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Towards efficient wind energy monitoring: Learning more from open source data

机译:迈向高效的风能监控:从开源数据中学到更多

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Europe’s massive shift towards sustainable energy production has triggered a variety of new large scale projects, and wind energy is a crucial part of the effort to achieve a carbon-free future. However, because of their low financial impact and relatively high measurement campaign costs, small scale projects are often deemed impractical beforehand. To help small communities gain insight on the wind energy conditions in their surroundings, the present work briefly introduces a measuring station (MEST) concept based on affordable electronic components and proposes a solution to alleviating the effects of inevitable measurement data inconsistency on the energy yield analysis. By leveraging open source machine learning models and establishing a link with the publicly available ERA5-Land climate database, missing wind speed measurement data is reconstructed at an accuracy of up to 0.11 $rac{m}{s}$. The impact of data reconstruction on the estimated energy production of a wind turbine (WT) erected at the measuring location is then evaluated using the measurement data acquired by a MEST prototype and the ERA5-Land data recorded during October and November 2019. The results indicate that at a location experiencing moderate wind speeds, the estimated energy output of the WT is increased by up to 2 % in comparison with other data analysis procedures. Although the minute underestimation is not of great importance to the success of the analysis, the inaccuracies at higher wind speeds have a far more profound effect on the WT’s estimated energy output, and they can stop a potentially successful wind energy project from gaining further attention.
机译:欧洲的巨大转向可持续的能源产量已引发各种新的大规模项目,而风能是实现无碳未来努力的关键部分。然而,由于其低财务影响和相对较高的测量活动成本,小规模项目通常预先认为是不切实际的。为了帮助小社区对周围环境中的风能条件深入了解,本工作简要介绍了基于经济实惠的电子元件的测量站(Mest)概念,并提出了一种解决方案,以减轻不可避免的测量数据不一致对能源分析的影响。通过利用开源机器学习模型并与公开的ERA5地气候数据库建立联系,缺少风速测量数据以高达0.11 $ \ FRAC {M} $的准确性重建。然后使用由Mest Prototype和2019年10月期间记录的ERA5-LAND数据所获取的测量数据进行评估数据重建对竖立在测量位置的风力涡轮机(WT)的估计能量产生的影响。结果表明在遇到中等风速的位置,与其他数据分析程序相比,WT的估计能量输出增加了高达2%。虽然微弱的时间对分析成功不重要,但风速较高的不准确性对WT的估计能源产量具有更深刻的影响,并且可以阻止潜在的风能项目进一步关注。

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