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Modelling long-term vibration monitoring data with Gaussian Process time-series models ?

机译:使用高斯过程时间序列模型对长期振动监测数据进行建模

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摘要

Gaussian Process (GP) time-series models are a special type of models for Linear Parameter Varying (LPV) systems in which the parameters are represented as stochastic variables following a Gaussian Process regression of the scheduling variables. GP time-series models are ideal for the representation of LPV systems where some of the scheduling variables are uncertain or immeasurable, as is the case in most real-life Structural Health Monitoring (SHM) applications. In this work, a fully parametric version of GP is adopted, most suitable for identification based on large datasets typically originated in SHM campaigns. Here, the model identification problem is addressed via global and local approaches, while is demonstrated that the latter case corresponds to a sub-optimal version of the global optimization. Finally, the GP time-series modelling methodology is demonstrated on the identification of the simulated vibration response of a wind turbine blade, where temperature and wind speed act as scheduling parameters.
机译:高斯过程(GP)时间序列模型是用于线性参数变量(LPV)系统的一种特殊类型的模型,其中,在调度变量的高斯过程回归之后,参数表示为随机变量。 GP时间序列模型非常适合表示LPV系统,其中某些调度变量是不确定的或无法测量的,就像大多数现实生活中的结构健康监控(SHM)应用程序一样。在这项工作中,采用了完全参数化的GP版本,最适合基于通常源自SHM活动的大型数据集进行识别。在此,通过全局和局部方法解决了模型识别问题,同时证明了后者的情况对应于全局优化的次优版本。最后,在确定温度和风速作为调度参数的风力涡轮机叶片的模拟振动响应的识别上,演示了GP时间序列建模方法。

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