更好地表征海面风场的卫星观测和海上风能资源评价

M. Fragoso, L. Montera, R. Husson, Henrick Berger, P. Appelghem, L. Guerlou, Gaetan Fabritius
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引用次数: 0

摘要

本文提出了一种利用星载合成孔径雷达(SAR)数据生成涡轮机轮毂高度海上风力分布图的方法。提出了两种基于机器学习的技术。第一种可以用海洋浮标训练,第二种更精确,需要现场分析激光雷达。如果没有激光雷达,则可以通过机器学习改善10米的SAR表面风。然后用经典的幂律推算40米的海拔高度,再用大气数值模型推算更高的海拔高度。如果有轮廓激光雷达可用,则将数值模型中的参数作为输入添加到机器学习算法中,并使用激光雷达数据直接在涡轮轮毂高度进行训练。一旦获得涡轮机轮毂高度处的风力,就可以使用威布尔分布计算风力。将得到的映射与数值模型的输出进行比较。基于SAR数据的地图提供了更高层次的细节和更好的海岸梯度估计,这对优化风电场选址和估计潜在的能源生产非常重要。与激光雷达相比,风力发电的精度在±5%的范围内。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Satellite Observations for Better Characterization of Sea Surface Wind Field and Offshore Wind Energy Resource Assessment
This paper presents a method to generate maps of offshore wind power at turbine hub height from spaceborne Synthetic Aperture Radar (SAR) data. Two techniques based on machine learning are presented. The first can be trained with metocean buoys and the second one, more precise, requires on-site profiling Lidars. If Lidars are not available, SAR surface winds at 10m are improved with machine learning. They are then extrapolated at 40m with a classical power law, and then at higher altitudes with an atmospheric numerical model. If profiling Lidars are available, parameters from the numerical model are added as input to the machine learning algorithm and the training is performed directly at turbine hub height with the Lidar data. Once the wind at turbine hub height is obtained, the wind power is then calculated using a Weibull distribution. The resulting maps are compared with the outputs of the numerical model. The maps based on SAR data provide a much higher level of detail and a better estimation of the coastal gradient, which is important to optimize wind farm siting and estimate the potential energy production. The accuracy of the wind power is found to be in the range ±5% compared to the Lidars.
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