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Structure Data Processing and Damage Identification Based on Wavelet and Artificial Neural Network

机译:基于小波和人工神经网络的结构数据处理与损伤识别

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Structural health monitoring is a multi-disciplinary integrated technology, mainly including signal processing and structural damage detection. The aim of the data processing is to obtain the useful information from large volumes of raw data containing noises. In order to obtain the useful information concerned, denoising method and feature extraction technique based on Wavelet analysis is studied. An improved wavelet thresholding algorithm to eliminate the noise for vibration signals is proposed. The results of analysis show that the method based on Wavelet is not only feasible to signal de-noising, but also valuable and effective to detect the health status of bridge structure. In order to detect the damage status of the structure, a multi-layer neural network models based on the BP algorithm is designed. The model is trained with the data from an engineering beam to filter different transfer function, train function and the unit number of hidden layer by contrast to determine the best network model for damage detection. At last, the model is used to detect the damage of cable-stayed bridge with an improved method of data pre-processing using the square rate of change in frequency as input date of network. The structural damage identification results show that the BP neural network model is easy to identify the damage by the changing of vibration modal frequency and effective to reflect the injury status of the existing structure.
机译:结构健康监测是一种多学科的集成技术,主要包括信号处理和结构损伤检测。数据处理的目的是从大量包含噪声的原始数据中获取有用的信息。为了获得有用的信息,研究了基于小波分析的去噪方法和特征提取技术。提出了一种消除振动信号噪声的改进小波阈值算法。分析结果表明,基于小波的方法不仅对信号降噪是可行的,而且对于检测桥梁结构的健康状态也具有重要的价值和作用。为了检测结构的损伤状态,设计了基于BP算法的多层神经网络模型。使用来自工程光束的数据对模型进行训练,以对比过滤不同的传递函数,训练函数和隐藏层的单位数,从而确定用于损伤检测的最佳网络模型。最后,采用改进的数据预处理方法,以频率平方变化率作为网络输入日期,利用该模型对斜拉桥的损伤进行检测。结构损伤识别结果表明,BP神经网络模型易于通过改变振动模态频率来识别损伤,并能有效地反映现有结构的损伤状态。

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