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Geometric interpretation of the general POE model for a serial-link robot via conversion into D-H parameterization

机译:通过转换为D-H参数化来对串行链接机器人的通用PO​​E模型进行几何解释

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While Product of Exponentials (POE) formula has been gaining maturity in modeling the kinematics of a serial-link robot, the Denavit-Hartenberg (D-H) notation is still the most widely used due to its intuitive and concise geometric interpretation of the robot. This paper has developed an analytical solution to automatically convert a POE model into a D-H model for a robot with revolute, prismatic, and helical joints, which are the complete set of three basic one degree of freedom lower pair joints for constructing a serial-link robot. The conversion algorithm developed can be used in applications such as calibration where it is necessary to convert the D-H model to the POE model for identification and then back to the D-H model for compensation. The equivalence of the two models proved in this paper also benefits the analysis of the identifiability of the kinematic parameters. It is found that the maximum number of identifiable parameters in a general POE model is 5h+4r+2t+n+6 where h, r, t, and n stand for the number of helical, revolute, prismatic, and general joints, respectively. It is also suggested that the identifiability of the base frame and the tool frame in the D-H model is restricted rather than the arbitrary six parameters as assumed previously.
机译:指数乘积(POE)公式在对串行链接机器人的运动学进行建模方面已经日趋成熟,但Denavit-Hartenberg(D-H)表示法仍是使用最广泛的表示法,因为它对机器人具有直观而简洁的几何解释。本文开发了一种解析解决方案,可将具有旋转,棱形和螺旋形关节的机器人的POE模型自动转换为DH模型,这是用于构建串行链接的三个基本的单自由度下对关节的完整集合机器人。所开发的转换算法可用于校准等应用,其中需要将D-H模型转换为POE模型以进行识别,然后再转换回D-H模型以进行补偿。本文证明的两个模型的等效性也有利于运动学参数可识别性的分析。发现在普通POE模型中可识别参数的最大数量为5h + 4r + 2t + n + 6,其中h,r,t和n分别代表螺旋,旋转,棱柱和普通接头的数量。还建议限制D-H模型中基础框架和工具框架的可识别性,而不是限制先前假定的任意六个参数。

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