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白子键, 李治文, 张志芬, 秦锐, 张帅, 徐耀文, 温广瑞. 基于电弧光谱的核电堵管TIG焊接质量在线监测[J]. 焊接学报. DOI: 10.12073/j.hjxb.20230610002
引用本文: 白子键, 李治文, 张志芬, 秦锐, 张帅, 徐耀文, 温广瑞. 基于电弧光谱的核电堵管TIG焊接质量在线监测[J]. 焊接学报. DOI: 10.12073/j.hjxb.20230610002
BAI Zijian, LI Zhiwen, ZHANG Zhifen, QIN Rui, ZHANG Shuai, XU Yaowen, WEN Guangrui. On-line monitoring of TIG welding quality of nuclear power plug tube based on arc spectrum[J]. TRANSACTIONS OF THE CHINA WELDING INSTITUTION. DOI: 10.12073/j.hjxb.20230610002
Citation: BAI Zijian, LI Zhiwen, ZHANG Zhifen, QIN Rui, ZHANG Shuai, XU Yaowen, WEN Guangrui. On-line monitoring of TIG welding quality of nuclear power plug tube based on arc spectrum[J]. TRANSACTIONS OF THE CHINA WELDING INSTITUTION. DOI: 10.12073/j.hjxb.20230610002

基于电弧光谱的核电堵管TIG焊接质量在线监测

On-line monitoring of TIG welding quality of nuclear power plug tube based on arc spectrum

  • 摘要: 为了实现受操作空间限制和辐射环境下,高温气冷堆蒸汽发生器传热管道堵管钨极惰性气体保护电弧焊(tungsten inert gas gas welding, TIG)的质量监测,搭建了一套基于光纤光谱仪的 TIG 焊接过程实时监测系统,用于核电传热管道堵管TIG 焊接熔深监测.试验研究采用该系统采集电弧光谱,利用主成分分析法获取不同焊缝熔深的光谱主成分特征,创新性提出了一种 ATT-L2R-BiLSTM 深度学习模型,实现了堵管TIG焊接过程中焊缝熔深的分类识别,结果表明,实验室条件下模型准确率可达92.61%,比Bi-LSTM网络准确率提高5.11%,该模型在核电蒸汽发生器堵管验证平台进行了测试和验证,准确率达到99.26%,最终,实现了光谱信息不完备下TIG 焊接质量特征深度挖掘,以及TIG焊接熔深的精准评估.

     

    Abstract: In order to monitor the quality of TIG welding for blocked tube welding of high-temperature gas-cooled reactor steam generators under the constraints of operation space and radiation environment, a real-time monitoring system based on a fiber optic spectrometer for TIG welding process was developed for monitoring the depth of penetration during welding. This study used the system to collect arc spectra and utilized Principal Component Analysis to obtain the spectral principal components of different weld penetration depths. An innovative ATT-L2R-BiLSTM deep learning model was proposed to achieve classification and recognition of weld penetration depth during blocked tube TIG welding. The results show that the model achieved an accuracy of 92.61% under laboratory conditions, which is 5.11% higher than that of the Bi-LSTM network. The model was tested and verified on a blocked tube verification platform for nuclear power steam generators, achieving an accuracy of 99.26%. Finally, deep mining of welding quality features and precise evaluation of weld penetration depth during TIG welding were achieved under incomplete spectral information.

     

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