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Modal identification of structures from input/output data using the expectation-maximization algorithm and uncertainty quantification by mean of the bootstrap

机译:使用期望最大化算法和借助于自举的不确定性量化从输入/输出数据中对结构进行模态识别

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摘要

Modal testing in civil engineering includes the possibility to apply measured forces in addition to the unmeasured ambient excitation. In these cases, it is necessary to consider mathematical models that account for both excitation sources, what explains the increasing interest in sophisticated system identification methods for modal analysis with input/output data. In this work, the maximum likelihood estimation of the state space model from input/output vibration data is investigated. This model can be estimated using different techniques: Among them, the maximum likelihood method has optimal statistical properties, so modal parameters computed using this approach will be optimum in a statistical point of view. The algorithm considered for maximizing the likelihood is the expectation-maximization algorithm. The quantification of modal parameters uncertainty is addressed using a Monte Carlo type approach called the bootstrap, which is based on resampling the residuals of the estimated model. Finally, the proposed techniques are applied to synthetic data and also to field data recorded on a stress-ribbon footbridge.
机译:土木工程中的模态测试除了可测得的环境激励外,还可以施加测得的力。在这些情况下,有必要考虑同时考虑这两种激励源的数学模型,这解释了人们对使用输入/输出数据进行模态分析的复杂系统识别方法越来越感兴趣的原因。在这项工作中,研究了基于输入/输出振动数据的状态空间模型的最大似然估计。可以使用不同的技术来估计该模型:其中,最大似然法具有最佳的统计属性,因此从统计角度来看,使用此方法计算的模态参数将是最佳的。为使似然最大化而考虑的算法是期望最大化算法。模态参数不确定性的量化使用称为自举的蒙特卡洛方法解决,该方法基于对估计模型的残差进行重采样。最后,将所提出的技术应用于合成数据,还应用于记录在应力带人行天桥上的现场数据。

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