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UNCERTAINTY QUANTIFICATION OF WIND TURBINE WAKES UNDER RANDOM WIND CONDITIONS

机译:随机风条件下风轮机尾流的不确定度定量

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Understanding and minimizing the uncertainties in the wind energy field is of high importance to reduce the reliability risks and financial risks of wind farm projects. The present work aims to observe the levels of uncertainty in modeling the wake effect by attempting to perform statistical inference of a wake parameter, the wind speed deficit. For this purpose, an uncertainty propagation framework is presented. The framework starts by randomly sampling mean wind speed data from its probability density function (PDF), that is fed an inflow model (TurbSim), resulting in random full-flow fields that are integrated into an aeroelastic model (FAST), which results in the variability of the power and thrust coefficients of a wind turbine. Such coefficients and wind data, finally, fed the wake engineering model (FLORIS). The framework ends with the determination of the 95% coefficient intervals of the time-averaged wind speed deficit. The results obtained for the near and far wake regions introduce fundamentals in estimate the uncertainty in wind speed deficit of a single wind turbine wake and concludes that a systematic uncertainty quantification (UQ) framework for wind turbine wakes may be a useful tool to wind energy projects.
机译:了解并最小化风能领域中的不确定性对于降低风电场项目的可靠性风险和财务风险非常重要。本工作旨在通过尝试对苏醒参数(风速赤字)进行统计推断,观察在对苏醒效果进行建模时的不确定性水平。为此,提出了不确定性传播框架。该框架首先从概率密度函数(PDF)中随机采样平均风速数据,然后将其输入到流入模型(TurbSim)中,从而将随机的全流场集成到空气弹性模型(FAST)中,从而得出风力发电机的功率和推力系数的可变性。这些系数和风数据最终馈入了尾流工程模型(FLORIS)。该框架以时间平均风速赤字的95%系数区间的确定结束。从近尾和远尾区域获得的结果为估算单个风力涡轮机尾流的风速赤字的不确定性引入了基础,并得出结论,针对风力涡轮机尾流的系统不确定性量化(UQ)框架可能是风能项目的有用工具。

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