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A Machine Learning Approach for Classification Tasks of ECT Signals in Steam Generator Tubes nearby Support Plate

机译:附近蒸汽发生器管中蒸汽发生器管中的分类任务的机器学习方法

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An automatic classification relying on model based machine learning approach is proposed in the context of steam generator tubes inspection by means of eddy current testing. Such tool could realize a first selection of problematic areas and thus potentially considerably reduce the amount of data experts need to analyse. After the generation of databases of signals covering the configurations of interest, a set of classifiers are trained and compared in terms of performance. In order to mitigate the size of datasets and enhance classification performance, a classical dimensionality reduction technique. Results indicate a good potential of such methods for assisting human experts in the task of ECT signals analysis.
机译:通过涡流测试蒸汽发生器管检查的背景下提出了一种依赖于基于模型的机器学习方法的自动分类。这种工具可以实现第一类有问题的区域,因此可能会显着减少数据专家的数量需要分析。在涵盖兴趣配置的信号的生成后,在性能方面进行了一组分类器。为了减轻数据集的大小并增强分类性能,古典维度减少技术。结果表明,在ECT信号分析任务中辅助人类专家的良好潜力。

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