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Multi-Objective Optimization for Multi-Satellite Scheduling System

机译:多卫星调度系统的多目标优化

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As satellite imagery plays more and more important roles in disaster relief and land monitoring, instantaneousness of obtaining more satellite images within the allotted time turns into a huge demand in Taiwan. Accordingly, the schedule-to-launch FORMOSAT-5 remote sensing satellite is planning to joint with currently on-duty FORMOSAT-2 satellite for the mission of daily imaging planning. As the owner and system operator, Taiwan's NSPO is responsible for developing multi-satellite scheduling system to meet with multiple objective requirements for image quality and delivery time. In this paper, a method of multi-objective genetic algorithm is developed to facilitate the multi-satellite imaging scheduling. We consider the mission planning for a scenario where a number of available satellites are scheduled to image hundreds of ground targets under the condition of specific payload constraints. Based on earth-satellite geometry analysis, this complicated NP-hard problem is carefully divided into some limited number of single orbit scheduling problems to simplify the satellite coordination. Multi-objective genetic algorithm is introduced to determine the suitable imaging time for each of its designated targets. It treats various imaging time epoch for each target as an individual. An optimal Pareto front is obtained by employing the specific crossover and mutation rule among the individuals. This Pareto front will provide useful and flexible decision making information to assist a mission planner to perform daily multi-remote sensing satellites mission plan. Simulation results show that the proposed algorithm improves the quality of solution and also provides good convergence speed for obtaining near-optimal solution. Performance analysis for different imaging scenarios is also discussed.
机译:随着卫星影像在救灾和土地监测中的作用越来越重要,在指定的时间内即时获取更多卫星影像的需求在台湾引起巨大需求。因此,按计划发射的FORMOSAT-5遥感卫星正计划与目前在役的FORMOSAT-2卫星进行联合,以进行每日成像计划。作为拥有者和系统运营商,台湾的NSPO负责开发多卫星调度系统,以满足对图像质量和交付时间的多个客观要求。本文提出了一种多目标遗传算法来促进多卫星成像调度。我们考虑了在特定的有效载荷约束条件下计划大量可用卫星对数百个地面目标成像的情况下的任务计划。基于卫星地球几何分析,将这个复杂的NP难题仔细地分成了数量有限的单轨道调度问题,以简化卫星协调。引入了多目标遗传算法,以确定每个指定目标的合适成像时间。它将每个目标的各种成像时间周期视为一个个体。通过在个体之间采用特定的交叉和突变规则,可以获得最佳的帕累托前沿。该帕累托战线将提供有用且灵活的决策信息,以协助任务计划者执行日常的多遥测卫星任务计划。仿真结果表明,该算法提高了解的质量,并且为获得近似最优解提供了良好的收敛速度。还讨论了不同成像场景的性能分析。

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