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Damage Criticality Assessment in Complex Geometric Structures Using Static Strain Response-based Signal Processing Techniques

机译:基于静态应变响应的信号处理技术对复杂几何结构的损伤临界性评估

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The use of glass-reinforced plastics (GFRP) as a structural material is widespread because of their high strength and stiffness, low mass, excellent durability and ability to be formed into complex shapes. However, GFRP composite structures are prone to delaminations which can lead to a significant degradation in structural integrity. A number of non-destructive inspection methods have been devised to inspect such structures. One class of SHM system relies on the examination of the strain distribution of the structure due to its operational loads. This paper considers the strain distribution in a GFRP structure subject to loading. The strain distribution due to delaminations of various sizes and locations along the bondline of the structure has been determined by finite element analysis (FEA). A technique called the Damage Relativity Assessment Technique (DRAT) has been developed and implemented to process the data in order to amplify the damage detection process. An Artificial Neural Network (ANN) has been trained to relate this strain distribution to damage size and location. This ANN has been shown to predict the size and location of damage for a number of simulated cases. The extension of this technique is to detect multiple cracks in a complex structure with multiple loading sets. These studies will also be carried over for structures subjected to impulse loading. A major aspect of this effort will include the pseudo-automated assessment of the criticality of the damage. Results from computational and experimental work, in this regard will be presented and used in conjunction with the DRAT and the ANN techniques described above.
机译:由于玻璃纤维增​​强塑料的高强度和刚度,低质量,出色的耐用性和形成复杂形状的能力,因此广泛使用玻璃纤维增​​强塑料(GFRP)作为结构材料。但是,GFRP复合结构易于分层,这可能导致结构完整性显着降低。已经设计出许多非破坏性检查方法来检查这种结构。一类SHM系统依赖于结构由于其工作负荷而引起的应变分布检查。本文考虑了在荷载作用下GFRP结构中的应变分布。已经通过有限元分析(FEA)确定了沿结构键合线的各种尺寸和位置分层所引起的应变分布。已经开发并实施了一种称为“损害相对性评估技术”(DRAT)的技术来处理数据,以扩大损害检测过程。人工神经网络(ANN)已经过训练,可以将这种应变分布与损伤的大小和位置相关联。该人工神经网络已被证明可以预测许多模拟案例的损害大小和位置。该技术的扩展是在具有多个载荷集的复杂结构中检测多个裂缝。这些研究也将延续到承受脉冲载荷的结构上。这项工作的主要方面将包括对损害的严重程度的伪自动化评估。在这方面,来自计算和实验工作的结果将与上述DRAT和ANN技术结合使用。

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