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Advanced eddy current test signal analysis for steam generator tube defect classification and characterization.

机译:用于蒸汽发生器管缺陷分类和表征的高级涡流测试信号分析。

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摘要

Eddy Current Testing (ECT) is a Non-Destructive Examination (NDE) technique that is widely used in power generating plants (both nuclear and fossil) to test the integrity of heat exchanger (HX) and steam generator (SG) tubing. Specifically for this research, laboratory-generated, flawed tubing data were examined.; The purpose of this dissertation is to develop and implement an automated method for the classification and an advanced characterization of defects in HX and SG tubing. These two improvements enhanced the robustness of characterization as compared to traditional bobbin-coil ECT data analysis methods. A more robust classification and characterization of the tube flaw in-situ (while the SG is on-line but not when the plant is operating), should provide valuable information to the power industry.; The following are the conclusions reached from this research. A feature extraction program acquiring relevant information from both the mixed, absolute and differential data was successfully implemented. The CWT was utilized to extract more information from the mixed, complex differential data. Image Processing techniques used to extract the information contained in the generated CWT, classified the data with a high success rate. The data were accurately classified, utilizing the compressed feature vector and using a Bayes classification system. An estimation of the upper bound for the probability of error, using the Bhattacharyya distance, was successfully applied to the Bayesian classification. The classified data were separated according to flaw-type (classification) to enhance characterization. The characterization routine used dedicated, flaw-type specific ANNs that made the characterization of the tube flaw more robust. The inclusion of outliers may help complete the feature space so that classification accuracy is increased.; Given that the eddy current test signals appear very similar, there may not be sufficient information to make an extremely accurate (>95%) classification or an advanced characterization using this system. It is necessary to have a larger database fore more accurate system learning.
机译:涡流测试(ECT)是一种无损检查(NDE)技术,已广泛用于发电厂(核电厂和化石电厂)中,以测试热交换器(HX)和蒸汽发生器(SG)管道的完整性。专门为这项研究,检查了实验室产生的有缺陷的油管数据。本文的目的是开发和实现一种自动化的方法,用于对HX和SG油管中的缺陷进行分类和高级表征。与传统的绕线管ECT数据分析方法相比,这两项改进增强了表征的鲁棒性。现场对管子缺陷进行更可靠的分类和表征(SG处于在线状态,而不是在工厂运行时),应该为电力行业提供有价值的信息。以下是本研究得出的结论。从混合,绝对和差分数据中获取相关信息的特征提取程序已成功实现。利用CWT从混合的复杂差分数据中提取更多信息。用于提取包含在生成的CWT中的信息的图像处理技术对数据进行了分类,具有很高的成功率。利用压缩的特征向量和贝叶斯分类系统对数据进行准确分类。使用Bhattacharyya距离的错误概率上限估计已成功应用于贝叶斯分类。根据缺陷类型(分类)对分类数据进行分离以增强特征。表征程序使用专用的,缺陷类型专用的ANN,从而使管缺陷的表征更加可靠。包含异常值可以帮助完成特征空间,从而提高分类精度。由于涡流测试信号看起来非常相似,因此可能没有足够的信息来使用此系统进行极其准确的分类(> 95%)或进行高级表征。必须拥有更大的数据库才能进行更准确的系统学习。

著录项

  • 作者

    McClanahan, James Patrick.;

  • 作者单位

    The University of Tennessee.;

  • 授予单位 The University of Tennessee.;
  • 学科 Engineering Nuclear.
  • 学位 Ph.D.
  • 年度 2003
  • 页码 378 p.
  • 总页数 378
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 原子能技术;
  • 关键词

  • 入库时间 2022-08-17 11:45:09

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