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Calibration of A 6-DOF IR Based on PSO-BP Neural Network and FEA

机译:基于PSO-BP神经网络和FEA的6- DOF IR校准

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This paper presents a method for calibrating the position and posture of IR (industrial robots) in industrial sites based on PSO-BP neural network and FEA. Besides the neural network is used to identify the nonlinear relationship between the input and output of the industrial robot, the neural network model of the industrial robot is established. It is concluded that the HSR-JR612A industrial robot is calibrated by the neural network model, and its position mean square error is reduced from 2.15mm to 0.23mm, the mean square error of the industrial robot’s posture drops from 0.985° to 0.163°. Consequently, the error of the HSR-JR612A industrial robot is effectively compensated, and the performance index of the industrial robot can be greatly improved by the proposed method.
机译:本文介绍了一种校准基于PSO-BP神经网络和FEA的工业网站IR(工业机器人)的位置和姿势的方法。此外,神经网络用于识别工业机器人的输入和输出之间的非线性关系,建立了工业机器人的神经网络模型。得出结论是,HSR-JR612A工业机器人通过神经网络模型校准,其位置平均误差从2.15mm降至0.23mm,工业机器人姿势的平均方误差从0.985°滴到0.163°。因此,有效地补偿了HSR-JR612A工业机器人的误差,并且通过所提出的方法可以大大提高工业机器人的性能指标。

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