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Probabilistic Damage Detection of a Steel Truss Bridge Model by Optimally Designed Bayesian Neural Network

机译:基于优化设计的贝叶斯神经网络的钢桁桥模型概率损伤识别。

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摘要

Excellent pattern matching capability makes artificial neural networks (ANNs) a very promising approach for vibration-based structural health monitoring (SHM). The proper design of the network architecture with the suitable complexity is vital to the ANN-based structural damage detection. In addition to the number of hidden neurons, the type of transfer function used in the hidden layer cannot be neglected for the ANN design. Neural network learning can be further presented in the framework of Bayesian statistics, but the issues of selection for the hidden layer transfer function with respect to the Bayesian neural network has not yet been reported in the literature. In addition, most of the research works in the literature for addressing the predictive distribution of neural network output is only for a single target variable, while multiple target variables are rarely involved. In the present paper, for the purpose of probabilistic structural damage detection, Bayesian neural networks with multiple target variables are optimally designed, and the selection of the number of neurons, and the transfer function in the hidden layer, are carried out simultaneously to achieve a neural network architecture with suitable complexity. Furthermore, the nonlinear network function can be approximately linear by assuming the posterior distribution of network parameters is a sufficiently narrow Gaussian, and then the input-dependent covariance matrix of the predictive distribution of network output can be obtained with the Gaussian assumption for the situation of multiple target variables. Structural damage detection is conducted for a steel truss bridge model to verify the proposed method through a set of numerical case studies.
机译:出色的模式匹配能力使人工神经网络(ANN)成为基于振动的结构健康监测(SHM)的非常有前途的方法。具有适当复杂性的网络体系结构的正确设计对于基于ANN的结构损伤检测至关重要。除了隐藏神经元的数量之外,在ANN设计中不能忽略在隐藏层中使用的传递函数的类型。神经网络学习可以在贝叶斯统计的框架内进一步提出,但是关于贝叶斯神经网络的隐层传递函数的选择问题尚未在文献中报道。另外,文献中用于解决神经网络输出的预测分布的大多数研究工作仅针对单个目标变量,而很少涉及多个目标变量。在本文中,以概率结构损伤检测为目的,对具有多个目标变量的贝叶斯神经网络进行了优化设计,并同时进行了神经元数量的选择和隐层中的传递函数的实现。神经网络架构具有适当的复杂性。此外,通过假设网络参数的后验分布是一个足够窄的高斯分布,非线性网络函数可以近似为线性,然后可以根据高斯假设来获得网络输出的预测分布的依赖于输入的协方差矩阵。多个目标变量。对钢桁架桥梁模型进行结构损伤检测,以通过一系列数值案例研究来验证所提出的方法。

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