考虑关节迟滞与非线性刚度的重载工业机器人标定方法

Calibration method for heavy-duty industrial robots considering joint hysteresis and nonlinear stiffness

  • 摘要: 为解决重载工业机器人因关节柔性显著导致绝对定位精度低下,且传统线性刚度模型难以精确表征关节传动系统迟滞与非线性特性的瓶颈问题,提出一种基于解耦测量与非线性刚度预补偿的标定方法。该方法引入基于外部主动加载的分级观测策略,在施加覆盖额定力矩范围载荷的条件下,实现了J2与J3关节变形的数值解耦,从而直接获取具有明确物理意义的独立非线性刚度曲线;并据此,采用“刚度预补偿-几何参数辨识”策略完成机器人标定。结果表明,该方法有效克服了传统标定中的参数耦合与模型失配难题。在300 kg变负载验证集下,相比传统线性联合标定,机器人的绝对定位精度,即均方根(root mean square, RMS)由1.159 mm降至0.735 mm,最大误差约降低40%,显著提升了重载机器人在复杂工况下的作业精度。

     

    Abstract: To address the low absolute positioning accuracy in heavy-duty industrial robots caused by significant joint flexibility, and the bottleneck where traditional linear stiffness models fail to precisely characterize the hysteresis and nonlinearities of joint transmission systems, a calibration method based on decoupled measurement and nonlinear stiffness pre-compensation is proposed. The method introduces a hierarchical observation strategy utilizing external active loading. By applying loads covering the full rated torque range, it achieves the numerical decoupling of J2 and J3 joint deflections, thereby directly acquiring independent nonlinear stiffness curves with clear physical interpretations. On this basis, calibration is performed using a strategy of "stiffness pre-compensation and geometric parameter identification". Experimental results demonstrate that this method effectively overcomes the challenges of parameter coupling and model mismatch inherent in traditional approaches. Under validation conditions with variable loads up to 300 kg, compared to traditional linear coupled calibration, the root mean square (RMS) error of the robot's absolute positioning accuracy is reduced from 1.159 mm to 0.735 mm, and the maximum error is reduced by approximately 40%. This significantly enhances the operational accuracy of heavy-duty robots under complex working conditions.

     

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