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Bayesian modal identification method based on general coherence model for asynchronous ambient data

机译:基于通用相干模型的贝叶斯异步环境数据模态识别方法

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摘要

A Bayesian frequency domain method for modal identification using asynchronous ambient data has been proposed previously. It provides a flexible and economical way to conduct ambient vibration tests as time synchronisation among data channels is not required. To simplify computation, zero coherence among synchronous data groups is assumed in the method, which inevitably introduces modelling error and lacks the ability of quantifying the synchronisation degree among different groups. To address these issues, a Bayesian modal identification method with a general coherence assumption among synchronisation groups is proposed in this paper. Computational difficulties are addressed and an efficient algorithm for determining the most probable values of modal properties is proposed. Synthetic and laboratory data examples are presented to validate the proposed method. It is also applied to modal identification of a full-scale ambient test, which illustrates the feasibility of the proposed method to real asynchronous data under field test configurations. For the cases investigated the proposed method does not lead to significant improvement in the identification accuracy of modal parameters compared to the method with zero coherence assumption. This is consistent with previous experience regarding the robustness of the zero coherence assumption and is now verified in this work. One may use the latter in practice for computational efficiency if the synchronisation degree among different groups is not demanded.
机译:先前已经提出了一种使用异步环境数据进行模式识别的贝叶斯频域方法。由于不需要数据通道之间的时间同步,因此它提供了一种灵活而经济的方式来进行环境振动测试。为了简化计算,该方法假设同步数据组之间的零相关性,不可避免地会引入建模误差,并且缺乏量化不同组之间同步度的能力。为了解决这些问题,提出了一种在同步组之间具有一般相干假设的贝叶斯模态识别方法。解决了计算难题,并提出了一种用于确定模态特性的最可能值的有效算法。合成和实验室数据的例子被提出来验证所提出的方法。它也可用于全面环境测试的模态识别,这说明了该方法在现场测试配置下对真实异步数据的可行性。对于所研究的情况,与采用零相干假设的方法相比,所提出的方法在模态参数的识别精度上并未带来显着改善。这与以前关于零相干性假设的鲁棒性的经验是一致的,现在在这项工作中得到了验证。如果不需要不同组之间的同步度,则可以在实践中将后者用于计算效率。

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