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Adaptive predictive ANFIS based human arm movement modeling and control in machine-human cooperative GTAW process

机译:人机协作GTAW过程中基于自适应预测ANFIS的手臂运动建模与控制

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Automated Gas Tungsten Arc Welding (GTAW) systems rely on highly costly precision control of welding conditions to produce repeatable results. Comparably, human welders have advantages in versatility and accessibility, yet fatigue and stress build up quickly thus adversely affecting their ability to produce quality welds. This paper proposes an innovative machine-human cooperative control scheme in which a machine algorithm determines (based on model prediction of human and process responses) adjustments to human welder controlled process. As the first study, this paper aims at accurate control of human arm movement. In particular, an innovative teleoperated virtualized welding platform is utilized to conduct dynamic experiments in order to correlate the human welder arm movement to the visual signal input. Linear model is firstly identified and an Adaptive Neuro-Fuzzy Inference System (ANFIS) model is then proposed to improve the model accuracy. To account for the welder's time-varying responses, an adaptive ANFIS model is finally used to model the intrinsic nonlinear and time-varying characteristic of the human welder response. An adaptive nonlinear ANFIS model-based predictive control (MPC) algorithm is then proposed to control the human arm movement. To demonstrate the controller's performance, human control experiments are conducted. Results verified that the proposed controller is able to track varying set-point and under input disturbance.
机译:自动化的钨极氩弧焊(GTAW)系统依靠对焊接条件的高成本精密控制来产生可重复的结果。相比之下,人类焊工在通用性和可及性方面具有优势,但是疲劳和应力会迅速累积,从而不利地影响其生产优质焊缝的能力。本文提出了一种创新的人机协作控制方案,其中一种机器算法(基于人的模型预测和过程响应)确定对人焊机控制过程的调整。作为第一个研究,本文旨在精确控制人的手臂运动。特别地,创新的远程操作虚拟化焊接平台被用来进行动态实验,以便将人类焊工的手臂运动与视觉信号输入相关联。首先确定线性模型,然后提出自适应神经模糊推理系统(ANFIS)模型以提高模型的准确性。为了说明焊工的时变响应,最后使用自适应ANFIS模型对人类焊工响应的固有非线性和时变特性进行建模。然后提出了一种基于自适应非线性ANFIS模型的预测控制(MPC)算法来控制人的手臂运动。为了演示控制器的性能,进行了人工控制实验。结果证明,所提出的控制器能够跟踪变化的设定点和输入干扰下。

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