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首页> 外文期刊>Journal of the Brazilian Society of Mechanical Sciences and Engineering >Generation of stationary Gaussian processes and extreme value distributions for high-cycle fatigue models - application to tidal stream Turbines
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Generation of stationary Gaussian processes and extreme value distributions for high-cycle fatigue models - application to tidal stream Turbines

机译:高周期疲劳模型的平稳高斯过程和极值分布的生成-在潮汐涡轮机上的应用

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摘要

The operating environment of tidal stream turbines is random due to the variability of the sea flow (turbulence, wake, tide, streams, among others). This yields complex time-varying random loadings, making it necessary to deal with high cycle multiaxial fatigue when designing such structures. It is thus required to apprehend extreme value distributions of stress states, assuming they are stationary multivariate Gaussian processes. This work focus on such distributions, addressing their numerical simulation with an analytical description. For that, we first focused on generating one-dimensional Gaussian processes, considering a band-limited white noise in both the narrow-band and the wide-band cases. We then fitted the resulting extreme value distributions with GEV distributions. We secondly extended the generation method to the correlated two-dimensional case, in which the joint extreme value distribution can be obtained from the associated margins. Finally, an example of application related to tidal stream turbines introduces a Bretschneider spectrum, whose shape is commonly encountered in the field of hydrology. Comparing the empirical calculations with the GEV fits for the extreme value distributions shows a very well agreement between the results.
机译:由于海流(湍流,尾流,潮汐,溪流等)的变化,潮汐流涡轮机的运行环境是随机的。这会产生复杂的随时间变化的随机载荷,因此在设计此类结构时必须应对高循环多轴疲劳。因此,假设应力状态是平稳的多元高斯过程,就需要了解应力状态的极值分布。这项工作着重于这种分布,并通过分析描述解决了它们的数值模拟问题。为此,我们首先专注于生成一维高斯过程,同时考虑在窄带和宽带情况下的带限白噪声。然后,我们将得到的极值分布与GEV分布进行拟合。其次,我们将生成方法扩展到相关的二维情况,在这种情况下,可以从关联的边距获得联合极值分布。最后,一个与潮汐流涡轮机相关的应用示例介绍了Bretschneider频谱,其形状在水文学领域很常见。将经验计算与GEV适合极值分布的结果进行比较,表明结果之间的一致性很好。

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