首页> 外文期刊>Proceedings of the Institution of Mechanical Engineers. Part L, Journal of Materials: Design and Application >In-situ monitoring of hybrid friction diffusion bonded EN AW 1050/EN CW 004A lap joints using artificial neural nets
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In-situ monitoring of hybrid friction diffusion bonded EN AW 1050/EN CW 004A lap joints using artificial neural nets

机译:使用人工神经网的混合摩擦扩散粘合互补的互联网接头的原位监测

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摘要

In this work, a dissimilar copper/aluminum lap joint was generated by force-controlled hybrid friction diffusion bonding setup (HFDB). During the welding process, the appearing torque, the welding force as well as the plunge depth are recorded over time. Due to the force-controlled process, tool wear and the use of different materials, the resulting data series varies significantly, which makes quality assurance according to classical methods very difficult. Therefore, a Convolutional Neural Network was developed which allows the evaluation of the recorded process data. In this study, data from sound welds as well as data from samples with weld defects were considered. In addition to the different welding qualities, deviations from the ideal conditions due to tool wear and the use of different alloys were also considered. The validity of the developed approach is determined by cross validation during the training process and different amounts of training data. With an accuracy of 88.5%, the approach of using Convolutional Neural Network has proven to be a suitable tool for monitoring the processes.
机译:在这项工作中,通过力控制的混合摩擦扩散粘合装置(HFDB)产生不同的铜/铝圈接头。在焊接过程中,随着时间的推移,记录出现的扭矩,焊接力以及插入深度。由于力控制的工艺,工具磨损和不同材料的使用,所得到的数据序列显着变化,这使得质量保证根据经典方法非常困难。因此,开发了一种卷积神经网络,其允许评估记录的过程数据。在本研究中,考虑来自良好焊接的数据以及来自焊接缺陷的样品的数据。除了不同的焊接品质之外,还考虑了由于工具磨损和使用不同合金而引起的理想条件的偏差。发达方法的有效性由培训过程中的交叉验证和不同数量的培训数据确定。准确性为88.5%,使用卷积神经网络的方法已被证明是一种用于监控流程的合适工具。

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