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Uncertain boundary condition Bayesian identification from experimental data: A case study on a cantilever beam

机译:实验数据的不确定边界条件贝叶斯辨识:以悬臂梁为例

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摘要

In many mechanical applications (wind turbine tower, substructure joints, etc.), the stiffness of the boundary conditions is uncertain and might decrease with time, due to wear and/or looseness. In this paper, a torsional stiffness parameter is used to model the clamped side of a Timoshenko beam. The goal is to perform the identification with experimental data. To represent the decreasing stiffness of the clamped side, an experimental test rig is constructed, where several rubber layers are added to the clamped side, making it softer. Increasing the number of layers decreases the stiffness, thus representing a loss in the stiffness. The Bayesian approach is applied to update the probabilistic model related to the boundary condition (torsional stiffness parameter). The proposed Bayesian strategy worked well for the problem analyzed, where the experimental natural frequencies were within the 95% confidence limits of the computed natural frequencies probability density functions.
机译:在许多机械应用中(风力涡轮机塔架,子结构接头等),边界条件的刚度是不确定的,并且由于磨损和/或松动而可能随时间降低。在本文中,使用扭转刚度参数来建模Timoshenko梁的被夹持侧。目的是利用实验数据进行识别。为了表示被夹紧侧的刚度降低,构建了一个实验测试装置,其中在被夹紧侧上添加了多个橡胶层,使其更柔软。层数的增加降低了刚度,因此代表了刚度的损失。应用贝叶斯方法来更新与边界条件(扭转刚度参数)有关的概率模型。所提出的贝叶斯策略很好地解决了所分析的问题,其中实验固有频率在计算出的固有频率概率密度函数的95%置信范围内。

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