Deep learning for spacecraft guidance, navigation, and control

Pub Date : 2021-01-01 DOI:10.15407/knit2021.06.038
S. Khoroshylov, M. Redka
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引用次数: 2

Abstract

The advances in deep learning have revolutionized the field of artificial intelligence, demonstrating the ability to create autonomous systems with a high level of understanding of the environments where they operate. These advances, as well as new tasks and requirements in space exploration, have led to an increased interest in these deep learning methods among space scientists and practitioners. The goal of this review article is to analyze the latest advances in deep learning for navigation, guidance, and control problems in space. The problems of controlling the attitude and relative motion of spacecraft are considered for both traditional and new missions, such as orbital service. The results obtained using these methods for landing and hovering operations considering missions to the Moon, Mars, and asteroids are also analyzed. Both supervised and reinforcement learning are used to solve such problems based on various architectures of artificial neural networks, including convolutional and recurrent ones. The possibility of using deep learning together with methods of control theory is analyzed to solve the considered problems more efficiently. The difficulties that limit the application of the reviewed methods for space applications are highlighted. The necessary research directions for solving these problems are indicated.
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用于航天器制导、导航和控制的深度学习
深度学习的进步彻底改变了人工智能领域,展示了创建对其运行环境具有高度理解的自主系统的能力。这些进步,以及空间探索中的新任务和新要求,导致空间科学家和实践者对这些深度学习方法的兴趣增加。这篇综述文章的目的是分析深度学习在空间导航、制导和控制问题上的最新进展。对航天器的姿态和相对运动控制问题进行了研究,包括传统任务和新型任务,如在轨服务。最后,对这些方法在月球、火星和小行星着陆和悬停任务中的结果进行了分析。监督学习和强化学习都被用来解决基于各种人工神经网络架构的问题,包括卷积和循环神经网络。分析了将深度学习与控制理论方法结合使用的可能性,以更有效地解决所考虑的问题。强调了限制将所审查的方法应用于空间应用的困难。指出了解决这些问题的必要研究方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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