An Enhanced POE-Based Method with Identified Transmission Errors for Serial Robotic Kinematic Calibration

Chentao Mao, Zhang-wei Chen, Hongfei Zu, Xiang Zhang
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引用次数: 3

Abstract

This paper proposed an enhanced method on the basis of product of exponentials (POE) formula for open chain robotic kinematic calibration. The advantages of the method mainly lay in two aspects: Above all, both the joint offsets and the link length errors can be distinctly identified using the decoupling matrix B to constrain redundant degrees of freedom of POE-based model. Moreover, the absolute positioning accuracy can be further improved by identifying the errors of the reduction ratio and the coupling ratio, namely the transmission errors. Through this model, the following parameters can be identified: 1) the joint offsets, 2) the link lengths, 3) the transformation from measurement coordinate system to base, 4) the transformation from flange coordinate system to tool, and 5) the errors of joint reduction ratio and coupling ratio. The experimental results on a 6R type and a SCARA type manipulators revealed that there were significant improvements in the positioning accuracy after the calibration process: the 6R manipulator and the SCARA manipulator were enhanced from 2.175 mm to 0.291 mm, from 7.078 mm to 0.203 mm, respectively.
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一种基于改进的传动误差辨识方法用于串联机器人运动学标定
提出了一种基于指数积(POE)公式的开链机器人运动学标定的改进方法。该方法的优点主要体现在两个方面:首先,利用解耦矩阵B来约束基于pod的模型的冗余自由度,可以清晰地识别关节偏移量和连杆长度误差。此外,通过识别减速比和耦合比的误差,即传动误差,可以进一步提高绝对定位精度。通过该模型可以识别出以下参数:1)关节位移,2)连杆长度,3)测量坐标系到基座的转换,4)法兰坐标系到刀具的转换,5)关节减速比和耦合比的误差。对6R型和SCARA型机械手的实验结果表明,经过标定后,6R型和SCARA型机械手的定位精度分别从2.175 mm提高到0.291 mm和7.078 mm提高到0.203 mm。
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