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首页> 外文期刊>Advances in space research >Automated design architectures for co-orbiting spacecraft swarms for planetary moon mapping
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Automated design architectures for co-orbiting spacecraft swarms for planetary moon mapping

机译:用于行星月球映射的共同轨道宇宙飞船群的自动设计架构

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摘要

This work describes the design and optimization of spacecraft swarm missions to meet spatial and temporal visual mapping requirements of missions to planetary moons, using resonant co-orbits. The algorithms described here are a part of Integrated Design Engineering and Automation of Swarms (IDEAS), a spacecraft swarm mission design software that automates the design trajectories, swarm, and spacecraft behaviors in the mission. In the current work, we focus on the swarm design and optimization features of IDEAS, while showing the interaction between the different design modules. In the design segment, we consider the coverage requirements of two general planetary moon mapping missions: global surface mapping and region of interest observation. The configuration of the swarm co-orbits for the two missions is described, where the participating spacecraft have resonant encounters with the moon on their orbital apoapsis. We relate the swarm design to trajectory design through the orbit insertion maneuver performed on the interplanetary trajectory using aero-braking. We then present algorithms to model visual coverage, and collision avoidance in the swarm. To demonstrate the interaction between different design modules, we relate the trajectory and swarm to spacecraft design through fuel mass, and mission cost estimations using preliminary models. In the optimization segment, we formulate the trajectory and swarm design optimizations for the two missions as Mixed Integer Nonlinear Programming (MINLP) problems. In the current work, we use Genetic Algorithm as the primary optimization solver. However, we also use the Particle Swarm Optimizer to compare the optimizer performance. Finally, the algorithms described here are demonstrated through numerical case studies, where the two visual mapping missions are designed to explore the Martian moon Deimos.
机译:这项工作描述了航天器Swarm任务的设计和优化,以满足使用共振共轨的行星卫星的空间和时间视觉映射要求。这里描述的算法是综合设计工程和群体的自动化(思想)的一部分,这是一种宇宙飞船群特派团设计软件,可在使命中自动设计设计轨迹,群和航天器行为。在目前的工作中,我们专注于思想的群设计和优化特征,同时显示不同的设计模块之间的交互。在设计细分中,我们考虑两个普通行星月亮测绘任务的覆盖要求:全球表面映射和兴趣区域。描述了两次任务的群体共轨的配置,其中参与的航天器对其轨道Apopsis的谐振遭遇。我们将群设计与轨迹设计联系到轨道设计,通过使用空气制动在行星轨迹上执行的轨道插入机动。然后,我们将算法显示为模拟视觉覆盖范围,并在群中碰撞避免。为了展示不同设计模块之间的相互作用,我们通过燃料质量和使用初步模型将轨迹和群体与航天器设计相关联。在优化段中,我们为两个任务制定了轨迹和群设计优化,作为混合整数非线性编程(MINLP)问题。在当前的工作中,我们使用遗传算法作为主要优化求解器。但是,我们还使用粒子群优化器来比较优化器性能。最后,通过数值案例研究证明了这里描述的算法,其中两个视觉映射任务旨在探索火星月亮Deimos。

著录项

  • 来源
    《Advances in space research》 |2021年第11期|3559-3582|共24页
  • 作者单位

    Space and Terrestrial Robotic Exploration (SpaceTREx) Laboratory Asteroid Science Technology and Exploration Research Organized by Inclusive eDucation (ASTEROID) Laboratory Department of Aerospace and Mechanical Engineering The University of Arizona 1130 N Mountain Ave Tucson AZ 85721 USA;

    Space and Terrestrial Robotic Exploration (SpaceTREx) Laboratory Asteroid Science Technology and Exploration Research Organized by Inclusive eDucation (ASTEROID) Laboratory Department of Aerospace and Mechanical Engineering The University of Arizona 1130 N Mountain Ave Tucson AZ 85721 USA;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Spacecraft swarms; Automated mission design; Planetary moon exploration; Resonant co-orbits; Evolutionary optimization algorithms;

    机译:航天器群;自动化任务设计;行星月亮探索;共振共同轨道;进化优化算法;

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