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Characterization and Estimation of Wind Energy Resources Using Autoregressive Modelling and Probability Density Functions

机译:利用自回归模型和概率密度函数表征和估算风能资源

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The commonly used two-parameter Weibull distribution has fitted many wind speed distributions reasonably well. However, the use of such probability density functions (PDFs) does not provide a very accurate description of wind resources. The main drawback is that the wind time series data are assumed to be uncorrelated over time. This paper studies autoregressive (AR) modelling as an alternative method to characterize a given wind regime. The AR model allows for a very accurate representation of the wind resource and additionally, provides a tool for its forecasting. The AR model is compared with commonly used non-Gaussian distributions for two Caribbean wind-speed time-series. The comparison evaluates the fitting of the models, and, most importantly, the estimated values of power and energy to be extracted from the wind resource. It is concluded that autoregressive (AR) modelling provides greater accuracy than the popular Weibull and Rayleigh distributions, especially for low wind-speed systems.
机译:常用的两参数威布尔分布已经很好地拟合了许多风速分布。但是,使用这种概率密度函数(PDF)不能提供对风资源的非常准确的描述。主要缺点是,假设风时间序列数据随时间不相关。本文研究自回归(AR)建模作为表征给定风态的替代方法。 AR模型可以非常精确地表示风资源,此外,它还提供了一种预报工具。将AR模型与两个加勒比风速时间序列的常用非高斯分布进行比较。比较将评估模型的拟合,最重要的是评估将从风能中提取的功率和能量的估计值。结论是,自回归(AR)建模比流行的Weibull和Rayleigh分布具有更高的准确性,尤其是对于低风速系统。

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