Environment Modeling for Autonomous Welding Robotus

  • Kim, Min-Y. (Dept. of Mechanical Engineering. KAIST) ;
  • Cho, Hyung-Suk (Dept. of Mechanical Engineering. KAIST) ;
  • Kim, Jae-Hoon (Mechatronics Research Department,. Samsung Heavy Industries Co., Ltd)
  • Published : 2001.06.01

Abstract

Autonomous of welding process in shipyard is ultimately necessary., since welding site is spatially enclosed by floors and girders, and therefore welding operators are exposed to hostile working conditions. To solve this problem, a welding robot that can navigate autonomously within the enclosure needs to be developed. To achieve the welding ra나, the robotic welding systems needs a sensor system for the recognition of the working environments and the weld seam tracking, and a specially designed environment recognition strategy. In this paper, a three-dimensional laser vision system is developed based on the optical triangulation technology in order to provide robots with work environmental map. At the same time a strategy for environment recognition for welding mobile robot is proposed in order to recognize the work environment efficiently. The design of the sensor system, the algorithm for sensing the structured environment, and the recognition strategy and tactics for sensing the work environment are described and dis-cussed in detail.

Keywords

References

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