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Quantification and localisation of damage in beam-like structures by using artificial neural networks with experimental validation

机译:使用人工神经网络和实验验证,对梁状结构中的损伤进行量化和定位

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摘要

This paper presents a damage detection algorithm using a combination of global (changes in natural frequencies) and local (curvature mode shapes) vibration-based analysis data as input in artificial neural networks (ANNs) for location and severity prediction of damage in beam-like structures. A finite element analysis tool has been used to obtain the dynamic characteristics of intact and damaged cantilever steel beams for the first three natural modes. Different damage scenarios have been introduced by reducing the local thickness of the selected elements at different locations along finite element model (FEM) of the beam structure. The necessary features for damage detection have been selected by performing sensitivity analyses and different input-output sets have been introduced to various ANNs. In order to check the robustness of the input used in the analysis and to simulate the experimental uncertainties, artificial random noise has been generated numerically and added to noise-free data during the training of the ANNs. In the experimental analysis, two steel beams with eight distributed surface-bonded electrical strain gauges and an accclerometer mounted at the tip have been used to obtain modal parameters such as resonant frequencies and strain mode shapes. Finally, trained feed-forward backpropagation ANNs have been tested using the data obtained from the experimental damage case for quantification and localisation of the damage.
机译:本文提出了一种损伤检测算法,该方法结合了基于整体(固有频率的变化)和局部(曲率模式形状)基于振动的分析数据作为人工神经网络(ANN)的输入,用于对梁状损伤的位置和严重性进行预测结构。对于前三个自然模式,已经使用有限元分析工具来获得完整且受损的悬臂梁的动力特性。通过沿梁结构的有限元模型(FEM)在不同位置减小选定元素的局部厚度,已引入了不同的损伤方案。通过进行敏感性分析,选择了用于损坏检测的必要功能,并将不同的输入输出集引入了各种人工神经网络。为了检查分析中使用的输入的鲁棒性并模拟实验不确定性,已人工生成了人工随机噪声,并将其添加到ANN训练过程中的无噪声数据中。在实验分析中,已使用具有八个分布的表面粘结电应变仪和安装在尖端的加速度计的两根钢梁来获得模态参数,例如共振频率和应变模式形状。最后,已使用从实验性伤害案例获得的数据对训练后的前馈反向传播ANN进行了测试,以对伤害进行量化和定位。

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