基于旅行军人问题方法的多空间碎片主动清除卫星轨迹优化

Masahiro Kanazaki, Yusuke Yamada, Masashi Nakamiya
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引用次数: 9

摘要

空间碎片清除是当前空间发展的一个关键问题。据报道,每年应清除5块碎片,以避免进一步增加轨道上的碎片数量。为了清除多块碎片,一个想法是发射多颗卫星,每颗卫星可以从轨道上清除一个目标碎片。这种方法的好处是,目标碎片可以在没有轨道转移的情况下被移除,因此可以利用简单的卫星力学来开发卫星。然而,需要发射多颗卫星。另一个想法是使用一颗卫星来清除多块太空碎片。这种方法可以降低发射成本,有效地清除空间碎片。然而,卫星在每次清除碎片后必须改变轨道,这就需要一种优化轨道转换的技术。本研究主要针对后一种策略,开发了一种有效清除空间碎片的卫星轨迹优化方法。考虑多重空间碎片清除问题与旅行军人问题(TSP)的相似性,将进化算法(EA)的TSP解应用于前者。为了提高多重碎片清除效率,我们最大化了显示空间碎片数量的雷达总截面(RCS),并最小化了卫星的总推力。通过与卫星轨迹仿真相结合,将TSP求解方法扩展到多目标。为了评估所开发的方法,从数据库中选择了一组100块空间碎片。结果表明了总RCS和总推力之间的权衡。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Trajectory optimization of a satellite for multiple active space debris removal based on a method for the traveling serviceman problem
Space debris removal is currently a critical issue for space development. It has been reported that five pieces of debris should be removed each year to avoid further increasing the amount of debris in orbit. To remove multiple pieces of debris, one idea is to deliver multiple satellites that can each remove one target debris from orbit. The benefit of this approach is that target debris can be removed without orbit transition, so the satellite can be developed by using simple satellite mechanics. However, multiple satellites need to be launched. Another idea is to use one satellite to remove multiple pieces of space debris. This approach can reduce the launch cost and remove space debris efficiently. However, the satellite must change its orbit after each debris removal, and a technique for optimizing the orbit transition is required. In this study, we focused on the latter strategy and developed a satellite trajectory optimization method for efficient space debris removal. We considered the similarity between the problem of multiple space debris removal and the traveling serviceman problem (TSP) and applied the TSP solution of an evolutionary algorithm (EA) to the former. To improve the efficiency of the multiple debris removal, we maximized the total radar cross-section (RCS), which indicates the amount of space debris, and minimized the total thrust of the satellite. We extended the TSP solution method to multiple objectives by coupling it with a satellite trajectory simulation. To evaluate the developed method, a set of 100 pieces of space debris was selected from a database. The results indicated a tradeoff between the total RCS and total thrust.
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