跟踪相位中PRF机载脉冲多普勒雷达实时PRF选择

J. Yi, Young-Jin Byun
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引用次数: 0

摘要

本文提出了一种用于中PRF机载脉冲多普勒雷达跟踪模式的最佳脉冲重复频率(PRF)集选择的新方法。利用神经网络算法从交战变量映射到最优PRF集。对神经网络进行离线训练后,可实现飞行过程中的在线计算实时性。神经网络的训练集需要通过为可能的交战场景选择最优的PRF集来生成,并从中计算距离-多普勒杂波图,以检查所有候选PRF的可解码性和可检测性。该方法生成的PRF集必须保证在目标跟踪窗口内具有最大的可检测性,并保持良好的可解码性。仿真结果表明,针对不同的交战场景和目标位置,采用不同的最优PRF集合,该方法具有较好的距离-多普勒检测性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Real-time PRF selection for medium PRF airborne pulsed-doppler radars in tracking phase
This paper proposes a new method to select optimal pulse repetition frequency (PRF) sets for use in tracking mode of medium PRF airborne pulsed-Doppler radar. Neural networks algorithm is used to map from engagement variables to the optimal PRF set. On-line computation during flight can be made real-time after off-line training of the neural network. The training sets for the neural network need to be generated by selecting optimal PRF set for the possible engagement scenarios from which range-Doppler clutter map is calculated to check the decodability and detectability for all PRF candidates. The PRF sets generated by the method must guarantee the maximum detectability inside the target tracking window as well as maintaining good decodability. Simulation result shows that the proposed method has much better range-Doppler detection performance compared to the previous algorithms by applying different optimal PRF set to different engagement scenarios and target positions.
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