Intelligent task robot system based on process recipe extraction from product 3D modeling file

Hyonyoung Han, Heechul Bae, Hyunchul Kang, Jiyon Son, H. Kim
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引用次数: 1

Abstract

This study introduces intelligent task robot system based on process recipe extraction from standard 3D model files. In small quantity batch production and mixed flow manufacturing condition, lots of time is spent on process planning and device control such as path planning in a robot system. If these processes could be automated, mixed flow production of various products will be working efficiently. This paper suggests automated process recipe extraction module based product registration subsystem and visual servoing based intelligent assembly task robot subsystem. The recipe module extracts list of parts, each part size and position from standard 3D model file (STEP) and analyzes the structure of product between parts. The extracted product data is stored in the recipe knowledge base as a recipe format and also plan-view image of each part. Robot system consists of real-time part recognition module, part scheduling module and motion planner module. The part recognition module identifies parts by matching real-time RGB image and plan-view image in knowledge base. The part scheduling module plan the sequence of part for task using a decision tree method. The motion planner module controls assembly task robot according to process recipe depending on task type. Performance of the system was tested with five types of sample products.
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基于工艺配方提取产品三维建模文件的智能任务机器人系统
本文介绍了基于标准三维模型文件的工艺配方提取的智能任务机器人系统。在小批量生产和混流制造条件下,机器人系统在工艺规划和路径规划等设备控制上花费了大量的时间。如果这些过程可以自动化,各种产品的混流生产将有效地工作。提出了基于产品注册子系统的自动化工艺配方提取模块和基于视觉伺服的智能装配任务机器人子系统。配方模块从标准3D模型文件(STEP)中提取零件列表、各个零件的尺寸和位置,并分析零件之间的产品结构。提取的产品数据以配方格式存储在配方知识库中,也存储在每个部件的平面视图图像中。机器人系统由实时零件识别模块、零件调度模块和运动规划模块组成。零件识别模块通过匹配知识库中的实时RGB图像和平面视图图像来识别零件。零件调度模块采用决策树方法规划零件的任务顺序。运动规划模块根据任务类型根据工艺配方控制装配任务机器人。用五种样品产品对系统的性能进行了测试。
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