运动学
机器人
计算机视觉
机器人校准
人工智能
激光跟踪器
方向(向量空间)
校准
计算机科学
职位(财务)
观测误差
机器人运动学
姿势
干涉测量
反向动力学
度量(数据仓库)
还原(数学)
机器人学
测量不确定度
激光器
错误检测和纠正
准确度和精密度
工程类
运动链
笛卡尔坐标系
工作区
移动机器人
近似误差
作者
Tao Ling,Xudong Zhang,Dawei Tu,Xudong Zhang
出处
期刊:Industrial Robot-an International Journal
[Emerald Publishing Limited]
日期:2025-12-22
卷期号:: 1-10
标识
DOI:10.1108/ir-02-2025-0058
摘要
Purpose Previous researchers optimized the robot kinematic parameters by measuring the position error of the robot end-effector, but lacked orientation information. The laser interferometer can simultaneously measure the position error and orientation error of the spatial straight line. Based on this, this paper aims to propose a robot kinematic calibration approach for measuring the pose errors of a robot end-effector using a laser interferometer to enhance the pose accuracy of the robot. Design/methodology/approach The approach specifically includes, based on the Modified Denavite–Hartenberg model, a kinematic pose error model is established using spatial line segments. The pose errors of the robot end-effector relative to the corner of the experimental test cube are measured using a laser interferometer. Subsequently, an improved model of the Sparrow Search Algorithm is developed, namely, the Chaotic Adaptive Sparrow Search Algorithm (CASSA). The kinematic error parameters are identified using the proposed CASSA, thereby completing the robot kinematic calibration. Findings The performance of the proposed approach is experienced on the TB6-R10 robot within the consideration of its workspace. The robot’s maximum positioning error is from 3.6804 to 0.6098 mm, and the average positioning error is from 1.0472 to 0.2856 mm, a reduction of 72.73%. In addition, the average orientation error is reduced from 478.8 to 219.4 arcsec, a reduction of 54.19%. Originality/value A new calibration approach is proposed and verified. The experimental results show that the pose accuracy is remarkably enhanced, providing a new measurement and identification method for robot kinematic calibration technology.
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