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Performance of vibration based damage detection algorithms for detection of disbond in stiffened metallic plates

机译:基于振动损伤检测算法的性能检测加强金属板中的禁用

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Though vibration based health monitoring has been the focus of attention for quite some time, there exist a strong requirement for an extensive and comprehensive study on the relative performance of different damage detection algorithms under different damage scenarios. To fulfill this objective, a stiffened aluminium plate has been selected to make a comparative study on the performance of several vibration based damage detection techniques, namely, Modal Curvature, Gapped Smoothing Method/Modal Curvature, Generalized Fractal Dimension and Uniform Load Surface Curvature based on four different criteria: variation of damage intensity (i.e., disbond length), position of stiffener and disbond, the effect of noise and capability to detect multiple damage. In addition to this, a new approach, based on the curvature of wavelet coefficients, has been presented. It is found that this novel approach is extremely effective in determining the presence and location of damage under different situations. The entire numerical modelling is done in ANSYS 14.0 and the damage detection algorithms written in MATLAB codes have been used to generate the required damage indices using the modal data retrieved from ANSYS. The study ultimately enlightens inherent characteristics of the various damage detection algorithms under different damage conditions.
机译:虽然基于振动的健康监测一直是关注的焦点,但很大程度上存在强烈的要求,对不同损伤情景下不同损伤检测算法的相对性能进行广泛和全面的研究。为了实现这一目标,已经选择了一种加强的铝板,进行了对几种基于振动的损伤检测技术的性能的比较研究,即模态曲率,螺纹平滑方法/模态曲率,广义分形尺寸和均匀的负载表面曲率四种不同的标准:损伤强度的变化(即,禁用长度),加强筋的位置和禁止的位置,噪音的效果和检测多次损坏的能力。除此之外,还提出了一种基于小波系数曲率的新方法。结果发现,这种新的方法在确定不同情况下损坏的存在和位置非常有效。整个数值建模在ANSYS 14.0中完成,并且已经使用了在MATLAB代码中写入的损坏检测算法来使用从ANSYS检索的模态数据生成所需的损坏指标。该研究最终在不同损伤条件下启明了各种损伤检测算法的固有特征。

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