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Operational modal analysis of reinforced concrete bridges using autoregressive model

机译:基于自回归模型的钢筋混凝土桥梁运行模态分析

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摘要

This study focuses on the system identification of reinforced concrete bridges using vector autoregressive model (VAR). First, the time series output response from a bridge establishes the autoregressive (AR) models. AR models are one of the most accurate methods for stationary time series. Burg's algorithm estimates the autoregressive coefficients (ARCs) at p-lag by reducing the sum of the forward and the backward errors. The computed ARCs are assembled in the state system matrix and the eigen-system realization algorithm (ERA) computes: the eigenvector matrix that contains the vectors of the mode shapes, and the eigenvalue matrix that contains the associated natural frequencies. By taking advantage of the characteristic of the AR model with ERA (ARMERA), civil engineering can address problems related to damage detection. Operational modal analysis using ARMERA is applied to three experiments. One experiment is coupled with an artificial neural network algorithm and it can detect damage locations and extension. The neural network uses a specific number of ARCs as input and multiple submatrix scaling factors of the structural stiffness matrix as output to represent the damage.
机译:这项研究集中在使用矢量自回归模型(VAR)的钢筋混凝土桥梁系统识别中。首先,来自电桥的时间序列输出响应建立了自回归(AR)模型。 AR模型是固定时间序列最准确的方法之一。 Burg的算法通过减少前向和后向误差的总和来估计p滞后的自回归系数(ARC)。计算出的ARC被组装在状态系统矩阵中,本征系统实现算法(ERA)计算:包含模态形状向量的特征向量矩阵,以及包含相关固有频率的特征值矩阵。通过利用带有ERA(ARMERA)的AR模型的特性,土木工程可以解决与损坏检测相关的问题。使用ARMERA的操作模式分析被应用于三个实验。一个实验与人工神经网络算法相结合,它可以检测损坏的位置和扩展。神经网络使用特定数量的ARC作为输入,并使用结构刚度矩阵的多个子矩阵比例因子作为输出来表示损伤。

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