Multisatellite Scheduling for Stereo Tracking of Moving Targets via Parallel Island Differential Evolutionary Algorithm

The tracking of moving targets using satellite constellations presents significant challenges due to the need for time-sensitive and effective scheduling solutions. While static target observation has been extensively studied, stereo tracking of moving targets remains a critical research gap, particularly when considering the complexities introduced by real-time movement and operational constraints. To address these challenges, this article proposes a pioneering approach that integrates stereo tracking with a parallel island differential evolutionary algorithm (PIDEA) for multisatellite mission scheduling. The PIDEA harnesses the computational power of graphics processing units and employs island evolution strategies to balance computational efficiency with solution diversity, ensuring timely and effective scheduling in dynamic scenarios. In addition, a reinforcement learning-based attitude control system is introduced to enable agile satellites to maintain accurate and stable tracking of moving targets, even under challenging conditions. To further enhance operational adaptability, we incorporate event-driven mechanisms to dynamically trigger rescheduling when significant changes occur, such as satellite availability or energy constraints. Extensive experiments conducted in multiple moving target tracking scenarios demonstrate the effectiveness and efficacy of the proposed method. The results validate its ability to generate near-optimal scheduling solutions that meet the dual demands of time sensitivity and tracking effectiveness, marking a significant step forward in autonomous satellite mission planning for dynamic environments. © 1965-2011 IEEE.

Авторы
Lu Wenlong 1 , Liu Bingyan 2, 3 , Mu Zhongcheng 1 , Wu Shufan 1, 4 , Song Yanjie 5 , Razoumny Vladimir Yu 4
Издательство
Institute of Electrical and Electronics Engineers Inc.
Номер выпуска
6
Язык
English
Страницы
19194-19214
Статус
Published
Том
61
Год
2025
Организации
  • 1 Shanghai Jiao Tong University, Shanghai, China
  • 2 Hangzhou Institute for Advanced Study, Hangzhou, Zhejiang, China
  • 3 University of Chinese Academy of Sciences, Beijing, China
  • 4 RUDN University, Moscow, Moscow Oblast, Russian Federation
  • 5 Dalian Maritime University, Dalian, Liaoning, China
Ключевые слова
Attitude control; evolutionary algorithms; intelligent systems; reinforcement learning (RL); satellite scheduling
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