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A Data-Driven Parallel Scheduling Approach for Multiple Agile Earth Observation Satellites

机译:多个敏捷地球观测卫星的数据驱动并行调度方法

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To address the large-scale and time-consuming multiple agile earth observation satellite (multi-AEOS) scheduling problems, this article proposes a data-driven parallel scheduling approach, which is composed of a probability prediction model, a task assignment strategy, and a parallel scheduling manner. In this approach, given the historical data of satellite scheduling, a prediction model is trained based on the cooperative neuro-evolution of augmenting topologies (C-NEAT) to predict the probabilities that a task will be fulfilled by different satellites. Driven by the probability prediction model, an assignment strategy is adopted for dividing the multi-AEOS scheduling problem into several single-AEOS scheduling subproblems, which can adaptively assign each task to the satellite with the highest predicted probability and greatly decrease the problem size. In a parallel manner, the single-AEOS scheduling subproblems are optimized, respectively, leading to an acceleration in the optimization efficiency of the original problem. Computational experiments indicate that the proposed approach presents better overall performance than other state-of-the-art methods within a very limited scheduling time. As the two main components of the proposed approach, the prediction model based on C-NEAT and the task assignment strategy also outperform other models with traditional training algorithms and inadaptive assignment strategies, respectively.
机译:为了解决大规模和耗时的多敏感地球观测卫星(多AEOS)调度问题,本文提出了一种数据驱动的并行调度方法,该方法由概率预测模型,任务分配策略和一个组成并行调度方式。在这种方法中,鉴于卫星调度的历史数据,基于增强拓扑(C-NEAT)的协同神经演变来培训预测模型,以预测不同卫星将满足任务的概率。由概率预测模型驱动,采用分配策略将多AEOS调度问题划分为几个单一AEOS调度子问题,其可以以最高的预测概率自适应地将每个任务分配给卫星并且大大降低问题大小。以并行方式,单个AEOS调度子问题分别优化,导致原始问题的优化效率中的加速度。计算实验表明,该方法在一个非常有限的调度时间内提出了比其他最先进的方法更好的整体性能。作为所提出的方法的两个主要组成部分,基于C-NEAT的预测模型以及任务分配策略的预测模型也分别优于传统培训算法和适当的分配策略的其他模型。

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