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First Order Non-homogeneous Markov Chain Model for Generation of Wind Speed and Direction Synthetic Time Series

机译:风速与风向合成时间序列的一阶非齐次马尔可夫链模型

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摘要

This paper presents a non-homogeneous Markov Chain (MC) model for generation of wind speed (WS) and wind direction (WD) synthetic time series taking into account their daily, monthly and seasonal characteristics. The bivariate nature of the wind process, represented by WS and WD, is modelled by means of an equivalent univariate random variable W, capable of taking into account the statistical dependency existing between WS and WD. A statistical characterization of the wind energy resource at the specific considered site demonstrates the time non-stationarity of the wind process over the year and over the seasons, so twelve monthly transition probability matrices of the variable W are developed. One thousand synthetic time series, each of three years length, are generated in a Monte Carlo framework, demonstrating the excellent performances and overall robustness of the presented model, also using new non-conventional metrics based on Markov transition matrices.
机译:考虑到它们的日,月和季节特性,本文提出了一种非均匀的马尔可夫链(MC)模型,用于生成风速(WS)和风向(WD)综合时间序列。 WS和WD表示的风力过程的双变量性质是通过等效单变量随机变量W建模的,该变量可以考虑WS和WD之间存在的统计依赖性。在特定考虑地点的风能资源的统计特征表明,一年中和整个季节中风力过程的时间非平稳性,因此得出了变量W的十二个月度过渡概率矩阵。在Monte Carlo框架中生成了1000个合成时间序列,每个序列为三年,证明了所提出模型的出色性能和整体鲁棒性,还使用了基于Markov转移矩阵的新非常规度量。

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