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Health monitoring for strongly non-linear systems using the Ensemble Kalman filter

机译:使用Ensemble Kalman滤波器对强非线性系统的运行状况进行监控

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摘要

Many structural engineering problems of practical interest involve pronounced non-linear dynamics the governing laws of which are not always clearly understood. Standard identification and damage detection techniques have difficulties in these situations which feature significant modelling errors and strongly non-Gaussian signals. This paper presents a combination of the ensemble Kalman filter and non-parametric modelling techniques to tackle structural health monitoring for non-linear systems in a manner that can readily accommodate the presence of non-Gaussian noise. Both location and time of occurrence of damage are accurately detected in spite of measurement and modelling noise. A comparison between ensemble and extended Kalman filters is also presented, highlighting the benefits of the present approach. Copyright © 2005 John Wiley & Sons, Ltd.
机译:许多具有实际意义的结构工程问题涉及明显的非线性动力学,其控制规律并不总是很清楚。在这些情况下,标准的识别和损坏检测技术会遇到困难,这些问题具有明显的建模错误和强烈的非高斯信号。本文提出了集成卡尔曼滤波器和非参数建模技术的组合,以能够轻松适应非高斯噪声的存在的方式处理非线性系统的结构健康状况监测。尽管有测量和建模噪声,但仍可以准确检测损坏发生的位置和时间。还介绍了集成和扩展卡尔曼滤波器之间的比较,突出了本方法的好处。版权所有©2005 John Wiley&Sons,Ltd.

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