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Robotic Tooling Self-Calibration

机译:机器人工具自校准

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摘要

Industrial robot calibration packages, such as ABB CalibWare, are merely developed only for robot calibration. As a result, the robotic tooling systems designed and fabricated by the user are often calibrated in an ad hoc fashion. In this paper, a systematic approach for robotic tooling calibration is presented in order to overcome this problem. The idea is to include the tooling system as an extended body in the robot kinematic model, from which two error models are established. The first model is associated with the robot, while the second model is associated with the tooling. Once the robot is fully calibrated, the first error will be eliminated. Thus, our method is focused on the second error model. For this calibration, a self-calibration method is developed by using a calibration plate with multiple holes. Then, the tooling calibration model is formulated against the distance between the two holes. For measurements of the distances, a camera is mounted on the tooling system. To present the error mapping, a virtual kinematic link is proposed, which directly connects the camera to the tooling system. For error identification, a linear computational method is utilized to determine the tooling calibration parameters. The linear computational method is based on the Taylor expansion of the robotic tooling model. Once the error is identified, the next step is to implement the error in the tooling kinematic model. A case study is provided to demonstrate the effectiveness of the proposed method.
机译:工业机器人校准套件(如ABB Calibware)仅用于机器人校准。结果,由用户设计和制造的机器人工具系统通常以临时方式校准。本文提出了一种用于机器人校准的系统方法,以克服这个问题。该想法是将工具系统包括在机器人运动模型中作为扩展主体,从中建立了两个错误模型。第一模型与机器人相关联,而第二模型与工具相关联。一旦机器人完全校准,将消除第一个错误。因此,我们的方法专注于第二个错误模型。对于此校准,通过使用具有多个孔的校准板开发自校准方法。然后,将工具校准模型配制在两个孔之间的距离。为了测量距离,将相机安装在工具系统上。为了呈现错误映射,提出了虚拟运动链路,它直接将相机连接到工具系统。对于错误识别,利用线性计算方法来确定工具校准参数。线性计算方法基于机器人模型的泰勒膨胀。错误识别出错误后,下一步是在工具运动模型中实现错误。提供案例研究以证明所提出的方法的有效性。

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