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首页> 外文期刊>Structural Control and Health Monitoring >The Unscented Kalman Filter And Particle Filter Methods For Nonlinear Structural System Identification With Non-collocatedheterogeneous Sensing
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The Unscented Kalman Filter And Particle Filter Methods For Nonlinear Structural System Identification With Non-collocatedheterogeneous Sensing

机译:非共存异质感的非线性结构系统辨识的无味卡尔曼滤波和粒子滤波方法

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摘要

The use of heterogeneous, non-collocated measurements for nonlinear structural system identification is explored herein. In particular, this paper considers the example of sensor heterogeneity arising from the fact that both acceleration and displacement are measured at various locations of the structural system. The availability of non-collocated data might often arise in the identification of systems where the displacement data may be provided through global positioning systems (GPS). The well-known extended Kalman filter (EKF) is often used to deal with nonlinear system identification. However, as suggested in (J. Eng. Mech. 1999; 125(2):133-142), the EKF is not effective in the case of highly nonlinear problems. Instead, two techniques are examined herein, the unscented Kalman filter method (UKF), proposed by Julier and Uhlman, and the particle filter method, also known as sequential Monte Carlo method (SMC). The two methods are compared and their efficiency is evaluated through the example of a three degree-of-freedom system, involving a Bouc-Wen hysteretic component, where the availability of displacement and acceleration measurements for different DOFs is assumed.
机译:本文探讨了将异类,非共置测量用于非线性结构系统识别的方法。特别是,本文考虑了传感器异质性的示例,该异质性是由于在结构系统的各个位置都测量了加速度和位移而产生的。在数据可以通过全球定位系统(GPS)提供位移的系统的标识中,通常可能会出现非并置数据的可用性。众所周知的扩展卡尔曼滤波器(EKF)通常用于处理非线性系统识别。但是,正如(J. Eng。Mech。1999; 125(2):133-142)中所建议的那样,在高度非线性问题的情况下,EKF无效。取而代之的是,本文研究了两种技术,即Julier和Uhlman提出的无味卡尔曼滤波方法(UKF)和粒子滤波方法,也称为顺序蒙特卡洛方法(SMC)。比较了这两种方法,并通过一个包含Bouc-Wen磁滞分量的三自由度系统的示例评估了它们的效率,其中假设了不同自由度的位移和加速度测量的可用性。

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