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首页> 外文期刊>International journal of non-linear mechanics >Nonparametric identification for hysteretic behavior modeled with a power series polynomial using EKF-WGI approach under limited acceleration and unknown mass
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Nonparametric identification for hysteretic behavior modeled with a power series polynomial using EKF-WGI approach under limited acceleration and unknown mass

机译:在有限加速度和未知质量下,使用EKF-WGI方法使用幂级数多项式建模的迟滞行为的非参数识别

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Identifying damage initiation and development in engineering structures non-parametrically in the form of a nonlinear restoring force (NRF) after strong dynamic loading is attractive. Due to the individuality of various engineering structures, it is quite challenging to assume, in advance, a general parametric model describing the nonlinear behavior. Although a traditional extended Kalman filter (EKF) is efficient in state vector estimation and structural parameter identification with partially available output measurements, a known structural mass is usually required. In this study, a simultaneous NRF and mass identification approach is developed for multi-degree-of-freedom (MDOF) structures using the EKF with weighted global iteration (EKF-WGI) based on limited available absolute acceleration response. The NRF is modeled in a nonparametric way with a power series polynomial model (PSPM) as a function of unknown structural displacement and velocity responses. Then, the performance of the new approach is numerically evaluated using multi-story structures equipped with magneto-rheological (MR) dampers having known applied excitations and partially available noise-contaminated acceleration measurements, but unknown mass. No parametric model for the NRF of the MR dampers is employed. The effect of different noise levels and different initial estimation errors of structural mass on both NRF and mass identification results and the convergence of the approach are investigated. Finally, a dynamic test on a four-story frame structure equipped with an MR damper is carried out and the algorithm is experimentally validated. Comparisons show that the identified NRF provided by the MR damper matches the measurement and that the identified mass is also accurate.
机译:在强动态载荷之后,以非线性恢复力(NRF)的形式非参数地识别工程结构中的损伤引发和发展是有吸引力的。由于各种工程结构的独特性,事先假设描述非线性行为的通用参数模型非常具有挑战性。尽管传统的扩展卡尔曼滤波器(EKF)在状态向量估计和结构参数识别(部分可用的输出测量)方面非常有效,但通常仍需要已知的结构质量。在这项研究中,基于有限的绝对加速度响应,使用带有加权全局迭代(EKF-WGI)的EKF为多自由度(MDOF)结构开发了同时NRF和质量识别方法。使用未知数的结构位移和速度响应的幂级数多项式模型(PSPM)以非参数方式对NRF进行建模。然后,使用装有磁流变(MR)阻尼器的多层结构在数值上评估新方法的性能,该阻尼器具有已知的施加激励和部分可用的噪声污染的加速度测量值,但质量未知。没有为MR阻尼器的NRF使用参数模型。研究了不同噪声水平和结构质量初始估计误差对NRF和质量识别结果的影响,以及该方法的收敛性。最后,对装有MR阻尼器的四层框架结构进行了动态测试,并对该算法进行了实验验证。比较表明,由MR阻尼器提供的已识别NRF与测量值匹配,并且已识别质量也很准确。

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