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一种基于Bi-GRU的卫星对地观测 任务可调度性预测方法
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A Prediction Method for Schedulability of Satellite Earth Observation Task Based on Bi-GRU
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    针对现有卫星观测任务可调度性预测模型难以建模长时间间隔的观测任务依赖关系的问题,提出一种基于双向门控循环单元(Bidirectional Gated Recurrent Unit,Bi-GRU)的卫星对地观测任务可调度性预测模型. 该模型以卫星历史规划方案作为学习样本,能够以较低计算代价较高准确率地预测出对地观测任务集合中可以被响应的子集. 该模型首先通过多层全连接感知机神经网络提取任务属性间的关联关系,然后采用多组多层双向门控循环单元组成的循环神经网络提取观测任务与其前驱及后继观测任务序列的潜在时序特征,最后融合各组双向门控循环单元的预测结果,从而利用观测任务之间的正向与反向信息依赖关系提升任务可调度性预测准确度. 实验结果表明,与现有主流预测模型相比,本文提出方法在准确率、精确率、召回率和F1分数等指标上分别提升了2.27%、2.36%、3.45%和2.37%.

    Abstract:

    Considering that the existing prediction models of satellite observation task schedulability are difficult to model the potential dependencies between observation tasks with long time interval, a novel predictive model for satellite earth observation task schedulability based on Bidirectional Gated Recursive Unit (Bi-GRU) network is proposed. The model can learn from the historical satellite observation task scheduling results and forecast the observation task scheduling result accurately without a time-consuming scheduling computation. Firstly,the model adopts a multi-layer fully connected forward neural network to extract the relationship between the features of observation tasks. Then,a multi-group and multi-layer Bi-GRU network is designed to formulate the temporal features between the current task and its precursors and successors in task sequence bi-directionally. Lastly,the outputs of Bi-GRU groups are fused in order to enhance the accuracy of the prediction result. The experimental results show that,compared with the state-of-the-art approaches,the accuracy, precision, recall and F1 score of the proposed method are improved by 2.27%, 2.36%, 3.45% and 2.37%, respectively.

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陈浩,罗棕,杜春,彭双,李军.一种基于Bi-GRU的卫星对地观测 任务可调度性预测方法[J].湖南大学学报:自然科学版,2021,48(6):88~95

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  • 在线发布日期: 2021-06-25
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