核退役自主割管机器人协同系统研究

Thomas Burrell, C. West, S. Monk, Allahyar Montezeri
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引用次数: 16

摘要

一种移动摄像机用于支持辅助远程操作核退役割管系统。基础系统由双机械手和单个安装的Kinect摄像头组成。用户从屏幕上的图像中选择对象,同时计算机控制系统自动用一个末端执行器抓住管道,并定位第二个末端执行器进行切割。然而,由于数据限制,系统在某些情况下会失效,例如,在具有挑战性的退役场景中,部分遮挡的管道(在实验室中模拟)。因此,本文开发了一种新方法,通过引入移动相机来增加用例场景,例如用于安装在无人机上。这是一个重要的问题,引入SLAM和ArUco基准来定位摄像机,并提出了一种新的纠错方法来寻找ArUco标记。初步结果证明了该方法的有效性,但需要改进以实现鲁棒自主切割。因此,为了减少管道位置估计误差,提出了各种算法和硬件改进的建议。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards a Cooperative Robotic System for Autonomous Pipe Cutting in Nuclear Decommissioning
A mobile camera is used to support an assisted teleoperation pipe-cutting system for nuclear decommissioning. The base system consists of dual-manipulators with a single mounted Kinect camera. The user selects the object from an onscreen image, whilst the computer control system automatically grasps the pipe with one end-effector and positions the second for cutting. However, the system fails in some cases because of data limitations, for example a partially obscured pipe in a challenging decommissioning scenario (simulated in the laboratory). Hence, the present article develops a new method to increase the use case scenarios via the introduction of mobile cameras e.g. for mounting on a drone. This is a non-trivial problem, with SLAM and ArUco fiducials introduced to locate the cameras, and a novel error correction method proposed for finding the ArUco markers. Preliminary results demonstrate the validity of the approach but improvements will be required for robust autonomous cutting. Hence, to reduce the pipe position estimation errors, suggestions are made for various algorithmic and hardware refinements.
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