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A particle filter-based model selection algorithm for fatigue damage identification on aeronautical structures

机译:基于粒子滤波的航空结构疲劳损伤识别模型选择算法

摘要

The early diagnosis of cracks in aeronautical structures is a fundamental task for the safe system operation and the optimization of maintenance policies, in view of the increasing interest in life extension programs of several high-investment industries. In principle, these tasks could be fulfilled within a condition-based framework, where direct or indirect observations of the degradation evolution are processed, possibly in real time, by proper diagnostic computational tools. In the past, several attempts have been made to build real-time monitoring systems collecting strain signals acquired from sensor networks. However, in real applications, some issues remain unresolved, for example, the large number of observations available to be handled within a unique diagnostic framework, their relationship with the underlying crack size, and their typical large uncertainties. In this paper, we provide a practical solution by innovatively combining a particle filtering-based model identification algorithm with a measurement system exploiting real-time observations of the crack length reconstructed by a committee of artificial neural networks. The artificial neural networks are trained by simulated strain fields generated by a finite element model. The resulting tool allows to perform an automatic, simultaneous, and real-time (a) selection of the model more properly describing the system state evolution, so as to detect the crack propagation onset time, (b) estimation of the model parameters, and (c) estimation of the crack length, within a unique probabilistic framework based on particle filtering. The methodology is demonstrated with reference to a real helicopter panel subject to fatigue and equipped with a fiber Bragg grating sensor network.
机译:鉴于几个高投资行业对延寿计划的兴趣日益浓厚,对航空结构裂缝进行早期诊断是安全系统运行和优化维护政策的一项基本任务。原则上,这些任务可以在基于条件的框架中完成,在该框架中,可以通过适当的诊断计算工具实时或实时处理降解演变的直接或间接观察结果。过去,已经进行了一些尝试来构建实时监测系统,以收集从传感器网络获取的应变信号。但是,在实际应用中,仍然存在一些问题尚未解决,例如,可以在独特的诊断框架中处理的大量观察结果,它们与潜在裂缝尺寸的关系以及典型的大不确定性。在本文中,我们将基于粒子滤波的模型识别算法与一种测量系统进行了创新地结合,从而提供了一种实用的解决方案,该系统利用对人工神经网络委员会重建的裂纹长度的实时观测。人工神经网络通过有限元模型生成的模拟应变场进行训练。所得的工具允许执行自动,同步和实时的(a)更适当地描述系统状态演变的模型选择,以便检测裂纹扩展开始时间,(b)估计模型参数,以及(c)在基于粒子滤波的唯一概率框架内估算裂纹长度。该方法论是参考一个经受疲劳并配备了光纤布拉格光栅传感器网络的实际直升机面板进行演示的。

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