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Automatic multi-frequency rotating-probe eddy-current data analysis.

机译:自动多频旋转探针涡流数据分析。

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摘要

An automatic scheme for analyzing multi-frequency rotating-probe eddy-current data is proposed herein. This system integrates signal/image-processing algorithm with pattern recognition methods for accomplishing the objectives. The eddy current signals are acquired from several kinds of frequency multiplexed eddy-current rotating-probes. The problem involves the detection of the flaw signals, classifying the defect format and sizing/characterizing the defect profile. The preprocessing steps include conversion of one-dimensional data to obtain a two-dimensional image, removing background noise, suppressing structure-masking signals, and calibration. Optimal thresholding of calibrated signal based on probability of detection (POD) concepts are discussed in detail. Feature extraction and signal classification steps are then implemented to discriminate signals produced by defects or non-defects, axial or circumferential defects, tight or volumetric defects. Finally, wavelet basis function neural networks are used for estimating defect profile.; Further analysis of the statistical properties of potential defect signals is needed to discriminate between different kinds of defects. A model for characterizing the amplitude and phase probability distributions is developed. The squared amplitudes and phases of the potential defect signals are modeled as independent, identically distributed (i.i.d.) random variables following gamma and von Mises distributions, respectively. A maximum likelihood (ML) method is employed for estimating the amplitude and phase distribution parameters from measurements corrupted by additive complex white Gaussian noise. Newton-Raphson iteration is utilized to compute the ML estimates of the unknown parameters. Cramer-Rao bounds (CRBs) for the unknown parameters are computed. The obtained estimates can be utilized for maximum a posteriori (MAP) signal phase and amplitude estimation as well as efficient feature extractors in a defect classification scheme. Numerical examples of both real and simulated data are presented to demonstrate the performance of the proposed method.
机译:本文提出了一种自动分析多频旋转探针涡流数据的方案。该系统将信号/图像处理算法与模式识别方法集成在一起,以实现目标。涡流信号是从几种频率复用的涡流旋转探针中获取的。问题涉及缺陷信号的检测,缺陷格式的分类以及缺陷轮廓的尺寸/特征化。预处理步骤包括转换一维数据以获得二维图像,去除背景噪声,抑制结构掩盖信号以及校准。详细讨论了基于检测概率(POD)概念的最佳校准信号阈值。然后实施特征提取和信号分类步骤以区分由缺陷或非缺陷,轴向或周向缺陷,紧密或体积缺陷产生的信号。最后,小波基函数神经网络用于估计缺陷轮廓。需要对潜在缺陷信号的统计特性进行进一步分析,以区分不同种类的缺陷。建立了表征幅度和相位概率分布的模型。潜在缺陷信号的平方振幅和相位被建模为分别遵循伽马和冯·米塞斯分布的独立,均匀分布(即i.d.)的随机变量。采用最大似然(ML)方法从被加性复数高斯白噪声破坏的测量中估计幅度和相位分布参数。牛顿-拉夫森迭代法用于计算未知参数的ML估计。计算未知参数的Cramer-Rao界限(CRB)。所获得的估计可以用于缺陷分类方案中的最大后验(MAP)信号相位和幅度估计以及有效的特征提取器。给出了真实和模拟数据的数值示例,以证明所提出方法的性能。

著录项

  • 作者

    Xiang, Ping.;

  • 作者单位

    Iowa State University.;

  • 授予单位 Iowa State University.;
  • 学科 Engineering Electronics and Electrical.
  • 学位 Ph.D.
  • 年度 2005
  • 页码 97 p.
  • 总页数 97
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 无线电电子学、电信技术;
  • 关键词

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