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Virtualized welding based learning of human welder behaviors for intelligent robotic welding.

机译:基于虚拟焊接的人类焊工行为学习,用于智能机器人焊接。

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摘要

Combining human welder (with intelligence and sensing versatility) and automated welding robots (with precision and consistency) can lead to next generation intelligent welding systems. In this dissertation intelligent welding robots are developed by process modeling / control method and learning the human welder behavior.;Weld penetration and 3D weld pool surface are first accurately controlled for an automated Gas Tungsten Arc Welding (GTAW) machine. Closed-form model predictive control (MPC) algorithm is derived for real-time welding applications. Skilled welder response to 3D weld pool surface by adjusting the welding current is then modeled using Adaptive Neuro-Fuzzy Inference System (ANFIS), and compared to the novice welder. Automated welding experiments confirm the effectiveness of the proposed human response model.;A virtualized welding system is then developed that enables transferring the human knowledge into a welding robot. The learning of human welder movement (i.e., welding speed) is first realized with Virtual Reality (VR) enhancement using iterative K-means based local ANFIS modeling. As a separate effort, the learning is performed without VR enhancement utilizing a fuzzy classifier to rank the data and only preserve the high ranking "correct" response. The trained supervised ANFIS model is transferred to the welding robot and the performance of the controller is examined. A fuzzy weighting based data fusion approach to combine multiple machine and human intelligent models is proposed. The data fusion model can outperform individual machine-based control algorithm and welder intelligence-based models (with and without VR enhancement).;Finally a data-driven approach is proposed to model human welder adjustments in 3D (including welding speed, arc length, and torch orientations). Teleoperated training experiments are conducted in which a human welder tries to adjust the torch movements in 3D based on his observation on the real-time weld pool image feedback. The data is off-line rated by the welder and a welder rating system is synthesized. ANFIS model is then proposed to correlate the 3D weld pool characteristic parameters and welder's torch movements. A foundation is thus established to rapidly extract human intelligence and transfer such intelligence into welding robots.;KEY WORDS: Welder response modeling, welder rating system, virtualized welding, intelligent welding robot, GTAW.
机译:将人类焊工(具有智能和感应多功能性)与自动化焊接机器人(具有精确性和一致性)结合起来,可以开发出下一代智能焊接系统。本文通过过程建模/控制方法并学习人工焊工的行为,开发了智能焊接机器人。首先,对一台自动钨极氩弧焊(GTAW)机器精确地控制了焊缝熔深和3D熔池表面。导出了用于实时焊接应用的闭式模型预测控制(MPC)算法。然后使用自适应神经模糊推理系统(ANFIS)对熟练的焊工通过调节焊接电流对3D焊池表面的响应进行建模,并与新手焊工进行比较。自动化的焊接实验证实了所提出的人类反应模型的有效性。然后开发了一种虚拟化的焊接系统,该系统能够将人类的知识转移到焊接机器人中。首先使用基于迭代K均值的局部ANFIS建模的虚拟现实(VR)增强功能来实现对人类焊工运动(即焊接速度)的学习。作为一项单独的工作,无需使用模糊分类器对VR进行增强就可以对学习进行排序,从而使用模糊分类器对数据进行排名,并且仅保留高排名的“正确”响应。将训练有素的监督ANFIS模型转移到焊接机器人,并检查控制器的性能。提出了一种基于模糊加权的数据融合方法,将多种机器模型与人类智能模型相结合。数据融合模型的性能优于单个基于机器的控制算法和基于焊工智能的模型(具有或不具有VR增强功能)。最后,提出了一种数据驱动方法来模拟3D中的人类焊工调整(包括焊接速度,电弧长度,和火炬方向)。进行了远程操作的训练实验,在该实验中,焊工试图根据焊缝实时图像反馈的观察结果来调整3D焊炬运动。数据由焊工离线评估,并综合了焊工评估系统。然后提出ANFIS模型,以关联3D焊池特征参数和焊工的焊炬运动。这样就建立了一个基础,可以迅速提取人类的智能并将其转移到焊接机器人中。关键词:焊机响应建模,焊工评定系统,虚拟焊接,智能焊接机器人,GTAW。

著录项

  • 作者

    Liu, Yukang.;

  • 作者单位

    University of Kentucky.;

  • 授予单位 University of Kentucky.;
  • 学科 Electrical engineering.;Robotics.
  • 学位 Ph.D.
  • 年度 2014
  • 页码 200 p.
  • 总页数 200
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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