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Optimal Satellite Formation Reconfiguration Based on Closed-Loop Brain Storm Optimization

机译:基于闭环头脑风暴优化的卫星编队优化配置

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摘要

Abstract-In recent years, satellite formation flying has become an increasingly hot topic for both the astronomy and earth science communities due to its potential merits compared with a single monolithic spacecraft system. This paper proposes a novel approach based on closed-loop brain storm optimization (CLBSO) algorithms to address the optimal formation reconfiguration of multiple satellites using twoimpulse control. The optimal satellite formation reconfiguration is formulated as an optimization problem with the constraints of overall fuel cost minimization, final configuration, and collision avoidance. Three versions of CLBSOs are developed by replacing the creating operator in basic brain storm optimization (BSO) with closed-loop strategies, which facilitate search characteristic capture and enhance the optimization performance by taking advantage of feedback information in the search process. Numerical simulations are carried out using particle swarm optimization (PSO), basic BSO, and the three versions of CLBSOs. Comparison results show that all versions of CLBSOs outperform PSO and the original BSO in terms of final results and convergence speed. In addition, CLBSO reduces the computation burden and shortens CPU time to a certain extent in contrast with basic BSO. Furthermore, among the three CLBSO algorithms, the one using the strategy of difference with the best gains the best overall performance, which is inspired by the updating rule in PSO that each particle tends to move towards the individual with the best fitness.
机译:摘要-近年来,与单个整体式航天器系统相比,卫星编队飞行由于其潜在的优势而成为天文学和地球科学界的一个越来越热门的话题。本文提出了一种基于闭环脑风暴优化(CLBSO)算法的新颖方法,以解决使用双脉冲控制的多颗卫星的最优编队重配置问题。最佳卫星编队重新配置被公式化为一个优化问题,并具有总体燃料成本最小化,最终配置和避免碰撞的约束。通过用闭环策略代替基本脑力激荡优化(BSO)中的创建运算符,开发了三种版本的CLBSO,它们有助于搜索特征捕获并通过在搜索过程中利用反馈信息来增强优化性能。使用粒子群优化(PSO),基本BSO和CLBSO的三个版本进行了数值模拟。比较结果表明,就最终结果和收敛速度而言,所有版本的CLBSO均优于PSO和原始BSO。另外,与基本的BSO相比,CLBSO减轻了计算负担,并在一定程度上缩短了CPU时间。此外,在这三种CLBSO算法中,使用差异最佳策略的算法获得了最佳的整体性能,这受PSO中的更新规则启发,即每个粒子都倾向于以最佳适应性向个体移动。

著录项

  • 来源
    《IEEE computational intelligence magazine》 |2013年第4期|39-51|共13页
  • 作者

    Sun C.; Duan H.; Shi Y.;

  • 作者单位

    Science and Technology on Aircraft Control Lab, Beihang University(BUAA), Beijing, 100191, P. R. China|c|;

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  • 正文语种 eng
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  • 入库时间 2022-08-18 01:21:59

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