基于证据推理网络的无人系统健康分析

J. Dunham, Eric N. Johnson, E. Feron, Brian J. German
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引用次数: 1

摘要

证据推理由Glenn Shafer和Arthur Dempster在20世纪60年代和70年代提出,已广泛应用于风险分析、传感器融合和系统故障分析。由于计算复杂性要求较少的综合分析或显着的计算能力,因此在健康分析实时系统中的使用受到更多限制。证据推理网络,也称为估值网络,通过消除不可行的假设组合来减少计算需求。最近的扩展使这些网络能够根据证据输入学习节点之间的关系,使这些网络能够适应,而不需要主题专家定义每个关系更新。该系统应用于无人系统健康分析,展示了使用佐治亚理工学院(Georgia Institute of Technology)开发的GUST自动驾驶系统,以低计算能力在自动驾驶系统上实时运行复杂信念分析的能力。将证据组合方法与使用时间延迟和最坏情况假设进行应急响应的更传统的应急管理方法进行了比较。模拟训练被用作大量飞行试验的替代方法,操作结果主要通过代表性任务的GUST模拟进行测试。结果表明,证据推理网络是一种有效的无人系统实时健康分析方法,使用新颖的更新规则来理解基于操作结果的关系。包括飞行演示,以显示该系统在实际操作中的运行能力。这项工作对将无人系统集成到国家空域以及城市空中机动性具有重要意义。来自网络的结果是可解释的,使人类能够监督操作决策。实时实现可以集成到航空电子系统中。此外,数据驱动的学习关系方法使该系统能够适应与无人系统相关的信息的稳定变化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Unmanned Systems Health Analysis through Evidential Reasoning Networks
Evidential reasoning, developed by Glenn Shafer and Arthur Dempster in the 1960s and 1970s, has been extensively applied to risk analysis, sensor fusion, and system failure analysis. Use in real-time systems for health analysis has been more limited due to computational complexity requiring less either comprehensive analysis or significant computing power. Evidential reasoning networks, also known as valuation networks, reduce computational requirements by eliminating hypothesis combinations which are infeasible. Recent extensions enable these networks to learn the relationships between nodes based on evidence inputs, enabling these networks to adapt without the need of subject matter experts defining each relationship update. This system is applied to unmanned system health analysis, demonstrating the capability to run complex belief analyses in real-time on autopilot systems with low computational power using the GUST autopilot system developed at the Georgia Institute of Technology. Comparisons are made between the evidential combination approach and more traditional contingency management that uses time delays and worst-case scenario assumptions for contingency responses. Simulation training is used as a surrogate for high volumes of flight testing, and operational results are primarily tested through GUST simulation of a representative mission. Results show that evidential reasoning networks are an effective approach to real-time health analysis of unmanned systems, using the novel update rules to understand relationships based on operational outcomes. Flight demonstration is included to show the capability to run this system in real operations. This work has implications on integration of unmanned systems into the national airspace as well as on Urban Air Mobility. Results from the network are explainable, enabling human oversight of operational decisions. Real-time implementation enables integration into avionics systems. Further, the data-driven approach to learning relationships enables this system to adapt as information concerning unmanned systems steadily changes.
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