故障树分析
航天器
避碰
计算机科学
运动规划
执行机构
控制理论(社会学)
断层(地质)
趋同(经济学)
国家(计算机科学)
规划师
机器人
碰撞
工程类
人工智能
算法
控制(管理)
可靠性工程
计算机安全
经济增长
地质学
航空航天工程
经济
地震学
作者
James Ragan,Benjamin Rivière,Fred Y. Hadaegh,Soon‐Jo Chung
出处
期刊:Science robotics
[American Association for the Advancement of Science (AAAS)]
日期:2024-08-28
卷期号:9 (93)
标识
DOI:10.1126/scirobotics.adn4722
摘要
Autonomous robots operating in uncertain or hazardous environments subject to state safety constraints must be able to identify and isolate faulty components in a time-optimal manner. When the underlying fault is ambiguous and intertwined with the robot’s state estimation, motion plans that discriminate between simultaneous actuator and sensor faults are necessary. However, the coupled fault mode and physical state uncertainty creates a constrained optimization problem that is challenging to solve with existing methods. We combined belief-space tree search, marginalized filtering, and concentration inequalities in our method, safe fault estimation via active sensing tree search (s-FEAST), a planner that actively diagnoses system faults by selecting actions that give the most informative observations while simultaneously enforcing probabilistic state constraints. We justify this approach with theoretical analysis showing s-FEAST’s convergence to optimal policies. Using our robotic spacecraft simulator, we experimentally validated s-FEAST by safely and successfully performing fault estimation while on a collision course with a model comet. These results were further validated through extensive numerical simulations demonstrating s-FEAST’s performance.
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