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Experimental validation of the Kalman-type filters for online and real-time state and input estimation

机译:用于在线和实时状态和输入估计的卡尔曼型过滤器的实验验证

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摘要

In this study, a novel dual implementation of the Kalman filter proposed by Eftekhar Azam etal. (2014, 2015) is experimentally validated for simultaneous estimation of the states and input of structural systems. By means of numerical simulations, it has been shown that the proposed method outperforms existing techniques in terms of robustness and accuracy for the estimated displacement and velocity time histories. Herein, dynamic response measurements, in the form of displacement and acceleration time histories from a small-scale laboratory building structure excited at the base by a shake table, are considered for evaluating the performance of the proposed Dual Kalman filter and in order to compare this with available alternatives, such as the augmented Kalman filter (Lourens etal., 2012b) and the Gillijn De Moore filter (GDF) (2007b). The suggested Bayesian approach requires the availability of a physical model of the system in addition to output-only measurements from limited degrees of freedom. Two categories of such physical models are herein studied to evaluate the effect of model error on the filter performances; the first, is a model that comprises identified modal parameters, i.e., natural frequencies, mode shapes, modal damping ratios and modal participation factors; the second, is a model that is extracted from a recently developed subspace identification procedure, namely the transformed stochastic subspace identification method. The results are encouraging for the further use of the dual Kalman filter and its available alternatives for addressing the important problems of full response reconstruction and fatigue estimation in the entire body of linear structures, using a limited number of output-only vibration measurements.
机译:在这项研究中,通过Eftekhar Azam Etal提出的Kalman滤波器的新型双重实施。 (2014年,2015年)实验验证,同时估算了结构系统的州和输入。通过数值模拟,已经示出了所提出的方法在估计的位移和速度时间历史的鲁棒性和准确性方面优于现有技术。这里,以摇动表在基座中激发的小规模实验室建筑结构的位移和加速时间历史形式的动态响应测量被认为是评估所提出的双卡尔曼滤波器的性能,并以比较这一点有可用的替代方案,例如增强卡尔曼滤波器(Lourens Etal。,2012b)和Gillijn de Moore滤波器(GDF)(2007b)。建议的贝叶斯方法需要除了仅来自自由度有限的输出测量外,还需要系统的物理模型。本文研究了两类这样的物理模型,以评估模型误差对过滤器性能的影响;首先,是一种模型,包括识别的模态参数,即自然频率,模式形状,模态阻尼比和模态参与因子;第二,是从最近开发的子空间识别过程中提取的模型,即转换的随机子空间识别方法。结果令人鼓舞的是,使用有限数量的产量振动测量,进一步使用双卡尔曼滤波器及其可用替代方案,用于解决整个线性结构的全部响应重建和疲劳估计的重要问题。

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