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Reference-based combined deterministic-stochastic subspace identification for experimental and operational modal analysis

机译:基于参考的组合确定性-随机子空间识别,用于实验和操作模态分析

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The modal analysis of mechanical or civil engineering structures consists of three steps: data collection, system identification and modal parameter estimation. The system identification step plays a crucial role in the quality of the modal parameters, that are derived from the identified system model, as well as in the number of modal parameters that can be determined. This explains the increasing interest in sophisticated system identification methods for both experimental and operational modal analysis. In purely operational or output-only modal analysis, absolute scaling of the obtained mode shapes is not possible and the frequency content of the ambient forces could be narrow banded so that only a limited number of modes are obtained. This drives the demand for system identification methods that take both artificial and ambient excitation into account so that the amplitude of the artificial excitation can be small compared to that of the ambient excitation. An accurate, robust and efficient system identification method that meets this requirements is combined deterministic-stochastic subspace identification. It can be used both for experimental modal analysis and for operational modal analysis with deterministic inputs. In this paper, the method is generalized to a reference-based version which is faster and, if the chosen reference outputs have the highest SNR values, more accurate than the classical algorithm. The algorithm is validated with experimental data from the Z24 bridge that overpassing the A1 highway between Bern and Zurich in Switzerland, that have been proposed as a benchmark for the assessment of system identification methods for the modal analysis of large structures. With the presented algorithm, the most complete set of modes reported so far is obtained.
机译:机械或土木工程结构的模态分析包括三个步骤:数据收集,系统识别和模态参数估计。系统识别步骤在模态参数的质量中起着至关重要的作用,模态参数的质量来自于已识别的系统模型,在可确定的模态参数的数量中也是如此。这解释了对用于实验和操作模态分析的复杂系统识别方法越来越感兴趣。在纯操作模式或仅输出模式分析中,不可能对获得的模式形状进行绝对缩放,并且环境力的频率内容可能会窄带化,因此只能获得有限数量的模式。这推动了对同时考虑人工和环境激发的系统识别方法的需求,因此与环境激发相比,人工激发的幅度可以较小。满足此要求的准确,鲁棒和有效的系统识别方法是确定性-随机子空间识别的组合。它既可以用于实验模态分析,也可以用于具有确定性输入的操作模态分析。在本文中,该方法被通用化为基于参考的版本,该版本更快,并且如果选择的参考输出具有最高SNR值,则比经典算法更准确。 Z24桥的实验数据验证了该算法的有效性,该实验数据超过了瑞士伯尔尼和苏黎世之间的A1高速公路,该数据已被建议用作评估大型结构模态分析系统识别方法的基准。使用提出的算法,可以获得迄今为止报告的最完整的模式集。

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