Variable Stiffness Identification and Configuration Optimization of Industrial Robots for Machining Tasks

被引:0
作者
Jiachen Jiao
Wei Tian
Lin Zhang
Bo Li
Junshan Hu
Yufei Li
Dawei Li
Jianlong Zhang
机构
[1] Nanjing University of Aeronautics and Astronautics,
[2] Beijing Institute of Space Launch Technology,undefined
[3] Beijing Institute of Mechanical Equipment,undefined
来源
Chinese Journal of Mechanical Engineering | 2022年 / 35卷
关键词
Industrial robot; Space gridding; Variable stiffness identification; Configuration optimization; Smooth processing;
D O I
暂无
中图分类号
学科分类号
摘要
Industrial robots are increasingly being used in machining tasks because of their high flexibility and intelligence. However, the low structural stiffness of a robot significantly affects its positional accuracy and the machining quality of its operation equipment. Studying robot stiffness characteristics and optimization methods is an effective method of improving the stiffness performance of a robot. Accordingly, aiming at the poor accuracy of stiffness modeling caused by approximating the stiffness of each joint as a constant, a variable stiffness identification method is proposed based on space gridding. Subsequently, a task-oriented axial stiffness evaluation index is proposed to quantitatively assess the stiffness performance in the machining direction. In addition, by analyzing the redundant kinematic characteristics of the robot machining system, a configuration optimization method is further developed to maximize the index. For numerous points or trajectory-processing tasks, a configuration smoothing strategy is proposed to rapidly acquire optimized configurations. Finally, experiments on a KR500 robot were conducted to verify the feasibility and validity of the proposed stiffness identification and configuration optimization methods.
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共 73 条
[1]  
Garnier S(2017)Modelling of robotic drilling Procedia CIRP 58 416-421
[2]  
Subrin K(2018)Stability of lateral vibration in robotic rotary ultrasonic drilling International Journal of Mechanical Sciences 145 346-352
[3]  
Waiyagan K(2016)Vibration analysis and suppression in robotic boring process International Journal of Machine Tools and Manufacture 101 102-110
[4]  
Song D(2008)Cartesian compliance model for industrial robots using virtual joints Production Engineering 2 339-343
[5]  
Kan Z(2007)Modeling and identification of an industrial robot for machining applications CIRP Annals - Manufacturing Technology 56 387-390
[6]  
Wenhe L(2012)Joint stiffness identification of industrial serial robots Robotica 30 649-659
[7]  
Guo Y(2014)Simultaneous identification of joint compliance and kinematic parameters of industrial robots International Journal of Precision Engineering and Manufacturing 15 2257-2264
[8]  
Dong H(2015)Identification of the manipulator stiffness model parameters in industrial environment Mechanism & Machine Theory 90 1-22
[9]  
Wang G(2005)Enhanced stiffness modeling, identification and characterization for robot manipulators IEEE Transactions on Robotics 21 554-564
[10]  
Abele E(2015)Redundancy-based optimization approach to optimize robotic cell behaviour: Application to robotic machining Industrial Robot 42 167-178