基于lugrei -线性混合摩擦模型和改进平方根曲率卡尔曼滤波的机器人机械臂外力估计

IF 1.9 4区 计算机科学 Q3 ENGINEERING, INDUSTRIAL
Jiacai Wang, Jiaoliao Chen, Libin Zhang, Fang Xu, Lewei Zhi
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引用次数: 2

摘要

目的采用无传感器的机械臂外力估计方法,降低机器人系统的成本和复杂性。然而,机器人关节的复杂摩擦现象、机器人模型的不确定性和信号噪声显著降低了估计精度。本研究的目的在于探讨摩擦力建模与外力估计的噪声抑制。为提高机器人摩擦建模精度,提出了结合机器人关节动态摩擦特性和驱动电机静摩擦特性的lugr -linear-hybrid (lugr -l)摩擦模型。通过集成Sage窗口外层和非线性扰动观测器内层,对平方根cubature卡尔曼滤波器进行了改进。在外层,Sage窗口集成在平方根卡尔曼滤波器(W-SCKF)中,动态调整噪声统计量。将NDOB作为W-SCKF (NDOB- wsckf)的内层,得到状态模型的不确定状态变量。在一个真实机器人上进行的钉孔接触实验表明,基于LuGre- l模型的关节扭矩估计平均精度比LuGre模型提高了4.9%。基于NDOB- wsckf的外关节扭矩平均估计精度可达92.1%,比其他估计方法(SCKF和NDOB)提高4% ~ 15.3%。提出了一个lugr - l摩擦模型来处理机器人机械臂静、动态摩擦特性的耦合问题。将改进的SCKF应用于机器人机械手的外力估计。为了提高估计方法的抗噪能力和抗未建模状态变量的能力,将Sage窗口与NDOB相结合对SCKF进行改进,开发了NDOB- wsckf外力估计器。验证结果表明,该方法提高了机器人动力学模型和估计外力的精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
External force estimation for robot manipulator based on a LuGre-linear-hybrid friction model and an improved square root cubature Kalman filter
Purpose The sensorless external force estimation of robot manipulator can be helpful for reducing the cost and complexity of the robot system. However, the complex friction phenomenon of the robot joint and uncertainty of robot model and signal noise significantly decrease the estimation accuracy. This study aims to investigate the friction modeling and the noise rejection of the external force estimation. Design/methodology/approach A LuGre-linear-hybrid (LuGre-L) friction model that combines the dynamic friction characteristics of the robot joint and static friction of the drive motor is proposed to improve the modeling accuracy of robot friction. The square root cubature Kalman filter (SCKF) is improved by integrating a Sage Window outer layer and a nonlinear disturbance observer (NDOB) inner layer. In the outer layer, Sage Window is integrated in the square root Kalman filter (W-SCKF) to dynamically adjust noise statistics. NDOB is applied as the inner layer of W-SCKF (NDOB-WSCKF) to obtain the uncertain state variables of the state model. Findings A peg-in-hole contact experiment conducted on a real robot demonstrates that the average accuracy of the estimated joint torque based on LuGre-L is improved by 4.9% in contrast to the LuGre model. Based on the proposed NDOB-WSCKF, the average estimation accuracy of the external joint torque can reach up to 92.1%, which is improved by 4%–15.3% in contrast to other estimation methods (SCKF and NDOB). Originality/value A LuGre-L friction model is proposed to handle the coupling of static and dynamic friction characteristics for the robot manipulator. An improved SCKF is applied to estimate the external force of the robot manipulator. To improve the noise rejection ability of the estimation method and make it more resistant to unmodeled state variable, SCKF is improved by integrating a Sage Window and NDOB, and a NDOB-WSCKF external force estimator is developed. Validation results demonstrate that the accuracy of the robot dynamics model and the estimated external force is improved by the proposed method.
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来源期刊
CiteScore
4.50
自引率
16.70%
发文量
86
审稿时长
5.7 months
期刊介绍: Industrial Robot publishes peer reviewed research articles, technology reviews and specially commissioned case studies. Each issue includes high quality content covering all aspects of robotic technology, and reflecting the most interesting and strategically important research and development activities from around the world. The journal’s policy of not publishing work that has only been tested in simulation means that only the very best and most practical research articles are included. This ensures that the material that is published has real relevance and value for commercial manufacturing and research organizations. Industrial Robot''s coverage includes, but is not restricted to: Automatic assembly Flexible manufacturing Programming optimisation Simulation and offline programming Service robots Autonomous robots Swarm intelligence Humanoid robots Prosthetics and exoskeletons Machine intelligence Military robots Underwater and aerial robots Cooperative robots Flexible grippers and tactile sensing Robot vision Teleoperation Mobile robots Search and rescue robots Robot welding Collision avoidance Robotic machining Surgical robots Call for Papers 2020 AI for Autonomous Unmanned Systems Agricultural Robot Brain-Computer Interfaces for Human-Robot Interaction Cooperative Robots Robots for Environmental Monitoring Rehabilitation Robots Wearable Robotics/Exoskeletons.
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