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Uncertainty analysis of planar and spatial robots with joint clearances

机译:具有关节间隙的平面和空间机器人的不确定度分析

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摘要

Joint clearance in mechanisms and robots leads to uncertainty in function deviation. Unlike the effect of the link tolerance on the performance quality, the uncertainty effect of the joint clearance to the performance can not be eliminated by calibration because of the random nature. In this paper, based on the probability theory, a general probability density function (p.d.f.) of the endpoint of planar robots is established. The p.d.f. of the endpoint of a planer robot is equivalent to that of endpoint of a string of planar joint deviation vectors. By grouping the planar joint deviation vectors and establishing the structural constraint conditions between the vector groups, a basic approach of deriving the general p.d.f. of spatial robots is also presented. Based on the general p.d.f. of the endpoint, the distribution functions of the robot endpoint for any position tolerance zone and any joint distribution type, can be derived. The method is demonstrated by using some common types of position tolerance zones with uniform as well as normal distribution for joint clearance. The distribution functions of the robot endpoint are calculated and tabulated. These distribution functions and tables provide a convenient way to obtain the probability value for a robot to position its end point within a desired tolerance zone, and to determine the joint clearance value for the desired type of tolerance zone and the prescribed probability value of position repeatability.
机译:机械和机器人的关节间隙导致功能偏差的不确定性。与链接公差对性能质量的影响不同,关节间隙对性能的不确定性影响由于随机性无法通过校准消除。本文基于概率论,建立了平面机器人端点的一般概率密度函数(p.d.f.)。 p.d.f.刨床机器人的端点的端点等效于平面关节偏差向量的一串端点的端点。通过对平面关节偏差矢量进行分组并在矢量组之间建立结构约束条件,可以得出推导一般p.d.f的基本方法。还介绍了空间机器人。根据一般p.d.f.根据端点的分布,可以得出机器人端点在任何位置公差带和关节分布类型中的分布函数。通过使用一些常见类型的位置公差带(关节间隙均匀且呈正态分布)证明了该方法。计算并列出机器人端点的分布函数。这些分布函数和表格提供了一种方便的方法,可以获取机器人将其端点定位在所需公差带内的概率值,并确定所需公差带类型的关节间隙值以及位置重复性的规定概率值。

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