Using Cognitive Communications to Increase the Operational Value of Collaborative Networks of Satellites

Ryan Linnabary, A. O'Brien, G. Smith, C. Ball, J. Johnson
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Abstract

Distributed satellite constellations utilizing networks of small satellites will be a key enabler of new observing strategies in the next generation of NASA missions. Small satellite instruments are becoming more capable, but are still resource constrained (i.e. power, data, scanning systems, etc.) in many situations. On a system scale, the primary purpose of collaborative communication among small satellites is to achieve system-level adaptivity. Collaborative communications however may also dramatically increase the complexity of the control algorithms for small satellite communication networks. Application of cognitive communication methods is one promising method to address this problem. In this paper, we discuss our recent investigations into how machine learning (ML) algorithms can be utilized in the high-level decision making of a communication system in a distributed satellite mission. We performed simulation studies to explore how the perception-action cycle could be applied to a collaborative small-satellite networks. To support this, we are using a recently developed open-source C++ library for the simulation of autonomous and collaborative networks of adaptive sensors.
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利用认知通信提高卫星协同网络的运行价值
利用小卫星网络的分布式卫星星座将成为NASA下一代任务中新观测策略的关键推动者。小型卫星仪器的能力越来越强,但在许多情况下仍然受到资源限制(即电力、数据、扫描系统等)。在系统尺度上,小卫星间协作通信的主要目的是实现系统级自适应。然而,协作通信也可能极大地增加小型卫星通信网络控制算法的复杂性。认知交际方法的应用是解决这一问题的一种很有前途的方法。在本文中,我们讨论了我们最近关于如何将机器学习(ML)算法用于分布式卫星任务中通信系统的高层决策的研究。我们进行了模拟研究,以探索如何将感知-行动周期应用于协作小卫星网络。为了支持这一点,我们正在使用最近开发的开源c++库来模拟自适应传感器的自主和协作网络。
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