On the integration of skilled robot motions for productivity in manufacturing

Anders Bjorkelund, Lisett Edstrom, M. Haage, J. Malec, K. Nilsson, P. Nugues, S. Robertz, Denis Storkle, A. Blomdell, Rolf Johansson, M. Linderoth, Anders Nilsson, A. Robertsson, Andreas Stolt, H. Bruyninckx
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引用次数: 68

Abstract

Robots used in manufacturing today are tailored to their tasks by system integration based on expert knowledge concerning both production and machine control. For upcoming new generations of even more flexible robot solutions, in applications such as dexterous assembly, the robot setup and programming gets even more challenging. Reuse of solutions in terms of parameters, controls, process tuning, and of software modules in general then gets increasingly important. There has been valuable progress within reuse of automation solutions when machines comply with standards and behave according to nominal models. However, more flexible robots with sensor-based manipulation skills and cognitive functions for human interaction are far too complex to manage, and solutions are rarely reusable since knowledge is either implicit in imperative software or not captured in machine readable form. We propose techniques that build on existing knowledge by converting structured data into an RDF-based knowledge base. By enhancements of industrial control systems and available engineering tools, such knowledge can be gradually extended as part of the interaction during the definition of the robot task.
制造业中熟练机器人运动的集成与生产力研究
今天在制造业中使用的机器人是根据生产和机器控制方面的专家知识通过系统集成来定制的。对于即将到来的新一代更灵活的机器人解决方案,在灵巧装配等应用中,机器人的设置和编程变得更具挑战性。解决方案在参数、控制、过程调优和软件模块方面的重用变得越来越重要。当机器符合标准并根据标称模型运行时,在自动化解决方案的重用方面已经取得了有价值的进展。然而,具有基于传感器的操作技能和人类交互认知功能的更灵活的机器人过于复杂而难以管理,并且解决方案很少可重用,因为知识要么隐含在命令式软件中,要么不能以机器可读的形式捕获。我们提出了通过将结构化数据转换为基于rdf的知识库来构建现有知识的技术。通过增强工业控制系统和可用的工程工具,这些知识可以逐渐扩展为机器人任务定义期间交互的一部分。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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