...
首页> 外文期刊>Industrial Robot >Research on detection of welding penetration state during robotic GTAW process based on audible arc sound
【24h】

Research on detection of welding penetration state during robotic GTAW process based on audible arc sound

机译:基于弧声的机器人GTAW焊接过程中焊缝熔深状态检测研究

获取原文
获取原文并翻译 | 示例
           

摘要

Purpose - Penetration state is one of the most important factors for judging the quality of a gas tungsten arc welding (GTAW) joint. The purpose of this paper is to identify and classify the penetration state and welding quality through the features of arc sound signal during robotic GTAW process. Design/methodology/approach - This paper tried to make a foundation work to achieve on-line monitoring of penetration state to weld pool through arc sound signal. The statistic features of arc sound under different penetration states like partial penetration, full penetration and excessive penetration were extracted and analysed, and wavelet packet analysis was used to extract frequency energy at different frequency bands. The prediction models were established by artificial neural networks based on different features combination. Findings - The experiment results demonstrated that each feature in time and frequency domain could react the penetration behaviour, arc sound in different frequency band had different performance at different penetration states and the prediction model established by 23 features in time domain and frequency domain got the best prediction effect to recognize different penetration states and welding quality through arc sound signal. Originality/value - This paper tried to make a foundation work to achieve identifying penetration state and welding quality through the features of arc sound signal during robotic GTAW process. A total of 23 features in time domain and frequency domain were extracted at different penetration states. And energy at different frequency bands was proved to be an effective factor for identifying different penetration states. Finally, a prediction model built by 23 features was proved to have the best prediction effect of welding quality.
机译:目的-渗透状态是判断气体保护钨极氩弧焊(GTAW)接头质量的最重要因素之一。本文的目的是通过机器人GTAW加工过程中通过电弧声信号的特征来识别和分类熔深状态和焊接质量。设计/方法/方法-本文试图为通过电弧声信号实现对焊缝熔合状态的在线监测进行在线监测奠定基础。提取并分析了部分穿透,完全穿透和过度穿透等不同穿透状态下的电弧声的统计特征,并利用小波包分析提取了不同频段的频率能量。基于不同特征组合的人工神经网络建立了预测模型。发现-实验结果表明,时域和频域中的每个特征都可以对穿透行为做出反应,不同频段的电弧声在不同的穿透状态下具有不同的性能,由时域和频域中的23个特征建立的预测模型是最佳的通过电弧声信号识别不同熔深状态和焊接质量的预测效果。原创性/价值-本文试图通过在机器人GTAW加工过程中通过电弧声信号的特征来实现识别熔深状态和焊接质量的基础工作。在不同的穿透状态下,共提取了时域和频域中的23个特征。事实证明,不同频段的能量是识别不同穿透状态的有效因素。最后,证明了由23个特征建立的预测模型具有最佳的焊接质量预测效果。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号