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Real-time hysteresis identification in structures based on restoring force reconstruction and Kalman filter

机译:基于恢复力重建和卡尔曼滤波器的结构中的实时滞后识别

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摘要

Identifying the local nonlinear hysteretic behaviors in structures arises as an important issue in structural health monitoring. This paper develops a new hysteresis identification framework where rather than identifying the hysteretic parameters, the restoring forces are reconstructed so as to identify the hysteretic loops. Under this new framework, there is no need to get a priori knowledge on the hysteretic models, enabling a wider range of applications, and the involved system equation is linear with unknown restoring forces, tending to be more efficient. Then, the Kalman filter is adopted for real-time restoring force reconstruction because the Kalman filter is celebrated for its efficiency, effectiveness and reliability in linear system estimation with noisy measured data. In doing so, the restoring forces are additionally augmented as state variables and such augmentation is shown to act as the role of Tikhonov regularization, by which the proper covariance of the augmentation as the regularization parameter is selected via the L-curve method. Numerical examples are presented and an experimental test is conducted to verify the effectiveness and robustness of the proposed real-time hysteresis identification method.
机译:识别结构中的局部非线性滞后行为是结构健康监测中的一个重要问题。本文开发了一种新的滞后识别框架,而不是识别滞后参数,重建恢复力以识别滞后环。在这个新的框架下,无需在滞后模型上获得先验知识,实现更广泛的应用程序,并且涉及的系统方程具有未知恢复力的线性,趋于更有效。然后,采用Kalman滤波器进行实时恢复力重建,因为Kalman滤波器以噪声测量数据的线性系统估计的效率,有效性和可靠性庆祝。在这样做时,恢复力被另外增强作为状态变量,并且这样的增强被视为Tikhonov正规的作用,通过L-Curve方法选择增强作为正则化参数的适当协方差。提出了数值例子,进行了实验测试,以验证所提出的实时滞后识别方法的有效性和鲁棒性。

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