Structural health monitoring (SHM) has been an active research area for the last three decades, and has accumulated a number of critical advances over that period, as can be seen in the literature. However, SHM is still facing challenges because of the paucity of damage-state data, operational and environmental fluctuations, repeatability issues, and changes in boundary conditions. These issues present as inconsistencies in the captured features and can have a huge impact on the practical implementation, but more critically, on the generalisation of the technology. Population-based SHM has been designed to address some of these concerns by modelling and transferring missing information using data collected from groups of similar structures. In this work, vibration data were collected from four healthy, nominally-identical, full-scale composite helicopter blades. Manufacturing differences (e.g., slight differences in geometry and/or material properties), among the blades presented as variability in their structural dynamics, which can be very problematic for SHM based on machine learning from vibration data. This work aims to address this variability by defining a general model for the frequency response functions of the blades, called a form, using mixtures of Gaussian processes.
翻译:过去三十年来,结构健康监测(SHM)一直是一个积极的研究领域,并且从文献中可以看出,在这期间积累了一些重大进展,然而,SHM仍面临挑战,因为缺少破坏状态数据、操作和环境波动、重复性问题以及边界条件的变化,这些问题是所捕获特征的不一致之处,可能对技术的实际实施产生巨大影响,但更为关键的是,对技术的普及产生巨大影响。以人口为基础的SHM旨在通过利用从类似结构组收集的数据进行建模和传送缺失的信息来解决其中一些关切。在这项工作中,从四种健康的、名义上相同的全面复合直升机刀片中收集了振动数据。作为结构动态变异性的刀片(例如几何和(或)物质特性的微小差异)在结构变异性的刀片中存在差异,根据机器从振动数据中学习机器数据,可能对SHMM产生极大问题。这项工作的目的是通过确定一种一般模式来解决这种变异性,即用Gassian过程的混合形式来界定刀片频率反应功能的一般模式。