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Welder rating system based learning of human welder intelligence in GTAW

机译:GTAW中基于焊工定级系统的焊工智能学习

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Current industrial welding robots are mostly articulated arms with pre-programmed sets of movement, which lack the intelligence skilled human welders possess. In this paper human welder's response against 3D weld pool surface is learned and transferred to the welding robots to perform automated welding tasks. To this end, an innovative teleoperated virtualized welding platform is utilized to conduct dynamic training experiments by a human welder whose arm movements together with the 3D weld pool characteristic parameters are recorded. The data is off-line rated by the welder and a welder rating system is consequently trained, using an Adaptive Neuro-Fuzzy Inference System (ANFIS), to automate the rating. Data from the training experiments are then automatically classified such that top rated data pairs are selected to model and extract “good response” minimizing the effect from “bad operation” made during the training. A supervised ANFIS model is then proposed to correlate the 3D weld pool characteristic parameters and welder's adjustment on the welding speed. The obtained welder response model is then transferred to the welding robot to perform automated welding task as an intelligent controller. Experiment results verified that the proposed model is able to control the process under different welding current as well as under speed disturbance. A foundation is thus established to selectively learn “good response” to rapidly extract human intelligence to transfer into welding robots.
机译:当前的工业焊接机器人大多是具有预先编程的运动集的关节臂,其缺乏熟练的人类焊工所具有的智能。在本文中,学习了人类焊工对3D焊池表面的响应,并将其传递给焊接机器人以执行自动化焊接任务。为此,创新的远程操作虚拟化焊接平台被用于由人类焊工进行动态训练实验,该焊工记录了手臂运动以及3D焊池特征参数。数据由焊工进行脱机评级,因此,使用自适应神经模糊推理系统(ANFIS)对焊工评级系统进行培训,以使评级自动化。然后将来自训练实验的数据自动分类,以便选择评分最高的数据对以建模和提取“良好响应”,从而最大程度地减少训练期间进行的“不良操作”的影响。然后提出了一个监督的ANFIS模型,以关联3D焊池特征参数和焊工对焊接速度的调整。然后,将获得的焊工响应模型转移到焊接机器人,以作为智能控制器执行自动焊接任务。实验结果证明,该模型能够在不同的焊接电流以及速度干扰下控制焊接过程。这样就建立了一个基础,以有选择地学习“良好的反应”,以迅速提取人类的智能,从而转移到焊接机器人中。

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