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System Optimization for Temporal Correlated Cognitive Radar with EBPSK-Based MCPC Signal

机译:基于EBPSK的MCPC信号的时间相关认知雷达系统优化

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The system optimization is considered in cognitive radar system (CRS) with extended binary phase shift keying- (EBPSK-) based multicarrier phase-coded (MCPC) signal. A novel radar working scheme is proposed to consider both target detection and estimation. At the detection stage, the generalized likelihood ratio test (GLRT) threshold is deduced, and the GLRT detection probability is given. At the estimation stage, an approach based on Kalman filtering (KF) is proposed to estimate target scattering coefficients (TSC), and the estimation performance is improved significantly by exploiting the TSC temporal correlation. Additionally, the optimal waveform is obtained to minimize the mean square error (MSE) of KF estimation. For the practical consideration, iteration algorithms are proposed to optimize the EBPSK-based MCPC signal in terms of power allocation and coding matrix. Simulation results demonstrate that the KF estimation approach can improve the estimation performance by 25% compared with maximum a posteriori MAP (MAP) method, and the KF estimation performance can be further improved by 90% by optimizing the transmitted waveform spectrum. Moreover, by optimizing the power allocation and coding matrix of the EBPSK-based MCPC signal, the KF estimation performances are, respectively, improved by 7% and 8%.
机译:在具有扩展二进制相移键控(EBPSK)的多载波相编码(MCPC)信号的认知雷达系统(CRS)中考虑系统优化。提出了一种同时考虑目标检测和估计的新型雷达工作方案。在检测阶段,推导广义似然比检验(GLRT)阈值,并给出GLRT的检测概率。在估计阶段,提出了一种基于卡尔曼滤波(KF)的方法来估计目标散射系数(TSC),并通过利用TSC时间相关性显着提高了估计性能。另外,获得最佳波形以最小化KF估计的均方误差(MSE)。出于实际考虑,提出了迭代算法以根据功率分配和编码矩阵来优化基于EBPSK的MCPC信号。仿真结果表明,与最大后验MAP(MAP)方法相比,KF估计方法可以将估计性能提高25%,并且通过优化传输波形频谱,可以将KF估计性能进一步提高90%。此外,通过优化基于EBPSK的MCPC信号的功率分配和编码矩阵,KF估计性能分别提高了7%和8%。

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