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首页> 外文期刊>International journal of lifecycle performance engineering >Identification of unknown inputs considering structural parametric uncertainties
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Identification of unknown inputs considering structural parametric uncertainties

机译:考虑结构参数不确定性的未知输入识别

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摘要

Due to the inevitable uncertainties in structural parameters and difficulty in measuring external excitations, it is necessary to consider the effects of structural parametric uncertainties in identifying unknown inputs to structures. In this paper, considering structural parametric uncertainties, two excitation identification approaches are proposed accounting for the different scenarios of sensor deployments. The first algorithm is based on the improved Kalman filter with unknown input (KF-UI) recently proposed by the authors, in which acceleration responses are measured at the locations where unknown inputs applied. The second method is based on modal Kalman filter with unknown input (MKF-UI) to consider the scenario that acceleration responses at the locations of unknown inputs are unmeasured. For the uncertainties of structural parameters, probability model or interval model are studied, respectively. Numerical examples are performed and Monte Carlo simulation is applied in comparison to validate the effectiveness and accuracy of the unknown input identification.
机译:由于结构参数不可避免的不确定性以及测量外部激励的困难,因此在确定未知的结构输入时必须考虑结构参数不确定性的影响。本文考虑结构参数的不确定性,针对传感器部署的不同情况,提出了两种激励识别方法。第一种算法基于作者最近提出的改进的带有未知输入的卡尔曼滤波器(KF-UI),其中在应用未知输入的位置测量加速度响应。第二种方法基于带有未知输入的模态卡尔曼滤波器(MKF-UI),以考虑未测量未知输入位置处的加速度响应的情况。对于结构参数的不确定性,分别研究了概率模型或区间模型。通过数值算例和蒙特卡罗模拟进行比较,以验证未知输入识别的有效性和准确性。

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