Artificial Intelligence-based Cognitive Cross-layer Decision Engine for Next-Generation Space Mission

Anu Jagannath, Jithin Jagannath, A. Drozd
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引用次数: 4

Abstract

In this position paper, the authors argue the need for a novel framework that provides flexibility, autonomy and optimizes the use of scarce resources to ensure reliable communication during next-generation space missions. To this end, the authors present the shortcomings of existing space architectures and the challenges in realizing adaptive autonomous space-networking. In this regard, the authors aim to jointly exploit the immense capabilities of deep reinforcement learning (DRL) and cross-layer optimization by proposing an artificial intelligence-based cognitive cross-layer decision engine to bolster next-generation space missions. The presented software-defined cognitive cross-layer decision engine is designed for the resource-constrained Internet-of-Space-Things. The framework is designed to be flexible to accommodate varying (with time and location) requirements of multiple space missions such as reliability, throughput, delay, energy-efficiency among others. In this work, the authors present the formulation of the cross-layer optimization for multiple mission objectives that forms the basis of the presented framework. The cross-layer optimization problem is then modeled as a Markov Decision Process to be solved using deep reinforcement learning (DRL). Subsequently, the authors elucidate the DRL model and concisely explain the deep neural network architecture to perform the DRL. This position paper concludes by providing the different phases of the evaluation plan for the proposed cognitive framework.
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基于人工智能的下一代航天任务认知跨层决策引擎
在这份立场文件中,作者认为需要一种新的框架,提供灵活性、自主性和优化稀缺资源的使用,以确保下一代太空任务期间可靠的通信。为此,作者提出了现有空间架构的不足和实现自适应自主空间网络的挑战。在这方面,作者的目标是通过提出基于人工智能的认知跨层决策引擎来共同利用深度强化学习(DRL)和跨层优化的巨大能力,以支持下一代太空任务。提出的软件定义认知跨层决策引擎是针对资源受限的空间-物联网而设计的。该框架的设计是灵活的,以适应多种空间任务的不同(随时间和地点)要求,如可靠性、吞吐量、延迟、能源效率等。在这项工作中,作者提出了形成所述框架基础的多个任务目标的跨层优化的公式。然后将跨层优化问题建模为使用深度强化学习(DRL)解决的马尔可夫决策过程。在此基础上,对DRL模型进行了阐述,并简要说明了实现DRL的深度神经网络体系结构。本意见书最后提供了所建议的认知框架的评估计划的不同阶段。
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