涡流检测反映射的神经网络

G. Preda, Radu C. Popa, K. Demachi, K. Miya
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引用次数: 12

摘要

提出了一种求解涡流测试反演问题的神经网络映射方法。使用主成分分析(PCA)数据转换步骤、数据碎片技术、抖动和数据融合方法被证明是辅助工具,支持基本训练算法处理反演问题的强病态性。本文报告了一种用于训练集的新的随机生成数据库所带来的进一步改进,该数据库用于重建裂纹形状和电导率分布。即使在高噪声水平存在的情况下,也获得了四级电导率和非连接裂纹形状的良好结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Neural network for inverse mapping in eddy current testing
A neural network mapping approach has been proposed for the inversion problem in eddy-current testing (ECT). The use of a principal component analysis (PCA) data transformation step, a data fragmentation technique, jittering, and of a data fusion approach proved to be instrumental auxiliary tools that support the basic training algorithm in coping with the strong ill-posedness of the inversion problem. The present paper reports on the further improvements brought by a new, randomly generated database used for the training set, proposed for the reconstruction of crack shape and conductivity distribution. Good results were obtained for four levels of conductivity and nonconnected crack shapes even in the presence of high noise levels.
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