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首页> 外文期刊>Instrumentation and Measurement, IEEE Transactions on >Simultaneous Multiparameter Measurement in Pulsed Eddy Current Steam Generator Data Using Artificial Neural Networks
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Simultaneous Multiparameter Measurement in Pulsed Eddy Current Steam Generator Data Using Artificial Neural Networks

机译:使用人工神经网络同时测量脉冲涡流蒸汽发生器数据中的多参数

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摘要

In-service inspection of complex systems such as nuclear steam generator (SG) tubes and their surrounding support structures is challenged by overlapping degradation modes. In these complex systems the simultaneous and accurate measurement of more than two interdependent parameters is difficult using standard statistical regression analysis tools. Recently, artificial neural networks (ANNs) have been investigated for dealing with the complex relation between inspection data and defect properties. In this paper, pulsed eddy current data were obtained using a single driver with an array of eight pick-up coils configured for inspection of Alloy-800 SG tube fretting, accompanied by tube offset within a simulated corroding ferromagnetic support structure. Time-voltage data were processed by a modified principal component analysis (MPCA) to reduce data dimensionality, and MPCA scores were input into an ANN that simultaneously targeted four parameters associated with support structure hole size, tube off-centering in two dimensions, and fret depth. The neural network was trained, tested, and validated on experimental data and provided estimates within 2% of hole inner diameter (ID) and 3% of fret depth targets. The estimates of hole ID and tube position were further improved when fret depth was used as an input, as might occur if fret depth inspection results are available.
机译:重叠退化模式对诸如核蒸汽发生器(SG)管及其周围支撑结构之类的复杂系统的在役检查提出了挑战。在这些复杂的系统中,使用标准的统计回归分析工具很难同时准确地测量两个以上相互依赖的参数。近年来,已经研究了人工神经网络(ANN)来处理检查数据和缺陷属性之间的复杂关系。在本文中,使用单个驱动器获得脉冲涡流数据,该驱动器具有八个拾波线圈阵列,这些拾波线圈配置用于检查Alloy-800 SG管的微动,并伴随着模拟腐蚀的铁磁支撑结构中的管偏移。通过改进的主成分分析(MPCA)处理时间-电压数据以减少数据维数,并将MPCA分数输入到ANN中,该神经网络同时针对与支撑结构孔尺寸,二维管偏心和品格相关的四个参数深度。对神经网络进行了训练,测试和实验数据验证,并提供了2%孔内径(ID)和3%品格深度目标范围内的估计值。当使用品格深度作为输入时,对孔内径和管位置的估计会得到进一步改善,如果可获得品格深度检查结果,则可能会发生这种情况。

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