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Cognitive radar waveform optimization based on Kalman filtering for target estimation

机译:基于Kalman滤波的目标估计认知雷达波形优化

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摘要

As the target-radar feature is time-variant in the cognitive radar (CR) system, the target information should be continuously updated by the receiver and considered to provide the prior knowledge for the optimization of the next waveform. To solve this problem, a two-step CR waveform optimization approach for target estimation is proposed. During the first echo pulse, waveform optimization for target-radar signature estimation is done by minimizing the mean square error of target power spectral density estimation. Then, to take advantage of the temporal correlation of target scattering coefficients (TSC) during the pulses interval, a Kalman filtering-based method is used to processing successive radar echoes for TSC estimation. A convex cost function is established and the optimal solution can be obtained by the existing convex programming algorithm with multiple iterations. Finally, subject to the transmitted power, peak-to-average power ratio, and detection performance constraints, the simulation results show that the proposed waveform optimization algorithm is able to improve the performance of target estimation for extended target. (C) 2018 Society of Photo-Optical Instrumentation Engineers (SPIE)
机译:由于目标雷达特征是认知雷达(CR)系统中的时变,因此应由接收器连续更新目标信息,并考虑提供用于优化下一个波形的先验知识。为了解决这个问题,提出了一种用于目标估计的两步CR波形优化方法。在第一回波脉冲期间,通过最小化目标功率谱密度估计的平均误差来完成针对目标雷达签名估计的波形优化。然后,为了利用脉冲间隔期间目标散射系数(TSC)的时间相关性,基于卡尔曼滤波的方法用于处理连续的雷达回波以进行TSC估计。建立凸起成本函数,并且可以通过具有多个迭代的现有凸编程算法获得最佳解决方案。最后,通过发射的功率,峰值平均功率比和检测性能约束,模拟结果表明,所提出的波形优化算法能够提高扩展目标的目标估计的性能。 (c)2018年光学仪表工程师协会(SPIE)

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