论文标题

使用高斯工艺的重叠混合物,用于均匀的结构种群的广义形式

A generalised form for a homogeneous population of structures using an overlapping mixture of Gaussian processes

论文作者

Dardeno, Tina A., Bull, Lawrence A., Dervilis, Nikolaos, Worden, Keith

论文摘要

固有频率的降低通常用作结构健康监测(SHM)目的的损坏指标。但是,操作和环境条件的波动,边界条件的变化以及名义上相同的结构之间的略有差异也会影响刚度,从而产生模仿或掩盖损害的频率变化。这种差异限制了SHM技术的实际实施和概括。这项工作的目的是研究正常变异的效果,并确定解释产生不确定性的方法。 这项工作考虑了从四个健康的全尺度复合直升机叶片收集的振动数据。这些叶片名义上是相同的,但在叶片之间的材料特性和几何形状上的略有差异引起了频率响应函数的显着差异,这在整个输入空间中以四个独立的轨迹呈现。在本文中,使用高斯工艺(OMGP)的重叠混合物来生成标签并量化直升机叶片的正常条件频率响应数据的不确定性。使用基于人群的方法,OMGP模型提供了一种称为形式的通用表示形式,以表征叶片的正常状况。然后将其他模拟数据与形式进行比较,并使用边际样本新颖性指数评估损伤。

Reductions in natural frequency are often used as a damage indicator for structural health monitoring (SHM) purposes. However, fluctuations in operational and environmental conditions, changes in boundary conditions, and slight differences among nominally-identical structures can also affect stiffness, producing frequency changes that mimic or mask damage. This variability has limited the practical implementation and generalisation of SHM technologies. The aim of this work is to investigate the effects of normal variation, and to identify methods that account for the resulting uncertainty. This work considers vibration data collected from a set of four healthy full-scale composite helicopter blades. The blades were nominally-identical but distinct, and slight differences in material properties and geometry among the blades caused significant variability in the frequency response functions, which presented as four separate trajectories across the input space. In this paper, an overlapping mixture of Gaussian processes (OMGP), was used to generate labels and quantify the uncertainty of normal-condition frequency response data from the helicopter blades. Using a population-based approach, the OMGP model provided a generic representation, called a form, to characterise the normal condition of the blades. Additional simulated data were then compared against the form and evaluated for damage using a marginal-likelihood novelty index.

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