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Damage detection of building structure based on vibration data and hysteretic model

机译:基于振动数据和滞后模型的建筑结构损伤检测

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This paper presents a novel approach for damage detection in building structures by using the dissipated energy. In this sense, the hysteretic Bouc-Wen model is introduced as a useful tool for describing the degrading energy, which is directly related to the stiffness loss. Since, parameters and states of this model are unknown, we employ a nonlinear system identification algorithm based on Convolutional Neural Network (CNN) to avoid estimate simultaneously the states and parameters of the model. The used CNN have the sparse connectivity, which ensures that the strong response can be detected by convolution filters. In addition, the shared weights of the CNN reduce the the training complexity and the number of its parameters because the same weights are applied to all inputs. Therefore, the CNN can detect features no matter where they are on the vibration data, also reducing the training complexity. The use of this tool avoids using an adaptive observer, which unlike CNN, the algorithm's complexity increases with the number of unknown parameters and states. Moreover, the adaptive observer can not guarantee convergence in presence of measurement noise. Experimental results confirmed that the proposed method is promising for real applications.
机译:本文提出了一种利用耗散能量的建筑结构损伤检测的新方法。从这个意义上说,引入迟滞Bouc-Wen模型作为描述退化能量的有用工具,退化能量与刚度损失直接相关。由于该模型的参数和状态未知,因此我们采用基于卷积神经网络(CNN)的非线性系统识别算法,以避免同时估计模型的状态和参数。所使用的CNN具有稀疏的连通性,这确保了卷积滤波器可以检测到强响应。另外,由于相同的权重应用于所有输入,因此CNN的共享权重降低了训练的复杂性并减少了其参数的数量。因此,CNN可以在振动数据上的任意位置检测到特征,从而降低了训练的复杂性。使用此工具可避免使用自适应观察器,这与CNN不同,该算法的复杂性会随着未知参数和状态数量的增加而增加。而且,自适应观测器不能保证在存在测量噪声的情况下会聚。实验结果证实了该方法在实际应用中是有希望的。

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