REAL-TIME DIAGNOSTICS FOR ROS RUNNING SYSTEMS BASED ON PROBABILISTIC PATTERNS IDENTIFICATION

S. Vechet, J. Krejsa
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引用次数: 4

Abstract

Autonomous mobile robots consists of various software modules to achieve given goal, including solving complex navigation tasks as localization, mapping or path planning. These tasks are highly dependent on the quality of data measured and gathered from hardware subsystems. Using Robot Operating System (ROS) as integration basis reduces the development effort and time to market. While ROS framework itself is considered as reliable and stable to run even soft real-time tasks, in case of any internal failures on data misreadings can be problematic to debug or even identify the problem for common user. Due to this unpleasant situations we develop a virtual assistant, internally represented as diagnostic expert system, to help users to identify and possibly fix the problem.
基于概率模式识别的ros运行系统实时诊断
自主移动机器人由各种软件模块组成,以实现给定的目标,包括解决复杂的导航任务,如定位、映射或路径规划。这些任务高度依赖于从硬件子系统测量和收集的数据的质量。使用机器人操作系统(ROS)作为集成基础可以减少开发工作量和上市时间。虽然ROS框架本身被认为是可靠和稳定的,甚至可以运行软实时任务,但如果在数据误读方面出现任何内部故障,可能会给普通用户的调试甚至识别问题带来问题。由于这种不愉快的情况,我们开发了一个虚拟助手,内部表示为诊断专家系统,以帮助用户识别并可能解决问题。
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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