前的数值天气预报(NWP)模型努力准确地预测低级风,部分原因是由于物理参数化方案中的缺陷由于模型中的系统错误。这些类型的错误在本研究中解决了两个统计后处理技术 - 模型输出统计(MOS)和模拟集合(Anen) - 了解改善转子层风预测中的每种技术的值。该研究是独一无二的,因为它比较了使用Sonic检测和测距(SODAR)风速数据集的技术,所述风速数据集跨越整个涡轮机转子层。本研究使用天气研究和预测(WRF)模型的重新折叠和西德克萨斯州的观测,多达两年的时间,以检查在应用MOS和Anen时添加预测的技能。测试技术的不同方面,包括模型水平和垂直分辨率,预测器的数量和训练设定长度。 MOS和ANEN均应用于表示涡轮机转子层(40,60,80,100和120m)中的高度的几个层次。本研究展示了各种技术的不同配置提供给RAW WRF预测的改进程度,以帮助指导其用于低水平风速预测的用途。结果发现Anen和MOS在原始WRF预测上显示出显着改善,但这两种方法与彼此没有显着差异。

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