Bayes prediction of wind gusts for Wind Power Plants Reliability Estimation

E. Chiodo, D. Lauria
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引用次数: 13

Abstract

For an efficient Wind Power Plants Reliability Estimation, the extreme gusts are the most important features of wind speed statistics, in order to quantify the destruction brought about by extreme winds. With the purpose of characterizing these destructive wind forces, which are random in nature, an appropriate stochastic model is adopted in the paper. Such model is based upon the probabilistic modeling of gusts occurrence by means of a Poisson Process, while the amplitude of extreme gust wind speeds is modeled by means of suitable extreme value distributions. This approach yields an appropriate “safety function” of the structure, which is defined as the probability that the stochastic process: “largest extreme gust amplitude” is smaller than a given threshold value, in a given time interval. Such safety function can be easily converted into a “safety horizon” (SH), i.e. a time interval in which the WGA smaller than a given threshold value z, with a given high probability value p. If z is chosen as the maximum value of the WGA that the structure can resist, then the SH is an efficient measure (i.e., an opportune quantile) of the time to failure of the structure.
风力发电厂可靠性估计中阵风的贝叶斯预测
对于高效的风电场可靠性估计,风速统计中最重要的特征是极端阵风,以量化极端风带来的破坏。为了表征这些具有随机性的破坏性风力,本文采用了合适的随机模型。该模型是基于泊松过程对阵风发生的概率模拟,而极端阵风风速的振幅是通过合适的极值分布来模拟的。这种方法产生了一个适当的结构“安全函数”,它被定义为在给定时间间隔内,随机过程“最大极端阵风振幅”小于给定阈值的概率。这种安全函数可以很容易地转换为“安全水平”(SH),即WGA小于给定阈值z的时间间隔,具有给定的高概率值p。如果选择z作为结构可以抵抗的WGA的最大值,则SH是结构失效时间的有效度量(即合适的分位数)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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