利用射频识别技术实现机械手对物体的定位和高效抓取

Christian Thormann, A. Winkler
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引用次数: 5

摘要

本文研究了射频识别技术与工业机器人相结合的应用。为此,开发了工业4.0方案,通过为物体提供RFID应答器,使工件智能化。RFID标签具有分散存储信息的能力,可用于优化机器人的任务。在我们的例子中,首先由机器人抓取器识别工件宽度并保存在对象中。之后,可以读出该值,并用于进一步快速和敏感地捕获对象。在这种情况下,研究了参数,如抓力和手指的速度如何影响力超调期间捕捉一个对象。本文对机器人处理工件时存储的有用信息类型提出了进一步的建议。在此基础上,提出了一种基于RFID天线的机器人工作空间工件定位的简单方法。本文提出的所有算法都通过实际实验得到了成功的验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Localization and efficient grasping of objects by a manipulator using RFID technique
The paper investigates applications of RFID technique (radio-frequency identification) in combination with industrial robots. For this purpose an Industry 4.0 scenario is developed which makes workpieces intelligent by supplying the objects with RFID transponders. The RFID tags are able to store information decentral which can be later used to optimize the task of the robot. In our example first the workpiece width is identified by the robot gripper and saved in the object. Afterwards this value can be read out and used for further fast and sensitive catching of the object. In this context it is investigated how parameters like grasping force and velocity of the fingers influence the force overshoot during catching an object. In the paper further proposals are given concerning to the kind of information which can be useful stored within the workpieces handle by robots. Furthermore, a simple approach is presented for localization of workpieces in the robot workspace by the robot which is equipped with a RFID antenna. All algorithms proposed in this paper are verified by practical experiments successfully.
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