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A novel approach to damage localisation based on bispectral analysis and neural network

机译:基于双谱分析和神经网络的损伤定位新方法

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摘要

The normalised version of bispectrum, the so-called bicoherence, has often proved a reliable method of damage detection on engineering applications. Indeed, higher-order spectral analysis (HOSA) has the advantage of being able to detect non-linearity in the structural dynamic response while being insensitive to ambient vibrations. Skewness in the response may be easily spotted and related to damage conditions, as the majority of common faults and cracks shows bilinear effects. The present study tries to extend the application of HOSA to damage localisation, resorting to a neural network based classification algorithm. In order to validate the approach, a non-linear finite element model of a 4-meters-long cantilever beam has been built. This model could be seen as a first generic concept of more complex structural systems, such as aircraft wings, wind turbine blades, etc. The main aim of the study is to train a Neural Network (NN) able to classify different damage locations, when fed with bispectra. These are computed using the dynamic response of the FE nonlinear model to random noise excitation.
机译:双谱的归一化版本,即所谓的双相干性,经常被证明是工程应用中可靠的损伤检测方法。实际上,高阶谱分析(HOSA)的优点是能够检测结构动态响应中的非线性,同时对环境振动不敏感。由于大多数常见的断层和裂缝都显示出双线性效应,因此很容易发现响应中的偏斜并与损坏情况相关。本研究试图借助基于神经网络的分类算法,将HOSA的应用扩展到损伤定位。为了验证该方法,已建立了一个4米长悬臂梁的非线性有限元模型。该模型可以看作是更复杂的结构系统(如飞机机翼,风力涡轮机叶片等)的第一个通用概念。该研究的主要目的是训练一种神经网络(NN),该神经网络可以在发生故障时对不同的损坏位置进行分类用bispectra喂食。这些是使用有限元非线性模型对随机噪声激励的动态响应来计算的。

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