Liu Lihao, Dong Zhenghong, Su Haoxiang, Yu Dingzhan
Graduate School, Space Engineering University, Beijing 101416, China.
School of Space Information, Space Engineering University, Beijing 101416, China.
Sensors (Basel). 2021 Oct 7;21(19):6660. doi: 10.3390/s21196660.
While monolithic giant earth observation satellites still have obvious advantages in regularity and accuracy, distributed satellite systems are providing increased flexibility, enhanced robustness, and improved responsiveness to structural and environmental changes. Due to increased system size and more complex applications, traditional centralized methods have difficulty in integrated management and rapid response needs of distributed systems. Aiming to efficient missions scheduling in distributed earth observation satellite systems, this paper addresses the problem through a networked game model based on a game-negotiation mechanism. In this model, each satellite is viewed as a "rational" player who continuously updates its own "action" through cooperation with neighbors until a Nash Equilibria is reached. To handle static and dynamic scheduling problems while cooperating with a distributed mission scheduling algorithm, we present an adaptive particle swarm optimization algorithm and adaptive tabu-search algorithm, respectively. Experimental results show that the proposed method can flexibly handle situations of different scales in static scheduling, and the performance of the algorithm will not decrease significantly as the problem scale increases; dynamic scheduling can be well accomplished with high observation payoff while maintaining the stability of the initial plan, which demonstrates the advantages of the proposed methods.
虽然整体式巨型地球观测卫星在规律性和准确性方面仍具有明显优势,但分布式卫星系统正提供更高的灵活性、更强的鲁棒性,并能更好地应对结构和环境变化。由于系统规模增大且应用更为复杂,传统的集中式方法难以满足分布式系统的综合管理和快速响应需求。针对分布式地球观测卫星系统中的高效任务调度问题,本文通过基于博弈协商机制的网络博弈模型来解决该问题。在这个模型中,每颗卫星被视为一个“理性”参与者,它通过与邻居合作不断更新自己的“行动”,直到达到纳什均衡。为了在与分布式任务调度算法合作时处理静态和动态调度问题,我们分别提出了自适应粒子群优化算法和自适应禁忌搜索算法。实验结果表明,所提方法能够灵活处理静态调度中不同规模的情况,并且算法性能不会随着问题规模的增大而显著下降;动态调度能够在保持初始计划稳定性的同时,以较高的观测收益很好地完成,这证明了所提方法的优势。