Simultaneous Identification of Time-Varying Parameters and External Loads Based on Extended Kalman Filter: Approach and Validation

Xiaoxiong Zhang, Jia He, Xugang Hua, Zhengqing Chen, Z. Feng
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引用次数: 2

Abstract

Online identification of time-variant parameters without knowledge of external loads is an important but challenging task for structural health monitoring and vibration control. In this study, a two-stage approach, named extended Kalman filter with forgetting factor matrix under unknown inputs (EKF-FFM-UI), is proposed for simultaneously identifying the time-variant parameters and external loads. In stage 1, an extended Kalman filter under unknown inputs (EKF-UI) approach previously proposed by the authors is employed for estimating the structural states and unknown loads. This EKF-UI approach is solely suitable for time-invariant system identification. Therefore, the aim of stage 2 is to improve this approach for the purpose of possessing tracking capability. In this stage, the acceleration responses are first reconstructed by using the differential equation of motion and employed for improving the accuracy of estimated structural states. A forgetting factor matrix is introduced into the priori estimation error covariance matrix to track time-varying parameters. The square errors between the measurements and the corresponding estimates are defined as an index and used for detecting the damage time instant. Then, a covariance resetting technique is employed to assure that such changes in structural parameters can be efficiently captured. A shear-type building structure without/with magneto-rheological (MR) dampers and a fixed beam structure are used as numerical examples for validating the effectiveness of the proposed approach. Experimental tests on a six-story building model are also conducted. Results show the time-varying parameters and unknown inputs can be simultaneously identified with acceptable accuracy.
基于扩展卡尔曼滤波的时变参数与外部载荷的同时辨识:方法与验证
在不知道外部载荷的情况下,对时变参数进行在线辨识是结构健康监测和振动控制的重要而又具有挑战性的任务。本文提出了一种具有未知输入遗忘因子矩阵的扩展卡尔曼滤波(EKF-FFM-UI)两阶段方法,用于同时识别时变参数和外部载荷。在第一阶段,采用作者之前提出的未知输入下的扩展卡尔曼滤波(EKF-UI)方法来估计结构状态和未知载荷。这种EKF-UI方法只适用于定常系统识别。因此,第二阶段的目标是改进该方法,使其具有跟踪能力。在此阶段,首先利用运动微分方程重构加速度响应,并用于提高结构状态估计的精度。在先验估计误差协方差矩阵中引入遗忘因子矩阵来跟踪时变参数。将测量值与相应估计值之间的平方误差定义为一个指标,用于检测损伤时间瞬间。然后,采用协方差重置技术来确保结构参数的变化可以有效地捕获。以无/有磁流变阻尼器的剪力型建筑结构和固定梁结构为算例,验证了所提方法的有效性。并对一个六层建筑模型进行了实验测试。结果表明,该方法可以同时识别时变参数和未知输入,且精度可接受。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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