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Data fusion for NDE signal characterization.

机译:用于NDE信号表征的数据融合。

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摘要

The primary objective of multi-sensor data fusion, which offers both quantitative and qualitative benefits, is to be able to draw inferences that may not be feasible with data from a single sensor alone. In this study, data from two sets of sensors are fused to estimate the defect profile from magnetic flux leakage (MFL) inspection data. The two sensors measure the axial and circumferential components of the MFL field. Data is fused at the signal level. The two signals are combined as the real and imaginary components of a complex valued signal. Signals from an array of sensors are arranged in contiguous rows to obtain a complex valued image. Signals from the defect regions are then processed to minimize noise and the effects of lift-off. A boundary extraction algorithm is used not only to estimate the defect size more accurately, but also to segment the defect area. A wavelet basis function neural network (WBFNN) is then employed to map the complex valued image appropriately to obtain the geometric profile of the defect. The feasibility of the approach was evaluated using the data obtained from the MFL inspection of natural gas transmission pipelines. The results obtained by fusing the axial and circumferential component appear to be better than those obtained using the axial component alone. Finally, a WBFNN based boundary extraction scheme is employed for the proposed fusion approach. The boundary based adaptive weighted average (BBAWA) offers superior performance compared to three alternative different fusion methods employing weighted average (WA), principal component analysis (PCA), and adaptive weighted average (AWA) methods.
机译:提供定量和定性好处的多传感器数据融合的主要目标是能够得出仅来自单个传感器的数据可能不可行的推论。在这项研究中,将来自两组传感器的数据融合在一起,以根据磁通量泄漏(MFL)检查数据估算缺陷轮廓。这两个传感器测量MFL场的轴向和圆周分量。数据在信号级别融合。将这两个信号合并为复数值信号的实部和虚部。来自传感器阵列的信号以连续的行排列以获得复数值的图像。然后对来自缺陷区域的信号进行处理,以最大程度地降低噪声和剥离效应。边界提取算法不仅用于更准确地估计缺陷尺寸,而且用于分割缺陷区域。然后,采用小波基函数神经网络(WBFNN)适当映射复杂值图像,以获得缺陷的几何轮廓。使用从天然气输送管道的MFL检查中获得的数据评估了该方法的可行性。通过融合轴向和圆周分量获得的结果似乎比单独使用轴向分量获得的结果更好。最后,基于WBFNN的边界提取方案被用于所提出的融合方法。与使用加权平均(WA),主成分分析(PCA)和自适应加权平均(AWA)方法的三种替代性不同融合方法相比,基于边界的自适应加权平均(BBAWA)具有更高的性能。

著录项

  • 作者

    Lim, Jaein.;

  • 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 2001
  • 页码 126 p.
  • 总页数 126
  • 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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