Earth imaging satellites are a crucial part of our everyday lives that enable global tracking of industrial activities. Use cases span many applications, from weather forecasting to digital maps, carbon footprint tracking, and vegetation monitoring. However, there are also limitations; satellites are difficult to manufacture, expensive to maintain, and tricky to launch into orbit. Therefore, it is critical that satellites are employed efficiently. This poses a challenge known as the satellite mission planning problem, which could be computationally prohibitive to solve on large scales. However, close-to-optimal algorithms can often provide satisfactory resolutions, such as greedy reinforcement learning, and optimization algorithms. This paper introduces a set of quantum algorithms to solve the mission planning problem and demonstrate an advantage over the classical algorithms implemented thus far. The problem is formulated as maximizing the number of high-priority tasks completed on real datasets containing thousands of tasks and multiple satellites. This work demonstrates that through solution-chaining and clustering, optimization and machine learning algorithms offer the greatest potential for optimal solutions. Most notably, this paper illustrates that a hybridized quantum-enhanced reinforcement learning agent can achieve a completion percentage of 98.5% over high-priority tasks, which is a significant improvement over the baseline greedy methods with a completion rate of 63.6%. The results presented in this work pave the way to quantum-enabled solutions in the space industry and, more generally, future mission planning problems across industries.
翻译:地球成像卫星是我们日常生活的一个关键部分,使我们能够对工业活动进行全球跟踪。使用案例涉及许多应用,从天气预报到数字地图、碳足迹跟踪和植被监测等,但也存在局限性;卫星难以制造、维修费用昂贵、难以发射进入轨道。因此,必须高效使用卫星。这构成了被称为卫星任务规划问题的挑战,在计算上可能无法大规模解决的卫星任务规划问题。然而,近于最佳的算法往往能够提供令人满意的解决方案,例如贪婪的加固学习和优化算法。本文件介绍了一套量子算法,以解决飞行任务规划问题,并展示了迄今为止所实施的经典算法的优势。问题在于最大限度地增加在包含数千项任务和多颗卫星的真数据集上完成的高度优先任务的数量。这项工作表明,通过解决方案链和集群、优化和机器学习算法,最有可能找到最佳解决方案。最显著的是,本文件表明,混合的量子强化算法强化算法可以达到98.5%的完成率超过目前所执行的经典算法的典型算法。在高优先级化的行业中,普遍地改进了63%的完成率。