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The importance of atmospheric turbulence and stability in machine-learning models of wind farm power production

机译:在风电场发电的机器学习模型中,大气湍流和稳定性的重要性

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Machine learning is frequently applied in the wind energy industry to build statistical models of wind farm power production using atmospheric data as input. In the field of wind power forecasting, in particular, there has been substantial research into finding the best-performing learning algorithms that improve model predictions. Overlooked in the literature, however, is the influence of atmospheric turbulence and stability measurements in improving model predictions. It has been well-established through observations and physical models that these effects can have considerable influence on wind farm power production; yet consideration of these effects in statistical models is almost entirely absent from the literature. In this work, we examine the impact of atmospheric turbulence and stability inputs on statistical model predictions of wind farm power output. Hourly observations from a wind farm in the Pacific Northwest United States located in very complex terrain are used. Five common learning algorithms and nine atmospheric variables are considered, five of which represent some measure of turbulence or stability. We find a considerable improvement in hourly power predictions when some measure of turbulence or stability is included in the model. In particular, turbulent kinetic energy was found to be the most important variable apart from wind speed and more important than wind direction, pressure, and temperature. By contrast, the choice of learning algorithm is shown to be relatively less important in improving predictions. Based on this work, we recommend that turbulence and stability variables become standard inputs into statistical models of wind farm power production.
机译:机器学习经常在风能行业中应用,以大气数据为输入来构建风电场发电量的统计模型。特别是在风电预测领域,已经进行了大量研究,以发现可改善模型预测的最佳学习算法。然而,文献中忽略了大气湍流和稳定性测量对改进模型预测的影响。通过观察和物理模型已经很好地证明了这些影响会对风电场的发电产生相当大的影响。然而,文献中几乎完全没有考虑统计模型中的这些影响。在这项工作中,我们研究了大气湍流和稳定性输入对风电场发电量统计模型预测的影响。使用每小时从位于美国西北太平洋的风电场中观察到的非常复杂的地形。考虑了五种常见的学习算法和九种大气变量,其中五种代表某种程度的湍流或稳定性。当在模型中包括某种程度的湍流或稳定度时,我们发现小时功率预测有了很大的改进。特别是,除了风速外,湍动能是最重要的变量,比风向,压力和温度更重要。相比之下,学习算法的选择在改善预测中显得相对次要。基于这项工作,我们建议将湍流和稳定性变量作为风电场发电量统计模型的标准输入。

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