基于混合参数和深度学习模型的地月卫星运动预测

IF 3.4 2区 物理与天体物理 Q1 ENGINEERING, AEROSPACE
Emanuela Gaglio , Riccardo Bevilacqua
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引用次数: 0

摘要

地月地区因其在科学、商业和军事目的方面的战略作用而日益得到认可,已成为未来十年计划的众多太空任务的重点。宇宙飞船在这一区域的运动受地球、月球和太阳引力的复杂相互作用,以及太阳辐射压力和其他天体引力相互作用等扰动的支配。准确评估稳定和不稳定轨道区域的动力学以及预测卫星间的绝对和相对运动对任务的成功和业务安全至关重要。这项工作引入了一种新的混合方法,该方法集成了基于深度学习技术的参数分析,以隔离卫星状态不发散的区域,并预测其作为时间函数的演变。通过在地月旋转参考系中定义无量纲参数曲面和曲线,该方法隔离了导致非发散轨迹的轨道构型。该分析能够识别初始条件区域,从而生成高保真轨迹。然后使用这个集合来训练一个深度学习模型,该模型能够有效地预测卫星对卫星的绝对状态和相对状态。拟议的方法大大增强了空间域感知能力,解决了管理越来越多的地月任务和减轻轨道碰撞和不稳定等风险的挑战。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cislunar satellite motion prediction via hybrid parametric and deep learning models
The cislunar region, increasingly recognized for its strategic role for scientific, commercial, and military purposes, has emerged as the focus of numerous space missions planned over the next decade. The spacecraft motion in this region is governed by the complex interaction of gravitational forces by the Earth, the Moon, and the Sun, as well as perturbations such as solar radiation pressure and gravitational interactions with other celestial bodies. An accurate assessment of the dynamics of stable and unstable orbital regions and the prediction of absolute and relative satellite-to-satellite motion are essential for the success of missions and operational safety. This work introduces a novel hybrid approach that integrates a parametric analysis based on deep learning techniques to isolate regions in which the states of the satellites do not diverge and predict their evolution as a function of time. By defining non-dimensional parametric surfaces and curves in the Earth-Moon rotating reference frame, the method isolates orbital configurations that lead to non-divergent trajectories. The analysis enabled the identification of a region of initial conditions to generate high-fidelity trajectories. This set is then used to train a deep learning model capable of efficiently predicting both absolute and relative satellite-to-satellite states. The proposed approach significantly enhances Space Domain Awareness capabilities, addressing the challenges of managing an increasing number of cislunar missions and mitigating risks such as orbital collisions and instability.
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来源期刊
Acta Astronautica
Acta Astronautica 工程技术-工程:宇航
CiteScore
7.20
自引率
22.90%
发文量
599
审稿时长
53 days
期刊介绍: Acta Astronautica is sponsored by the International Academy of Astronautics. Content is based on original contributions in all fields of basic, engineering, life and social space sciences and of space technology related to: The peaceful scientific exploration of space, Its exploitation for human welfare and progress, Conception, design, development and operation of space-borne and Earth-based systems, In addition to regular issues, the journal publishes selected proceedings of the annual International Astronautical Congress (IAC), transactions of the IAA and special issues on topics of current interest, such as microgravity, space station technology, geostationary orbits, and space economics. Other subject areas include satellite technology, space transportation and communications, space energy, power and propulsion, astrodynamics, extraterrestrial intelligence and Earth observations.
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