利用维度减少和线性化误差最小化的混合模型,对六道阵串行机器人进行精确的运动学校准

Zhouxiang Jiang, Shiyuan Chen, Yuchen Zhao, Zhongjie Long, Bao Song, Xiaoqi Tang
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引用次数: 0

摘要

目的在典型的基于模型的标定中,线性化误差是不可避免的,如果旋转运动学误差不够小或链接长度过长,就会对识别结果产生不可忽略的负面影响,这在工业案例中很常见。设计/方法/途径通过从完整的运动学误差模型中剔除线性化运动学误差,将线性化运动学误差对识别精度的负面影响降至最低。因此,将对其余误差参数实现高识别精度的完整运动学误差模型与该新模型相结合,创建了一个能够高精度识别所有运动学误差的两步校准程序。因此,对不同情况下线性化误差的负面影响进行了定量分析,为新模型中允许的运动学误差提供了依据。根据与典型方法的比较,使用新的两步校准法得到的结果要精确得多。原创性/价值这一新方法在不影响完整性的情况下实现了高精度,易于操作,并且与典型方法一致,因为第二步与新模型的结合非常方便,无需改变传感器或测量仪器的设置。
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Accurate kinematic calibration of a six-DoF serial robot by using hybrid models with reduced dimension and minimized linearization errors

Purpose

In typical model-based calibration, linearization errors are derived inevitably, and non-negligible negative impact will be induced on the identification results if the rotational kinematic errors are not small enough or the lengths of links are too long, which is common in the industrial cases. Thus, an accurate two-step kinematic calibration method minimizing the linearization errors is presented for a six-DoF serial robot to improve the calibration accuracy.

Design/methodology/approach

The negative impact of linearization on identification accuracy is minimized by removing the responsible linearized kinematic errors from the complete kinematic error model. Accordingly, the identification results of the dimension-reduced new model are accurate but not complete, so the complete kinematic error model, which achieves high identification accuracy of the rest of the error parameters, is combined with this new model to create a two-step calibration procedure capable of highly accurate identification of all the kinematic errors.

Findings

The proportions of linearization errors in measured pose errors are quantified and found to be non-negligible with the increase of rotational kinematic errors. Thus, negative impacts of linearization errors are analyzed quantitatively in different cases, providing the basis for allowed kinematic errors in the new model. Much more accurate results were obtained by using the new two-step calibration method, according to a comparison with the typical methods.

Originality/value

This new method achieves high accuracy with no compromise on completeness, is easy to operate and is consistent with the typical method because the second step with the new model is conveniently combined without changing the sensors or measurement instrument setup.

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