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Structure Damage Detection Using Neural Network with Multi-Stage Substructuring

机译:基于神经网络的多阶段子结构结构损伤检测

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摘要

Artificial neural network (ANN) method has been proven feasible by many researchers in detecting damage based on vibration parameters. However, the main drawback of ANN method is the requirement of enormous computational effort especially when complex structures with large degrees of freedom are involved. Consequently, almost all the previous works described in the literature limited the structural members to a small number of large elements in the ANN model which resulted ANN model being insensitive to local damage. This study presents an approach to detect small structural damage using ANN method with progressive substructure zooming. It uses the substructure technique together with a multi-stage ANN models to detect the location and extent of the damage. Modal parameters such as frequencies and mode shapes are used as input to ANN. To demonstrate the effectiveness of this approach, a two-span continuous concrete slab structure and a three-storey portal frame are used as examples. Different damage scenarios have been introduced by reducing the local stiffness of the selected elements at different locations in the structures. The results show that this technique successfully detects all the simulated damages in the structure.
机译:人工神经网络(ANN)方法已被许多研究人员证明可用于基于振动参数的损伤检测。然而,人工神经网络方法的主要缺点是需要大量的计算工作,尤其是在涉及具有大自由度的复杂结构时。因此,文献中描述的几乎所有先前的工作都将结构构件限制为ANN模型中的少量大型元素,这导致ANN模型对局部损伤不敏感。这项研究提出了一种使用渐进式子结构缩放的ANN方法检测小型结构损伤的方法。它使用子结构技术以及多阶段ANN模型来检测损坏的位置和程度。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,以两跨连续混凝土板结构和三层门架为例。通过降低所选元素在结构中不同位置的局部刚度,引入了不同的破坏方案。结果表明,该技术成功地检测了结构中所有模拟的损伤。

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