首页> 外文期刊>Control Systems, IEEE >Measurable Augmented Reality for Prototyping Cyberphysical Systems: A Robotics Platform to Aid the Hardware Prototyping and Performance Testing of Algorithms
【24h】

Measurable Augmented Reality for Prototyping Cyberphysical Systems: A Robotics Platform to Aid the Hardware Prototyping and Performance Testing of Algorithms

机译:用于网络物理系统原型的可测量增强现实:一个辅助硬件原型设计和算法性能测试的机器人平台

获取原文
获取原文并翻译 | 示例
       

摘要

Planning, control, perception, and learning are current research challenges in multirobot systems. The transition dynamics of the robots may be unknown or stochastic, making it difficult to select the best action each robot must take at a given time. The observation model, a function of the robots' sensor systems, may be noisy or partial, meaning that deterministic knowledge of the team's state is often impossible to attain. Moreover, the actions each robot can take may have an associated success rate and/or a probabilistic completion time. Robots designed for real-world applications require careful consideration of such sources of uncertainty, regardless of the control scheme or planning or learning algorithms used for a specific problem. Understanding the underlying mechanisms of planning algorithms can be challenging due to the latent variables they often operate on. When performance testing such algorithms on hardware, the simultaneous use of the debugging and visualization tools available on a workstation can be difficult. This transition from experimentation to implementation becomes especially challenging when the experiments need to replicate some feature of the software tool set in hardware, such as simulation of visually complex environments. This article details a robotics prototyping platform, called measurable augmented reality for prototyping cyberphysical systems (MAR-CPS), that directly addresses this problem, allowing for the real-time visualization of latent state information to aid hardware prototyping and performance testing of algorithms.
机译:计划,控制,感知和学习是多机器人系统当前的研究挑战。机器人的过渡动态可能是未知的或随机的,这使得难以选择每个机器人在给定时间必须采取的最佳动作。观察模型是机器人传感器系统的功能,可能是嘈杂的或部分的,这意味着通常无法获得有关团队状态的确定性知识。而且,每个机器人可以采取的动作可以具有相关的成功率和/或概率完成时间。为实际应用而设计的机器人需要仔细考虑这种不确定性来源,而不管用于特定问题的控制方案,规划或学习算法如何。由于规划算法经常会处理潜在变量,因此了解规划算法的基本机制可能会面临挑战。在硬件上对此类算法进行性能测试时,很难同时使用工作站上可用的调试和可视化工具。当实验需要在硬件中复制软件工具集的某些功能(例如对视觉复杂的环境进行仿真)时,从实验到实施的过渡变得特别具有挑战性。本文详细介绍了一个机器人原型平台,称为可测量的增强现实,用于原型物理网络系统(MAR-CPS),可以直接解决此问题,从而可以对潜在状态信息进行实时可视化,以帮助硬件原型设计和算法性能测试。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号