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Dynamic Bayesian temporal modeling and forecasting of short-term wind measurements

机译:动态贝叶斯时间建模与短期风测量预测

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We present a new Bayesian modeling approach for joint analysis of wind components and short-term wind prediction. This approach considers a truncated bivariate matrix Bayesian dynamic linear model (TMDLM) that jointly models the u (zonal) and v (meridional) wind components of observed hourly wind speed and direction data. The TMDLM takes into account calm wind observations and provides joint forecasts of hourly wind speed and direction at a given location. The proposed model is compared to alternative empirically-based time series approaches that are often used for short-term wind prediction, including the persistence method (naive predictor), as well as univariate and bivariate ARIMA models. Model performance is measured predictively in terms of mean squared errors associated to 1-h and 24-h ahead forecasts. We show that our approach generally leads to more accurate short term predictions than these alternative approaches in the context of analysis and forecasting of hourly wind measurements in 3 locations in Northern California for winter and summer months. (C) 2020 Elsevier Ltd. All rights reserved.
机译:我们展示了一种新的贝叶斯建模方法,用于对风能分量和短期风预测进行联合分析。该方法考虑了一个截断的双变量矩阵贝叶斯动态线性线性模型(TMDLM),其共同模拟了观察到的每小时风速和方向数据的u(Zonal)和V(子午线)风分量。 TMDLM考虑了平静的风析,并在给定位置提供每小时风速和方向的关节预测。将所提出的模型与替代的基于经验的时间序列方法进行比较,该方法通常用于短期风预测,包括持久性方法(天真预测器),以及单变量和二偏见Arima模型。模型性能在与1小时和24-H联系的平均平方误差方面是预测的。我们认为,我们的方法通常导致比这些替代方法在冬季和夏季北加州的3个地点分析和预测的上下文中的替代方法,而不是这些替代方法。 (c)2020 elestvier有限公司保留所有权利。

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