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Neural network based damage detection using substructure technique

机译:使用子结构技术的基于神经网络的损伤检测

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摘要

Many researchers have been studying the feasibility of using Artificial Neural Networks (ANN) in structural health monitoring and damage detection. It has been proven by both numerical simulation and laboratory test data that ANN can give reliable prediction of structural conditions. The main drawback of using ANN in structural condition monitoring is the requirement of enormous computational effort. Consequently almost all the previous work described in the literature limited the structural members to a small number of large elements in the ANN model. This may result in the ANN model being insensitive to local damage, especially when this local damage is small. To overcome this problem, this study presents an approach to detect small structural damage by using ANN progressively. It uses the substructure technique together with a two-stage ANN to detect the location and extent of the damage. It starts by dividing the structure into a few substructures. The condition of each substructure is examined. Those substructures with condition change identified are further subdivided and their condition examined. By doing this progressively, the location and severity of low level structural damage can be detected. Modal parameters such as frequencies and mode shapes are used as the input to the ANN. To demonstrate the effectiveness of this approach, a two-span continuous concrete slab structure is used as an example. Different damage scenarios are introduced by reducing the local stiffness of the selected elements at different locations along the structure. The results show that this technique successfully detects simulated damage in the structure.
机译:许多研究人员一直在研究在结构健康监测和损伤检测中使用人工神经网络(ANN)的可行性。数值模拟和实验室测试数据都证明,人工神经网络可以可靠地预测结构条件。在结构状态监测中使用人工神经网络的主要缺点是需要大量的计算工作。因此,文献中描述的几乎所有先前的工作都将结构成员限制为ANN模型中的少量大型元素。这可能会导致ANN模型对局部损伤不敏感,尤其是当局部损伤较小时。为了克服这个问题,本研究提出了一种逐步使用人工神经网络来检测微小结构损伤的方法。它使用子结构技术以及两阶段的ANN来检测损坏的位置和程度。首先将结构分为几个子结构。检查每个子结构的条件。那些识别出条件变化的子结构将进一步细分,并检查其条件。通过逐步执行此操作,可以检测到低级结构损坏的位置和严重性。模态参数(例如频率和模式形状)用作ANN的输入。为了证明这种方法的有效性,以两跨连续混凝土楼板结构为例。通过减少沿结构的不同位置处所选元素的局部刚度,引入了不同的损坏方案。结果表明,该技术成功地检测了结构中的模拟损伤。

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