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SHORT TERM WIND SPEED FORECASTING BASED ON BAYESIAN MODEL AVERAGING METHOD

机译:贝叶斯模型平均法的短期风速预测

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Wind energy has been the world's fastest growing source of clean and renewable energy in the past decade. One of the fundamental difficulties faced by power system operators, however, is the unpredictability and variability of wind power generation, which is closely connected with the continuous fluctuations of the wind resource. Good short-term wind speed forecasting methods and techniques are urgently needed since it is important for wind energy conversion systems in terms of the relevant issues associated with the dynamic control of the wind turbine and the integration of wind energy into the power system. This paper proposes the application of Bayesian Model Averaging (BMA) method in combining the one-hour-ahead short-term wind speed forecasts from different statistical models. Based on the hourly wind speed observations from one representative site within North Dakota, four statistical models are built and the corresponding forecast time series are obtained. These data are then analyzed by using BMA method. The goodness-of-fit test results show that the BMA method is superior to its component models by providing a more reliable and accurate description of the total predictive uncertainty than the original elements, leading to a sharper probability density function for the probabilistic wind speed predictions.
机译:在过去的十年中,风能一直是世界上增长最快的清洁和可再生能源。然而,电力系统运营商面临的基本困难之一是风力发电的不可预测性和可变性,这与风力资源的持续波动密切相关。迫切需要良好的短期风速预测方法和技术,因为就与风轮机的动态控制以及将风能集成到电力系统中相关的问题而言,这对于风能转换系统很重要。本文提出了贝叶斯模型平均(BMA)方法在结合来自不同统计模型的一小时提前短期风速预测中的应用。基于北达科他州一个代表性站点的每小时风速观测值,建立了四个统计模型,并获得了相应的预测时间序列。然后使用BMA方法分析这些数据。拟合优度测试结果表明,通过提供比原始元素更可靠,更准确的总预测不确定性描述,BMA方法优于其组件模型,从而为概率风速预测提供了更清晰的概率密度函数。

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