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Utilizing physics-based input features within a machine learning model to predict wind speed forecasting error

机译:利用机器学习模型中基于物理的输入特征,以预测风速预测误差

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Machine learning is quickly becoming a commonly used technique for wind speed and power forecasting. Many machine learning methods utilize exogenous variables as input features, but there remains the question of which atmospheric variables are most beneficial for forecasting, especially in handling non-linearities that lead to forecasting error. This question is addressed via creation of a hybrid model that utilizes an autoregressive integrated moving-average?(ARIMA) model to make an initial wind speed forecast followed by a random forest model that attempts to predict the ARIMA forecasting error using knowledge of exogenous atmospheric variables. Variables conveying information about atmospheric stability and turbulence as well as inertial forcing are found to be useful in dealing with non-linear error prediction. Streamwise wind speed, time of day, turbulence intensity, turbulent heat flux, vertical velocity, and wind direction are found to be particularly useful when used in unison for hourly and 3?h timescales. The prediction accuracy of the developed ARIMA–random forest hybrid model is compared to that of the persistence and bias-corrected ARIMA models. The ARIMA–random forest model is shown to improve upon the latter commonly employed modeling methods, reducing hourly forecasting error by up to 5?% below that of the bias-corrected ARIMA model and achieving an R 2 ?value of?0.84 with true wind speed.
机译:机器学习迅速成为风速和电力预测的常用技术。许多机器学习方法利用外源变量作为输入特征,但仍然存在大气变量最有利的问题,特别是在处理导致预测错误的非线性方面。通过创建一个混合模型来解决该问题,该混合模型利用自回归综合移动平均值?(ARIMA)模型来进行初始风速预测,然后尝试使用外源性大气变量的知识预测ARIMA预测误差的随机林模型。传送有关大气稳定性和湍流以及惯性强制的变量,用于处理非线性误差预测。当时每小时使用时,发现一天的风速,一天的风速,湍流强度,湍流热量,垂直速度和风向。将开发的ARIMA-随机森林混合模型的预测精度与持久性和偏置校正的ARIMA模型进行了比较。 ARIMA-随机森林模型显示出在后者常用的建模方法上改进,将每小时预测误差减少到低于偏置的ARIMA模型的5?%,并实现R 2的r 2?0.84与真风为0.84速度。

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