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首页> 外文期刊>Journal of intelligent material systems and structures >An effective damage identification approach in thick steel beams based on guided ultrasonic waves for structural health monitoring applications
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An effective damage identification approach in thick steel beams based on guided ultrasonic waves for structural health monitoring applications

机译:基于引导超声波的厚钢梁有效损伤识别方法,用于结构健康监测应用

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摘要

An inverse analysis using artificial intelligence based on the guided ultrasonic waves is proposed for effective identification of damage in thick steel beams for the purpose of structural health monitoring applications. Parameterized modeling for finite element analysis is applied to constitute the damage parameter database cost-effectively. For signal processing and feature extraction, wavelet transform is employed. A novel feature extraction technique, damage characteristic points, is applied to constitute the database for pattern recognition procedures. Using the extracted metrics, a multilayer feedforward artificial neural network under supervision of an error-backpropagation algorithm is developed and trained. The generalization performance of the artificial neural network has been examined experimentally. Results illustrate that the proposed metrics together with artificial neural network technique are powerful tools for effective identification of damage in the case of thick structures.
机译:为了基于结构健康监测的目的,提出了一种基于引导超声波的人工智能反分析技术,可以有效地识别厚钢梁中的损伤。应用有限元分析的参数化建模可以经济高效地构建损伤参数数据库。对于信号处理和特征提取,采用小波变换。一种新颖的特征提取技术,即损伤特征点,被用于构成模式识别程序的数据库。利用提取的度量,开发并训练了在错误反向传播算法的监督下的多层前馈人工神经网络。人工神经网络的泛化性能已通过实验进行了检验。结果表明,所提出的度量标准与人工神经网络技术一起,是有效识别厚结构情况下的损伤的强大工具。

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