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Acceleration-based neural networks algorithm for damage detection in structures

机译:基于加速度的神经网络结构损伤检测算法

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摘要

In this study, a real-time damage detection method using output-only acceleration signals and artificial neural networks (ANN) is developed to monitor the occurrence of damage and the location of damage in structures. A theoretical approach of an ANN algorithm that uses acceleration signals to detect changes in structural parameters in real-time is newly designed. Cross-covariance functions of two acceleration responses measured before and after damage at two different sensor locations are selected as the features representing the structural conditions. By means of the acceleration features, multiple neural networks are trained for a series of potential loading patterns and damage scenarios of the target structure for which its actual loading history and structural conditions are unknown. The feasibility of the proposed method is evaluated using a numerical beam model under the effect of model uncertainty due to the variability of impulse excitation patterns used for training neural networks. The practicality of the method is also evaluated from laboratory-model tests on free-free beams for which acceleration responses were measured for several damage cases.
机译:在这项研究中,开发了一种仅使用输出加速度信号和人工神经网络(ANN)的实时损伤检测方法,以监视损伤的发生和结构中损伤的位置。新设计了一种使用加速度信号实时检测结构参数变化的ANN算法的理论方法。选择在两个不同传感器位置损坏之前和之后测量的两个加速度响应的互协方差函数作为代表结构条件的特征。借助加速功能,可以针对目标结构的一系列潜在载荷模式和损伤场景训练多个神经网络,而对于这些潜在载荷模式和损伤场景,其实际载荷历史和结构条件尚不清楚。由于用于训练神经网络的脉冲激励模式的可变性,在模型不确定性的影响下,使用数值束模型评估了该方法的可行性。该方法的实用性还通过对自由-自由梁的实验室模型测试进行了评估,针对这些自由-自由梁,针对几种损坏情况测量了加速度响应。

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