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首页> 外文期刊>Artificial Intelligence Review: An International Science and Engineering Journal >Signal processing and Gaussian neural networks for the edge and damage detection in immersed metal plate-like structures
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Signal processing and Gaussian neural networks for the edge and damage detection in immersed metal plate-like structures

机译:信号处理和高斯神经网络用于浸入式金属板状结构的边缘和损伤检测

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摘要

The present study concerns the remote monitoring of immersed plate-like structures as the ones used for marine current turbines. The innovation of this work is the remote damage detection based on a systematic analysis of a small set of ultrasonic measurements limited by the backscattered echoes from the structure edges. The detection and localization are performed by combination of signal processing tools as Hilbert transform, principal component analysis, and thresholding methods and artificial intelligence tools as Gaussian neural networks. The edges of the structure are detected with a Gaussian neural network classifier, and the useful ranges of the measurements are extracted. These ranges are compared with reference signals in order to compute residuals. Finally damage detection is obtained from the magnitude of the residuals. In addition, some geometric parameters such as the incidence angle, the distance between the structure and the emission-reception device, and eventually the damage localization are estimated. The proposed method is validated with laboratory experimental measurements, and the performance is discussed with respect to some significant parameters.
机译:本研究涉及用于船用水轮机的沉浸式板状结构的远程监控。这项工作的创新之处在于远程损伤检测,它基于对一小部分超声波测量值的系统分析,这些测量值受结构边缘的反向散射回波限制。通过将信号处理工具(如希尔伯特变换),主成分分析和阈值方法与人工智能工具(如高斯神经网络)相结合来执行检测和定位。用高斯神经网络分类器检测结构的边缘,并提取有用的测量范围。将这些范围与参考信号进行比较,以计算残差。最后,从残差的大小获得损坏检测。此外,还估算了一些几何参数,例如入射角,结构与发射接收设备之间的距离以及最终的损伤定位。通过实验室实验测量验证了该方法的有效性,并针对一些重要参数对性能进行了讨论。

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