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首页> 外文期刊>Applied Mechanics and Materials >Estimation of Uncertainty in the Lateral Vibration Attenuation of a Beam with Piezo-Elastic Supports by Neural Networks
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Estimation of Uncertainty in the Lateral Vibration Attenuation of a Beam with Piezo-Elastic Supports by Neural Networks

机译:神经网络估计压电弹性梁横向振动的不确定度

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摘要

Quantification of uncertainty in technical systems is often based on surrogate models of corresponding simulation models. Usually, the underlying simulation model does not describe the reality perfectly, and consequently the surrogate model will be imperfect. In this article we propose an improved surrogate model of the vibration attenuation of a beam with shunted piezoelectric transducers. Therefore, experimentally observed and simulated variations in the vibration attenuation are combined in the model estimation process, by using multi-layer feedforward neural networks. Based on this improved surrogate model, we construct a density estimate of the maximal amplitude in the vibration attenuation. The density estimate is used to analyze the uncertainty in the vibration attenuation, resulting from manufacturing variations.
机译:技术系统中不确定性的量化通常基于相应模拟模型的替代模型。通常,基础仿真模型不能完美描述现实,因此替代模型将是不完善的。在本文中,我们提出了一种采用分流压电换能器的梁振动衰减的改进替代模型。因此,通过使用多层前馈神经网络,在模型估计过程中将振动衰减的实验观察和模拟变化组合在一起。基于此改进的替代模型,我们构造了振动衰减最大幅度的密度估计。密度估计值用于分析由制造差异引起的振动衰减的不确定性。

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