Study of a fixed-lag Kalman smoother for input and state estimation in vibrating structures

IF 1.1 4区 工程技术 Q3 ENGINEERING, MULTIDISCIPLINARY
Ulrika Lagerblad, H. Wentzel, A. Kulachenko
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引用次数: 4

Abstract

ABSTRACT This paper presents a numerical study of an augmented Kalman filter extended with a fixed-lag smoother. The smoother solves the joint input and state estimation problem based on sparse vibration measurements. Two numerical examples are examined in order to study the influence of model errors and measurement noise on the estimate quality. From simulations of a simply supported beam, it is shown that estimates from the smoother are superior to those of a conventional Kalman filter, both when the level of model error and measurement noise are increased. By studying simulations of a truck component, the improvement due to smoothing over a conventional Kalman filter is shown to be even greater when the model error is present in both the eigenfrequencies and the mode shapes. In addition, a sensitivity analysis of a tuning methodology with the assumption of constant noise covariance matrices is performed. The result indicates that the proposed tuning methodology results in stable estimates with a good trade-off between estimator adaptability and noise sensitivity. The presented approach of tuning and evaluating the estimates is therefore suggested as a guideline for using the fixed-lag smoother when solving input and state estimation problems in vibrating structures.
用于振动结构输入和状态估计的固定滞后卡尔曼平滑器的研究
摘要本文对用固定滞后平滑器扩展的增强卡尔曼滤波器进行了数值研究。平滑器解决了基于稀疏振动测量的联合输入和状态估计问题。为了研究模型误差和测量噪声对估计质量的影响,对两个数值例子进行了检验。通过对简支梁的模拟,表明当模型误差和测量噪声水平增加时,来自平滑器的估计优于传统卡尔曼滤波器的估计。通过研究卡车部件的仿真,当模型误差存在于本征频率和振型中时,由于对传统卡尔曼滤波器进行平滑,因此改进甚至更大。此外,还对具有恒定噪声协方差矩阵假设的调谐方法进行了灵敏度分析。结果表明,所提出的调谐方法在估计器适应性和噪声敏感性之间取得了良好的平衡,从而产生了稳定的估计。因此,在解决振动结构的输入和状态估计问题时,建议将所提出的调整和评估估计的方法作为使用固定滞后平滑器的指南。
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来源期刊
Inverse Problems in Science and Engineering
Inverse Problems in Science and Engineering 工程技术-工程:综合
自引率
0.00%
发文量
0
审稿时长
6 months
期刊介绍: Inverse Problems in Science and Engineering provides an international forum for the discussion of conceptual ideas and methods for the practical solution of applied inverse problems. The Journal aims to address the needs of practising engineers, mathematicians and researchers and to serve as a focal point for the quick communication of ideas. Papers must provide several non-trivial examples of practical applications. Multidisciplinary applied papers are particularly welcome. Topics include: -Shape design: determination of shape, size and location of domains (shape identification or optimization in acoustics, aerodynamics, electromagnets, etc; detection of voids and cracks). -Material properties: determination of physical properties of media. -Boundary values/initial values: identification of the proper boundary conditions and/or initial conditions (tomographic problems involving X-rays, ultrasonics, optics, thermal sources etc; determination of thermal, stress/strain, electromagnetic, fluid flow etc. boundary conditions on inaccessible boundaries; determination of initial chemical composition, etc.). -Forces and sources: determination of the unknown external forces or inputs acting on a domain (structural dynamic modification and reconstruction) and internal concentrated and distributed sources/sinks (sources of heat, noise, electromagnetic radiation, etc.). -Governing equations: inference of analytic forms of partial and/or integral equations governing the variation of measured field quantities.
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