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Artificial Neural Network Modelling for Prediction of SNR Effected by Probe Properties on Ultrasonic Inspection of Austenitic Stainless Steel Weldments

机译:奥氏体不锈钢焊缝超声检查中探针特性影响的SNR预测的人工神经网络建模。

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AbstractMany austenitic stainless steel components are used in the construction of nuclear power plants. These components are joined by different welding processes, and radiation damages occur in the welds during the service life of the plant. The plants are inspected periodically with ultrasonic test methods. Many ultrasonic inspection problems arise due to the weld metal microstructure of austenitic stainless steel weldments. The present research was conducted in order to describe the affects of probe angle and probe frequency of both transversal and longitudinal wave probes on detecting the defects of austenitic stainless steel weldments. Feed forward back propagation artificial neural network (ANN) models have been developed for predicting signal to noise ratio (SNR) of transversal and longitudinal wave probes. Input variables that affect SNR output in these models are welding angle, probe angle, probe frequency and sound path. Of the experimental data, 80% is used for a training dataset and 20% is used for a testing dataset with 10 neurons in hidden layers in developed ANN models. Mean absolute error (MAE) and mean absolute percentage error (MAPE) types are calculated as 0.0656 and 16.28%, respectively, to predict performance of ANN models in a transversal wave probe. In addition, MAE and MAPE are calculated as 0.0478 and 18.01%, respectively, for performance in a longitudinal wave probe.
机译:摘要许多奥氏体不锈钢部件用于核电站的建设。这些组件通过不同的焊接工艺连接在一起,并且在设备使用寿命期间,焊缝中会发生辐射损伤。用超声波测试方法定期检查植物。由于奥氏体不锈钢焊件的焊缝金属微观结构,会产生许多超声检查问题。为了描述横向和纵向波探针的探针角度和探针频率对检测奥氏体不锈钢焊件缺陷的影响,进行了本研究。已经开发了前馈反馈人工神经网络(ANN)模型,用于预测横向和纵向波探头的信噪比(SNR)。在这些模型中,影响SNR输出的输入变量是焊接角度,探头角度,探头频率和声程。实验数据中,有80%用于训练数据集,而20%用于测试数据集,其中已开发的ANN模型中隐藏层中有10个神经元。计算平均绝对误差(MAE)和平均绝对百分比误差(MAPE)类型分别为0.0656和16.28%,以预测横向波探头中ANN模型的性能。此外,对于纵向波探头的性能,MAE和MAPE分别计算为0.0478和18.01%。

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