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Damage detection in composite structure based on damage recognition an localization algorithm of high accuracy

机译:基于损伤识别的复合结构损伤检测及高精度定位算法

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Composite laminates are widely used due to the advantages of low density, high specific modulus and specific strength, strong internal damping and excellent chemical stability. Invisible damage by impact and fatigue such as matrix crack, internal delamination and fiber break may lead to sharp decline of structural strength and stability and finally makes composite structural failure. This paper proposes a damage index weighted average localization algorithm (DIA), which can realize a quick damage identification and damage localization of high accuracy. The proposed algorithm does not require damage imaging, and thus has the potential of realizing Structural Health Monitoring on line and in situ. Pre-experiments of real impact damages and artificial bonded bolt are done on composite laminates of small sizes. At last, to reduce experiment cost, the bolts are bonded on laminates to replace real impact damage for validation of DIA. Damage identification is successfully realized with damage localization error lower than 5 mm. A regular PZT arrangement with fewer sensors verifies that 6 sensors are enough for localization error of 20 mm and a random PZT arrangement with one or two sensors missing from the initial sensor array will not influence the localization accuracy.
机译:复合层压板由于具有低密度,高比模量和比强度,强大的内部阻尼和出色的化学稳定性等优点而被广泛使用。冲击和疲劳造成的无形破坏(例如基体裂纹,内部分层和纤维断裂)可能导致结构强度和稳定性急剧下降,最终使复合结构破坏。提出了一种损伤指数加权平均定位算法(DIA),可以实现快速的损伤识别和高精度的损伤定位。所提出的算法不需要损伤成像,因此具有实现在线和现场结构健康监测的潜力。实际冲击损伤和人工粘结螺栓的预试验是在小尺寸的复合层压板上完成的。最后,为降低实验成本,将螺栓粘结在层压板上以代替实际的冲击破坏,以验证DIA。成功实现损伤识别,且损伤定位误差小于5 mm。具有较少传感器的常规PZT布置可验证6个传感器足以满足20 mm的定位误差,而具有一个或两个传感器从初始传感器阵列中丢失的随机PZT布置不会影响定位精度。

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