利用刀具信号进行去毛刺机器人的精细运动控制

A. Abou-El-Ela, R. Isermann
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引用次数: 2

摘要

评估了利用刀具信号作为一种替代反馈技术来提高复杂精密零件机器人加工的可行性。提出了一种基于复杂刀具动力学模型和非线性切削过程的混合精细运动控制方案,以适应自动去毛刺和倒角应用中机器人轨迹的位置误差。将人工神经网络作为通用逼近器,结合相关分析方法,建立了切削过程中可测刀具量与啮合深度的非线性映射关系。提出了一种上位自适应策略,将运动修正方向和机器人标称路径调整到工件的局部位移。通过高速刀具对纤维增强塑料进行去毛刺和倒角的机器人实验,验证了所提精细运动控制方案的有效性和性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fine motion control of robot manipulators in deburring applications utilizing cutting tool signals
The feasibility of exclusively utilizing cutting tool signals as an alternative feedback technique to enhance robotic machining of complex precision components is evaluated. A hybrid fine motion control scheme based on sophisticated models of the cutting tool dynamics and the nonlinear cutting process is proposed for accommodating the robot trajectory to positional inaccuracies in automated deburring and chamfering applications. Artificial neural networks as general approximators in conjunction with correlation analysis methods are employed to establish the nonlinear mapping of the measurable cutting tool quantities to the depth of engagement during the cutting operation. A superordinate adaptation strategy is developed to adjust the direction of motion correction and the nominal robot path to the local workpiece displacement. The effectiveness and performance of the proposed fine motion control scheme are demonstrated by some robotic deburring and chamfering experiments of fibre-reinforced plastics with a high-speed cutting tool.
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