A convolutional neural network deep learning method for model class selection

被引:6
|
作者
Impraimakis, Marios [1 ,2 ]
机构
[1] Univ Southampton, Dept Civil Maritime & Environm Engn, Southampton, England
[2] Univ Southampton, Dept Civil Maritime & Environm Engn, Southampton SO16 7QF, England
来源
关键词
artificial neural networks; convolutional neural networks; machine learning; model class selection-assessment; pattern recognition; physics-enhanced deep learning; structural health monitoring; STRUCTURAL DAMAGE DETECTION; BOUC-WEN MODEL; BEARING FAULT-DIAGNOSIS; PARAMETER-ESTIMATION; HYSTERETIC SYSTEMS; RANDOM VIBRATION; KALMAN FILTER; RESPONSE MEASUREMENTS; NUMERICAL-SOLUTION; IDENTIFICATION;
D O I
10.1002/eqe.4045
中图分类号
TU [建筑科学];
学科分类号
0813 ;
摘要
The response-only model class selection capability of a novel deep convolutional neural network method is examined herein in a simple, yet effective, manner. Specifically, the responses from a unique degree of freedom along with their class information train and validate a one-dimensional convolutional neural network. In doing so, the network selects the model class of new and unlabeled signals without the need of the system input information, or full system identification. An optional physics-based algorithm enhancement is also examined using the Kalman filter to fuse the system response signals using the kinematics constraints of the acceleration and displacement data. Importantly, the method is shown to select the model class in slight signal variations attributed to the damping behavior or hysteresis behavior on both linear and nonlinear dynamic systems, as well as on a 3D building finite element model, providing a powerful tool for structural health monitoring applications.
引用
收藏
页码:784 / 814
页数:31
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