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On The Comparison of Fuzzy Interpolations and Neural Network Fitting Functions in Modeless Robot Calibrations

机译:无模机器人标定中模糊插值与神经网络拟合函数的比较

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A comparison study among type 1 fuzzy interpolations (T1FI), interval type 2 fuzzy interpolations (IT2FI) and neural network fitting functions (NNFF) applied on modeless robots calibrations is proposed. Traditional robots calibration implements either model or modeless method. The compensation of position error in modeless method is to move the robot's end-effector to a target position in the robot workspace, and to find the target position error based on the measured neighboring 4-grid-point errors around the target position. A camera or other measurement device is attached on the robot's end-effector to find and measure the neighboring position errors, and compensate the target position with various error interpolation methods. By using the NNFF technique provided in this paper, the accuracy of the position error compensation can be greatly improved, which has been confirmed by the simulation results given in this paper. Compared with some other popular interpolation methods, this NNFF technique is a better choice. The simulation results show that more accurate compensation result can be achieved using this technique compared with the type-1 fuzzy and interval type 2 fuzzy interpolation methods.
机译:提出了将1型模糊插值(T1FI),区间2型模糊插值(IT2FI)和神经网络拟合函数(NNFF)应用于无模式机器人校准的比较研究。传统的机器人校准可采用模型或无模式方法。无模式方法中的位置误差补偿是将机器人的末端执行器移动到机器人工作空间中的目标位置,并根据在目标位置周围测得的相邻四栅格点误差来找到目标位置误差。摄像机或其他测量设备安装在机器人的末端执行器上,以查找和测量相邻的位置误差,并通过各种误差插值方法补偿目标位置。通过使用本文提供的NNFF技术,可以大大提高位置误差补偿的精度,这一点已通过本文给出的仿真结果得到了证实。与其他一些流行的插值方法相比,这种NNFF技术是更好的选择。仿真结果表明,与1型模糊和区间2型模糊插值方法相比,使用该技术可以获得更准确的补偿结果。

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