A Comparative Study on Kinematic Calibration for a 3-DOF Parallel Manipulator Using the Complete-Minimal, Inverse-Kinematic and Geometric-Constraint Error Models

IF 4.2 2区 工程技术 Q1 Engineering Chinese Journal of Mechanical Engineering Pub Date : 2023-10-18 DOI:10.1186/s10033-023-00940-3
Haiyu Wu, Lingyu Kong, Qinchuan Li, Hao Wang, Genliang Chen
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Abstract

Abstract Kinematic calibration is a reliable way to improve the accuracy of parallel manipulators, while the error model dramatically affects the accuracy, reliability, and stability of identification results. In this paper, a comparison study on kinematic calibration for a 3-DOF parallel manipulator with three error models is presented to investigate the relative merits of different error modeling methods. The study takes into consideration the inverse-kinematic error model, which ignores all passive joint errors, the geometric-constraint error model, which is derived by special geometric constraints of the studied RPR-equivalent parallel manipulator, and the complete-minimal error model, which meets the complete, minimal, and continuous criteria. This comparison focuses on aspects such as modeling complexity, identification accuracy, the impact of noise uncertainty, and parameter identifiability. To facilitate a more intuitive comparison, simulations are conducted to draw conclusions in certain aspects, including accuracy, the influence of the S joint, identification with noises, and sensitivity indices. The simulations indicate that the complete-minimal error model exhibits the lowest residual values, and all error models demonstrate stability considering noises. Hereafter, an experiment is conducted on a prototype using a laser tracker, providing further insights into the differences among the three error models. The results show that the residual errors of this machine tool are significantly improved according to the identified parameters, and the complete-minimal error model can approach the measurements by nearly 90% compared to the inverse-kinematic error model. The findings pertaining to the model process, complexity, and limitations are also instructive for other parallel manipulators.
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基于完全最小误差、逆运动学误差和几何约束误差模型的三自由度并联机构运动学标定比较研究
摘要运动标定是提高并联机器人精度的一种可靠方法,而误差模型对标定结果的精度、可靠性和稳定性影响很大。本文对三自由度并联机械臂的三种误差模型进行了运动学标定的比较研究,探讨了不同误差建模方法的优缺点。研究考虑了忽略所有被动关节误差的逆运动学误差模型、基于特定几何约束导出的几何约束误差模型和满足完备、极小和连续准则的完全最小误差模型。这种比较主要集中在建模复杂性、识别精度、噪声不确定性的影响和参数可识别性等方面。为了更直观地进行比较,我们进行了仿真,从精度、S接头的影响、噪声识别、灵敏度指标等方面得出结论。仿真结果表明,完全最小误差模型的残差最小,且在考虑噪声的情况下,所有误差模型都具有较好的稳定性。接下来,利用激光跟踪仪在样机上进行实验,进一步了解三种误差模型之间的差异。结果表明,根据识别的参数,该机床的残余误差得到了显著改善,与逆运动学误差模型相比,完全最小误差模型能接近测量值近90%。有关模型过程、复杂性和局限性的研究结果也对其他并联机械臂具有指导意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
5.60
自引率
4.80%
发文量
3097
审稿时长
8 months
期刊介绍: Chinese Journal of Mechanical Engineering (CJME) was launched in 1988. It is a peer-reviewed journal under the govern of China Association for Science and Technology (CAST) and sponsored by Chinese Mechanical Engineering Society (CMES). The publishing scopes of CJME follow with: Mechanism and Robotics, including but not limited to -- Innovative Mechanism Design -- Mechanical Transmission -- Robot Structure Design and Control -- Applications for Robotics (e.g., Industrial Robot, Medical Robot, Service Robot…) -- Tri-Co Robotics Intelligent Manufacturing Technology, including but not limited to -- Innovative Industrial Design -- Intelligent Machining Process -- Artificial Intelligence -- Micro- and Nano-manufacturing -- Material Increasing Manufacturing -- Intelligent Monitoring Technology -- Machine Fault Diagnostics and Prognostics Advanced Transportation Equipment, including but not limited to -- New Energy Vehicle Technology -- Unmanned Vehicle -- Advanced Rail Transportation -- Intelligent Transport System Ocean Engineering Equipment, including but not limited to --Equipment for Deep-sea Exploration -- Autonomous Underwater Vehicle Smart Material, including but not limited to --Special Metal Functional Materials --Advanced Composite Materials --Material Forming Technology.
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