A new method for autonomous robot calibration

X. Zhong, J. M. Lewis
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引用次数: 60

Abstract

A new method for autonomous robot calibration is presented which is suitable for on-site calibration in an industrial application environment. Using a trigger probe as an extension of the manipulator link, robot internal joint sensor measurements were recorded for kinematic identification while the robot tip-point was in contact with a constraint plane in its workspace. From the consistency conditions of the constraint plane, the linear identification equations were derived, from which the kinematic parameters were extracted based on only robot internal joint readings without any external measurements of the endpoint locations. A recurrent neural network (RNN) approach was applied to resolve the linear identification problem. The RNN-based algorithm is computationally more robust and efficient compared with conventional numerical optimisation approaches. Both simulation and experimental results for a six degree-of-freedom (DOF) PUMA robot are presented in this paper.
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一种自主机器人标定新方法
提出了一种适用于工业应用环境下现场标定的机器人自主标定新方法。利用触发探针作为机械手连杆的延伸,记录机器人内部关节传感器的测量值,并在机器人的工作空间中与约束平面接触时进行运动学识别。从约束平面的一致性条件出发,推导出机器人的线性辨识方程,在不进行端点位置外部测量的情况下,仅根据机器人内部关节读数提取运动学参数。采用递归神经网络(RNN)方法解决线性辨识问题。与传统的数值优化方法相比,基于rnn的算法在计算上具有更强的鲁棒性和效率。给出了一种六自由度PUMA机器人的仿真和实验结果。
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