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An Approach on How to Determine Key Performance Indicators for Guided Wave Based SHM Systems Based on Numerical Simulation

机译:基于数值模拟的导波SHM系统关键性能指标确定方法

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Realization of an efficient SHM system for an arbitrarily shaped damage tolerant structure requires a clear understanding of what needs to be monitored. This may be determined through key performance indicators (KPI) being characteristics with respect to a tolerable damage to be monitored. Those characteristics can vary due to different reasons such as a structure's geometry, the shape, size or type of the damage, the type of material and possibly other factors as well. To obtain an appropriate understanding of what a physical principle such as mechanical and hence guided waves does when travelling through a structure, numerical simulation can be of invaluable help. Starting from such a simulation the time domain signals to be monitored in practice can be generated that will subsequently be processed in a sequence of steps ending up in an artificial neural network (ANN) such that KPIs are derived that will then be used to realize an appropriate SHM system in practice. The sequence developed will be demonstrated along two examples, a first one being a plate with a notch grove through which guided waves are sent and the resulting signals are processed considering different algorithms looking at the time domain signal first and then moving onwards to difference of signals, Hilbert transform, oblique polarization filtering, and statistical methods like Auto-Covariance Function (ACF), Linear correlation coefficient, root mean square deviation and mean absolute error. Features of those algorithms are then used to train an ANN, which is finally due to provide the KPIs for signals recorded. The procedure is then applied to a more complex component being a riveted patched repair where it will be shown if the features determined from the simple plate with the notch grove can be simply transferred to the patch repair or what additional simulation work has to be done such that the KPIs can be identified accordingly. Based on these simulations an SHM system is then realized used for validation.
机译:对于任意形状的容忍结构,要实现有效的SHM系统,需要对需要监视的内容有清晰的了解。这可以通过关键性能指标(KPI)来确定,该指标是有关要监视的可容忍损坏的特征。这些特性可能由于不同的原因而变化,例如结构的几何形状,损坏的形状,大小或类型,材料的类型以及可能还有其他因素。为了对物理原理(例如机械波和因此的导波)在穿过结构时的运行情况有一个适当的了解,数值模拟可能会提供极大的帮助。从这样的仿真开始,可以生成要在实践中监视的时域信号,随后将按照步骤序列对这些信号进行处理,最后以人工神经网络(ANN)进行处理,从而得出KPI,然后将其用于实现在实践中使用适当的SHM系统。所开发的序列将通过两个示例进行演示,第一个示例是带有陷波槽的板,通过该板发送导向波,并考虑到不同的算法,首先考虑时域信号,然后处理不同的信号,然后处理所得信号,希尔伯特变换,斜极化滤波以及统计方法,例如自协方差函数(ACF),线性相关系数,均方根偏差和平均绝对误差。然后将这些算法的功能用于训练ANN,这最终是由于为记录的信号提供了KPI。然后将该程序应用于铆接修补修复的一个更复杂的组件,其中将显示从带有缺口槽的简单板上确定的特征是否可以简单地转移到修补修复中,或者必须执行哪些附加的模拟工作。可以据此确定KPI。基于这些模拟,然后将SHM系统用于验证。

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