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首页> 外文期刊>International journal of communication systems >A parameter estimation method for time-frequencyoverlapped frequency hopping signals based on sparse linear regression and quadratic envelope optimization
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A parameter estimation method for time-frequencyoverlapped frequency hopping signals based on sparse linear regression and quadratic envelope optimization

机译:基于稀疏线性回归和二次包络优化的时频耦合跳频信号的参数估计方法

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摘要

Summary The frequency hopping (FH) signals have well‐documented merits for commercial and military fields due to near‐far resistance and robustness to jamming. Therefore, the parameter estimation of FH signals is an important task for subsequent information acquisition and autonomous electronic countermeasure or attack. However, under the complex electromagnetic environment, there always exist overlaps in the time‐frequency domain among multiple signals, which bring poor signal sparsity and make the estimation more challenging. In this paper, a novel parameter estimation approach is developed for the time‐frequency‐overlapped FH signals under single‐channel reception. The exact solution is mainly composed of the sparse linear regression‐based matrix optimization (SLR‐MO) and quadratic envelope optimization (QEO). SLR‐MO highlights the removal of noise and distortion features for improving the overall sparsity and time‐frequency resolution. QEO further eliminates parts of the interfering signal features and outliers and then extracts and optimizes the average time‐frequency ridge to complete the parameter estimation (hopping instants, period, and carriers). Simulation results demonstrate that the developed estimator outperforms the traditional methods in the scope of application, estimation accuracy, and the robustness under low signal‐to‐noise ratio (SNR).
机译:发明内容由于近距离抵抗和鲁棒性而言,跳频(FH)信号具有良好的商业和军事领域的优点。因此,FH信号的参数估计是后续信息获取和自主电子对策或攻击的重要任务。然而,在复杂的电磁环境下,多个信号之间的时频域中始终存在重叠,这带来了差的信号稀疏性并使估计更具挑战性。本文在单通道接收下为时频重叠的FH信号开发了一种新颖的参数估计方法。确切的解决方案主要由稀疏线性回归基矩阵优化(SLR-MO)和二次包络优化(QEO)组成。 SLR-MO突出显示噪声和失真特征,以改善整体稀疏性和时频分辨率。 QEO进一步消除了干扰信号特征和异常值的部分,然后提取并优化平均时频脊以完成参数估计(跳跃时刻,时段和载波)。仿真结果表明,发达的估计器在申请范围内优于传统方法,在低信噪比下(SNR)下的鲁棒性。

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