A nonlinear Kernel-based adaptive learning-by-examples method for robust NDT/NDE of conductive tubes

JOURNAL OF ELECTROMAGNETIC WAVES AND APPLICATIONS(2019)

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摘要
In this work, the real-time non-destructive testing and evaluation (NDT/NDE) of faulty conductive tubes from eddy current (EC) measurements is addressed and solved in a computationally efficient way by means of an innovative learning-by-examples (LBE) methodology. More specifically, the estimation of the descriptors of a defect embedded within the cylindrical structure under test (SUT) is yielded by combining a non-linear feature extraction technique with an adaptive sampling strategy able to uniformly explore the arising feature space. Predictions are then performed during the on-line testing phase by means of a support vector regression (SVR). Representative results from a numerical/experimental validation are reported to assess the effectiveness of the proposed approach also in comparison with competitive state-of-the-art approaches.
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关键词
Non-destructive testing and evaluation,inverse problems,inverse scattering,Eddy currents,learning-by-examples techniques,Kernel orthogonal partial least squares,output space filling,support vector regression,conductive tubes
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