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An Improved Feature Parameter Extraction Algorithm of Composite Detection Method Based on the Fusion Theory

机译:基于融合理论的复合检测方法改进特征参数提取算法

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An improved feature parameter extraction algorithm is proposed in this study to solve the problem of quantitative detection of subsurface defects. Firstly, the common feature parameters from the differential signal of pulsed eddy current and ultrasonic are extracted in time domain and frequency domain. Then, the dispersion model and ReliefF model are established to determine the weights of each parameter. Finally, the weights from the two different algorithms are fused by the D-S evidence theory to determine feature parameters. Compared with the PCA feature parameter algorithm from the pulsed eddy current or ultrasonic, the experiment results show the feature parameters extracted by the algorithm proposed in this paper are more effective in quantitative detection of subsurface defects. It will lead to high accuracy in the subsurface defections.
机译:本研究提出了一种改进的特征参数提取算法,以解决地下缺陷的定量检测问题。 首先,在时域和频域中提取来自脉冲涡流和超声波的差分信号的常用特征参数。 然后,建立分散模型和相关的模型以确定每个参数的权重。 最后,通过D-S证据理论融合了来自两个不同算法的权重,以确定特征参数。 与来自脉冲涡流或超声波的PCA特征参数算法相比,实验结果显示了本文提出的算法提取的特征参数在地下缺陷的定量检测方面更有效。 它将导致地下缺陷的高精度。

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