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Using Artificial Intelligence for Automating Testing of a Resident Space Object Collision Avoidance System on an Orbital Spacecraft

机译:使用人工智能对轨道航天器上的常驻空间物体避碰系统进行自动化测试

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Resident space objects (RSOs) pose a significant threat to orbital assets. Due to high relative velocities, even a small RSO can cause significant damage to an object that it strikes. Worse, in many cases a collision may create numerous additional RSOs, if the impacted object shatters apart. These new RSOs will have heterogeneous mass, size and orbital characteristics. Collision avoidance systems (CASs) are used to maneuver spacecraft out of the path of RSOs to prevent these impacts. A RSO CAS must be validated to ensure that it is able to perform effectively given a virtually unlimited number of strike scenarios. This paper presents work on the creation of a testing environment and AI testing routine that can be utilized to perform verification and validation activities for cyber-physical systems. It reviews prior work on automated and autonomous testing. Comparative performance (relative to the performance of a human tester) is discussed.
机译:驻地空间物体(RSO)对轨道资产构成重大威胁。由于较高的相对速度,即使很小的RSO也会对撞击的物体造成重大损坏。更糟糕的是,在许多情况下,如果碰撞的物体破碎,则碰撞可能会产生许多其他的RSO。这些新的RSO将具有异质的质量,大小和轨道特征。防撞系统(CAS)用于操纵航天器脱离RSO的路径,以防止这些影响。必须对RSO CAS进行验证,以确保在几乎无限数量的罢工情况下,它能够有效执行。本文介绍了有关创建测试环境和AI测试例程的工作,这些例程可用于执行网络物理系统的验证和确认活动。它回顾了有关自动和自治测试的先前工作。讨论了比较性能(相对于人类测试仪的性能)。

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