利用Q-Learning允许雷达选择其发射频率,以适应其环境

L. Wabeke, W. Nel
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引用次数: 3

摘要

最近的研究表明,利用环境知识可以使雷达系统适应其处理以提高其性能。此外,以自适应闭环方式利用先验和测量知识的雷达系统似乎对其环境具有认知能力,能够适应变化以优化性能。强化学习可以作为这种闭环认知雷达系统的一部分发挥至关重要的作用。假设Q-Learning算法对这种认知雷达领域有用。本文研究了利用Q-Learning对雷达实测数据进行自适应选择雷达发射频率的问题。与其他频率选择算法进行了比较,结果表明Q-Learning设法学习了一种自适应选择雷达发射频率的良好策略,大多数优于本文研究场景中测试的其他方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Utilizing Q-Learning to allow a radar to choose its transmit frequency, adapting to its environment
Recent research show that utilization of knowledge of the environment can allow a radar system to adapt its processing to improve its performance. Furthermore, a radar system that utilize both a-priori and measured knowledge in an adaptive close loop manner could seem to be cognitive of its environment, able to adapt to changes to optimize performance. Reinforced learning could play a vital role as part of such a closed-loop cognitive radar system. The Q-Learning algorithm is hypothesized to be useful for this cognitive radar domain. This paper investigates the problem of adaptively choosing the radar transmit frequency through application of Q-Learning on measured radar data. A comparison is made against other frequency selection algorithms and its shown that Q-Learning manages to learn a good strategy to adaptively select radar transmit frequency, mostly outperforming the other methods tested in the scenario investigated here.
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