时间轴俱乐部:求解时间依赖旅行商问题模型中多个碎片清除任务的优化算法

IF 2.7 1区 物理与天体物理 Q2 ASTRONOMY & ASTROPHYSICS
Nan Zhang, Zhong Zhang, Hexi Baoyin
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引用次数: 9

摘要

随着空间碎片的增加,空间碎片的清除逐渐成为世界空间机构需要解决的一个重大问题。多个碎片清除任务,即在一次任务中清除多个碎片物体,是净化空间环境的一种经济方法。这样的任务可以被认为是典型的时间相关旅行推销员问题(TDTSP)。在本研究中,提出了一种称为时间线俱乐部优化(TCO)的智能全局优化算法来解决TDTSP模型的多个碎片清除任务。TCO采用了传统的蚁群优化(ACO)框架,并用一种称为Timeline Club的新结构取代了ACO的信息素矩阵。Timeline Club记录在某个时刻从精英解中下一个要移除的碎片对象,并决定在新解中生成碎片序列的概率标准。本研究考虑了两种假设情景,铱-33任务和GTOC9任务。仿真结果表明,在TDTSP模型的多个碎片清除任务中,TCO比波束搜索、蚁群优化和遗传算法具有更好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Timeline Club: An optimization algorithm for solving multiple debris removal missions of the time-dependent traveling salesman problem model

With the increase of space debris, space debris removal has gradually become a major issue to address by worldwide space agencies. Multiple debris removal missions, in which multiple debris objects are removed in a single mission, are an economical approach to purify the space environment. Such missions can be considered typical time-dependent traveling salesman problems (TDTSPs). In this study, an intelligent global optimization algorithm called Timeline Club Optimization (TCO) is proposed to solve multiple debris removal missions of the TDTSP model. TCO adopts the traditional ant colony optimization (ACO) framework and replaces the pheromone matrix of the ACO with a new structure called the Timeline Club. The Timeline Club records which debris object to be removed next at a certain moment from elitist solutions and decides the probability criterion to generate debris sequences in new solutions. Two hypothetical scenarios, the Iridium-33 mission and the GTOC9 mission, are considered in this study. Simulation results show that TCO offers better performance than those of beam search, ant colony optimization, and the genetic algorithm in multiple debris removal missions of the TDTSP model.

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来源期刊
Astrodynamics
Astrodynamics Engineering-Aerospace Engineering
CiteScore
6.90
自引率
34.40%
发文量
32
期刊介绍: Astrodynamics is a peer-reviewed international journal that is co-published by Tsinghua University Press and Springer. The high-quality peer-reviewed articles of original research, comprehensive review, mission accomplishments, and technical comments in all fields of astrodynamics will be given priorities for publication. In addition, related research in astronomy and astrophysics that takes advantages of the analytical and computational methods of astrodynamics is also welcome. Astrodynamics would like to invite all of the astrodynamics specialists to submit their research articles to this new journal. Currently, the scope of the journal includes, but is not limited to:Fundamental orbital dynamicsSpacecraft trajectory optimization and space mission designOrbit determination and prediction, autonomous orbital navigationSpacecraft attitude determination, control, and dynamicsGuidance and control of spacecraft and space robotsSpacecraft constellation design and formation flyingModelling, analysis, and optimization of innovative space systemsNovel concepts for space engineering and interdisciplinary applicationsThe effort of the Editorial Board will be ensuring the journal to publish novel researches that advance the field, and will provide authors with a productive, fair, and timely review experience. It is our sincere hope that all researchers in the field of astrodynamics will eagerly access this journal, Astrodynamics, as either authors or readers, making it an illustrious journal that will shape our future space explorations and discoveries.
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