基于兰伯特属性的蜂群搜索算法用于多交会轨迹优化

Hang Xu, Bin Song, Yanning Guo, Guangfu Ma, Xinglong Li, Lujiang Liu
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引用次数: 0

摘要

本文研究了多重交会轨迹优化问题,即优化单个航天器服务多个目标的交会时序。研究发现,该问题具有多种特性,例如每个维度的波谷数都是可预测的。为了提高效率,我们提出了一种新颖的基于兰伯特属性的蜂群搜索算法(LPSSA),该算法结合了这一问题的特定知识。该设计旨在提高前相期的全局搜索能力和无相期的局部搜索能力。该算法有两个不同的分支,并通过提出的复杂度指数进行切换。当指数相对较大时,初始变量分布在一些优先级低谷区域,更新机制分为三个阶段。当指数相对较小时,初始变量首先分布在所有低谷区域,然后进行选择。在迭代过程中,多个子群独立搜索,并引入吞并机制。两个分支都采用了改进的边界条件处理方法。此外,改进后的机制还可以与其他蜂群搜索算法相结合。数值模拟表明,与传统算法相比,所提出的方法具有更稳定的收敛性能和更优化的解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Lambert Property-Based Swarm Search Algorithm for the Multiple-Rendezvous Trajectory Optimization
In this paper, the multiple-rendezvous trajectory optimization problem is studied, which refers to optimizing rendezvous epochs for a single spacecraft to service multiple targets. It is found that the problem has multiple properties, such as a predictable trough number in each dimension. A novel Lambert property-based swarm search algorithm (LPSSA) that incorporates this problem-specific knowledge is proposed to improve efficiency. The design aims to improve the global search capability in the prophase and the local search capability in the anaphase. The algorithm has two different branches and is switched by a proposed complexity index. When the index is relatively large, the initial variables are distributed in some priority trough regions, and the update mechanism is divided into three stages. When the index is relatively small, the initial variables are first distributed to all trough regions and then selected. Multiple subpopulations search independently in the iterative process, and an annexation mechanism is introduced. An improved method for handling boundary conditions is applied in both branches. Besides, the improved mechanisms can also be combined with other swarm search algorithms. Numerical simulations show that the proposed method has a more stable convergence performance and a more optimal solution than the conventional algorithms.
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