基于进化算法和模型预测控制的多卫星测控规划动态调度优化

X. Yao, Wenhua Li, Xiaogang Pan, Yaoyu Li, Y. Jiao
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引用次数: 0

摘要

多卫星测控规划问题是一个复杂的不确定优化问题,涉及卫星任务的合理化和有限的资源分配到卫星测控任务上,提出了一种动态调度优化方法。该方法将进化算法与模型预测控制框架相结合,能够有效处理问题的复杂性和不确定性,实现多颗卫星对多目标的最优观测与通信。本文开发了一种利用专家知识和冲突约简规则生成高质量解集的信息导向进化算法,采用基于实际数据和反馈机制进行在线调整和更新的模型预测控制框架,并设计了一系列实验场景,比较不同方法在不同情况下的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dynamic Scheduling Optimization for Multi-Satellite Mission Measurement and Control Planning Using Evolutionary Algorithms and Model Predictive Control
This paper presents a dynamic scheduling optimization method for the multi-satellite mission measurement and control planning problem, which is a complex and uncertain optimization problem that involves rationalizing the missions of satellites and allocating limited resources to the measurement and control missions of satellites. The proposed method combines an evolutionary algorithm and a model predictive control framework, which can effectively deal with the complexity and uncertainty of the problem and achieve optimal observation and communication of multiple targets by multiple satellites. The paper develops an information-guided evolutionary algorithm that uses expert knowledge and conflict reduction rules to generate high-quality solution sets, applies a model predictive control framework that performs online adjustment and update based on actual data and feedback mechanism and designs a series of experimental scenarios to compare the performance of different methods in different situations.
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