强化学习对自主工程的促进

Doris Antensteiner, Vincent Dietrich, Michael Fiegert
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引用次数: 0

摘要

工程努力是当今工业自动化系统的主要成本因素之一。我们提出了一个配置系统,它减少了工程工作的义务。通过自我学习,配置系统可以通过主动学习环境来适应各种任务。我们使用机器人感知系统验证我们的配置系统,特别是采摘应用程序。机器人应用的感知系统在工业环境中变得越来越重要。如今,这样的系统通常需要训练有素的技术人员进行繁琐的配置和设计。必须对每个应用程序和环境中的每次更改执行这些过程。我们的机器人感知系统是在防喷器基准上进行评估的,它由两个元素组成。首先,我们设计构建块,这些构建块是可用于配置算法的算法和数据集。其次,我们实现代理(配置算法),它被设计成与我们的构建块智能交互。在一个工业机器人拾取问题的例子中,我们展示了我们的自主工程系统可以减少工程工作量。
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The Furtherance of Autonomous Engineering via Reinforcement Learning
Engineering efforts are one of the major cost factors in today’s industrial automation systems. We present a configuration system, which grants a reduced obligation of engineering effort. Through self-learning the configuration system can adapt to various tasks by actively learning about its environment. We validate our configuration system using a robotic perception system, specifically a picking application. Perception systems for robotic applications become increasingly essential in industrial environments. Today, such systems often require tedious configuration and design from a well trained technician. These processes have to be carried out for each application and each change in the environment. Our robotic perception system is evaluated on the BOP benchmark and consists of two elements. First, we design building blocks, which are algorithms and datasets available for our configuration algorithm. Second, we implement agents (configuration algorithms) which are designed to intelligently interact with our building blocks. On an examplary industrial robotic picking problem we show, that our autonomous engineering system can reduce engineering efforts.
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Informatics in Control, Automation and Robotics: 18th International Conference, ICINCO 2021 Lieusaint - Paris, France, July 6–8, 2021, Revised Selected Papers A Digital Twin Setup for Safety-aware Optimization of a Cyber-physical System Segmenting Maps by Analyzing Free and Occupied Regions with Voronoi Diagrams Efficient Verification of CPA Lyapunov Functions Open-loop Control of a Soft Arm in Throwing Tasks
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