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Evolutionary Robot Calibration and Nonlinear Compensation Methodology Based on GA-DNN and an Extra Compliance Error Model

机译:基于GA-DNN和额外顺应误差模型的进化机器人标定与非线性补偿方法

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摘要

This study addresses the problem of nonlinear error predictive compensation to achieve high positioning accuracy for advanced industrial applications. An improved calibration method based on the generalisation performance evaluation is proposed to enhance the stability and accuracy of robot calibration. With the development of technology, a deep neural network (DNN) optimised by a genetic algorithm (GA) is applied to predict the nonlinear error of the calibrated robot. To address the change of external payload, an extra compliance error model is established with a linear piecewise method. A global compensation method combining the GA-DNN nonlinear regression prediction model and the compliance error model is then proposed to achieve the robot's high-precision positioning performance under any external payload. Experimental results obtained on a Staubli RX160L robot with a FARO laser tracker are introduced to demonstrate the effectiveness and benefits of our proposed methodology. The enhanced positioning accuracy can reach 0.22 mm with 98 probability (i.e., the maximum positioning error in all test data).
机译:本研究解决了非线性误差预测补偿的问题,以实现先进工业应用的高定位精度。为了提高机器人标定的稳定性和准确性,提出了一种基于泛化性能评估的改进标定方法。随着技术的发展,应用遗传算法(GA)优化的深度神经网络(DNN)来预测标定机器人的非线性误差。针对外部有效载荷的变化问题,采用线性分段方法建立了额外的合规误差模型。然后,提出一种结合GA-DNN非线性回归预测模型和顺应误差模型的全局补偿方法,以实现机器人在任何外部有效载荷下的高精度定位性能。介绍了在Staubli RX160L机器人上获得的实验结果,并展示了我们提出的方法的有效性和优势。增强后的定位精度可以达到0.22 mm,概率为98%(即所有测试数据中的最大定位误差)。

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