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CONTROL OF GMA BUTT JOINT WELDING BASED ON NEURAL NETWORKS

机译:基于神经网络的GMA BUTT接头焊接控制

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摘要

This paper presents results from an experimentally based research on Gas Metal Arc Welding (GMAW), controlled by the artificial neural network (ANN) technology. A system has been developed for modeling and online adjustment of welding parameters, appropriate to guarantee a high degree of quality in the challenging field of butt joint welding with full penetration under stochastically changing boundary conditions, e.g. major gap width variations. GMAW experiments performed on mild-steel plates (3 mm of thickness), show that high quality welds with uniform back-bead geometry are achievable for gap width variations from 0.5 mm to 2.3 mm -scanned 10 mm in front of the electrode location. In this research, the mapping from joint geometry and reference weld quality to significant welding parameters, has been based on a static multi-layer feed-forward network. The Levenberg-Marquardt algorithm, for non-linear least square error minimization, has been used with the back-propagation algorithm for training the network, while a Bayesian regularization technique has been successfully applied for minimizing the risk of inexpedient over-training.
机译:本文介绍了基于实验的气体金属电弧焊(GMAW)研究的结果,该研究由人工神经网络(ANN)技术控制。已经开发出用于焊接参数的建模和在线调整的系统,该系统适合在挑战性的对接焊接领域中在随机变化的边界条件下,例如全焊透条件下,保证全焊透的高质量。主要的间隙宽度变化。在低碳钢板(厚度为3毫米)上进行的GMAW实验表明,对于间隙宽度从0.5毫米到2.3毫米的变化(在电极位置前面扫描10毫米),可以实现具有均匀背面焊缝几何形状的高质量焊缝。在这项研究中,从接头几何形状和参考焊接质量到重要焊接参数的映射一直基于静态多层前馈网络。用于非线性最小二乘误差最小化的Levenberg-Marquardt算法已与反向传播算法一起用于训练网络,而贝叶斯正则化技术已成功应用于最小化不适当的过度训练的风险。

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