Session: MR-05-01 - Motion Planning, Dynamics, and Control of Robots
Paper Number: 90082
90082 - Automated Weld Path Generation Using Random Sample Consensus and Iterative Closest Point Workpiece Localization
Jobs performed by small to medium enterprises (SMEs) are infrequently automated due to high setup costs and lack of technical expertise needed for robot training, however productivity and worker safety can be improved in SMEs with the use automated tooling. In a traditional automated manufacturing environment, tasks such a welding or painting are accomplished through execution of pre-programmed tool motions which rely on the location and orientation of the workpiece to be fixed and known. The lack of this spatial information is typically treated through positioning of the workpiece with respect to the robot arm using jigs or fixtures which are costly in initial setup and not easily modified. Further, the resulting toolpath associated with a desired task is typically defined through manual teaching resulting in a path appropriate for an individual job. For this reason, SMEs requiring variation in part geometry or arrangement are not commonly automated. This work presents a method for automated weld path generation for a 6DOF co-bot arm using random sample consensus (RANSAC) and iterative closest point (ICP) workpiece localization from LiDAR pointclouds. Scans from a low cost 2D LiDAR mounted to the co-bot arm are used to generate 3D pointclouds of the workspace scene with the Robot Operating System (ROS). The Point Cloud Library (PCL) is used to compare the generated pointcloud with a CAD model to produce a rigid transformation to localize the workpiece. The estimated pose of the workpiece with respect to a fixed frame is used offline to generate a weld path as series of tool poses. Two example welding processes in which a cylinder or rectangular tube is joined to a flat plate and two square tubes are joined through weldment are investigated and a physical implementation of the method is demonstrated using a 2D LiDAR mounted to a 6DOF co-bot carrying a MIG welding torch.
Presenting Author: Tristan Hill Tennessee Technological University
Presenting Author Biography: Tristan Hill is a lecturer and researcher in the Mechanical Engineering department at Tennessee Technological University. He earned a B.S. and M.S. in mechanical engineering at Tennessee Technological University in 2010 and 2013 respectively. His areas of interest include robotics, computer programming, and engineering education, and he has worked with Dr. Stephen Canfield on various robotics and education projects for 10 years. His current public projects include a ROS Workshop for engineering students, autonomous navigation with ROS for various mobile robots, and CARLA Simulator integration with campus and city maps (https://github.com/thillRobot/projects).
Authors:
Tristan Hill Tennessee Technological UniversityStephen Canfield Tennessee Technological University
Robert Shelton Tennessee Technological University
Automated Weld Path Generation Using Random Sample Consensus and Iterative Closest Point Workpiece Localization
Paper Type
Technical Paper Publication