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An Algorithm of Reinforcement Learning for Maneuvering Parameter Self-Tuning Applying in Satellite Cluster

机译:一种加强学习算法,用于在卫星簇中施用的过程自我调整

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摘要

Satellite cluster is a type of artificial cluster, which is attracting wide attention at present. Although the traditional empirical parameter method (TEPM) has the potential to deal with the mission of satellite flocking, it is difficult to select the proper parameters. In order to improve the flight effect in the problem of satellite cluster, as well as to make the selection of flight parameters more reasonable, the traditional sensing zones are improved. A 3σ position error ellipsoid and an induction ellipsoid are applied for substituting the traditional repulsing zone and attracting zone, respectively. Besides, we propose an algorithm of reinforcement learning for parameter self-tuning (RLPST), which is based on the actor-critic framework, to automatically learn the suitable flight parameters. To obtain the parameters in the repulsing zone, orientating zone, and attracting zone of each member in the cluster, a three-channel learning framework is designed. The learning process makes the framework finally find the suitable parameters. Numerical experimental results have shown the superiorities compared to the traditional method, which include trajectory deviation and sensing rate or terminal matching rate, as well as the improvement of the flight paths under the learning framework.
机译:卫星集群是一种人造集群,目前正在吸引广泛的关注。虽然传统的经验参数方法(TEPM)有可能处理卫星植绒的使命,但很难选择适当的参数。为了改善卫星集群问题的飞行效果,以及使飞行参数的选择更合理,传统的传感区域得到改善。 3σ位置误差椭圆体和感应椭圆体分别用于代替传统的排斥区和吸引区。此外,我们提出了一种加强学习算法,用于参数自我调整(RLPST),该参数自我调整(RLPST)是基于演员 - 评论家框架,自动学习合适的飞行参数。为了在群集中的每个成员中获取排斥区域,定向区域和吸引区域,设计了三通学习框架。学习过程使框架最终找到合适的参数。与传统方法相比,数值实验结果示出了优势,包括传统方法,包括轨迹偏差和传感速率或终端匹配率,以及在学习框架下的飞行路径的改进。

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