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首页> 外文期刊>Proceedings of the Institution of Mechanical Engineers, Part B. Journal of engineering manufacture >A new criterion for quality monitoring of pulsed laser spot welding using an infrared sensor part 2: quality estimation using an artificial neural network
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A new criterion for quality monitoring of pulsed laser spot welding using an infrared sensor part 2: quality estimation using an artificial neural network

机译:使用红外传感器的脉冲激光点焊质量监控的新标准第2部分:使用人工神经网络进行质量估算

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摘要

This paper suggests a method for estimating weld quality using a radiation feature. In one experiment the dimensions of the weld joint were examined using the radiation feature. Results show that the feature can be used to estimate welddimensions. In another experiment, weld strength was estimated using the feature. Since it would be laborious to examine a large number of radiation features and find the explicit relationship, an artificial neural network (ANN) was employed. Inexperiments, the significant welding parameters were varied within a controllable range and 640 laser spot welds were used for ANN learning. The correlation coefficient between the estimated and the measured strength was as high as 0.98 for learned parts. The other 180 welds were used to appraise the learned ANN. The correlation coefficient between the estimated and the measured strength was as high as 0.95 for the unstudied parts and the mean square error of estimation was as low as 0.78 kgf.
机译:本文提出了一种使用辐射特征估算焊接质量的方法。在一个实验中,使用辐射特征检查了焊接接头的尺寸。结果表明,该特征可用于估计焊接尺寸。在另一个实验中,使用该功能估算了焊接强度。由于要检查大量的辐射特征并找到明确的关系会很费力,因此采用了人工神经网络(ANN)。在实验中,重要的焊接参数在可控范围内变化,并且使用640个激光点焊进行ANN学习。对于学习的零件,估算强度与测量强度之间的相关系数高达0.98。其他180个焊缝用于评估学习的人工神经网络。对于未研究的零件,估算强度与实测强度之间的相关系数高达0.95,估算均方误差低至0.78 kgf。

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