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微弱非合作瞬态信号自适应检测算法

Adaptive Detection Algorithm for Weak Non-cooperative Transient Signal

  • 摘要: 传统检测方法对含有多个能量相差较大瞬态信号的数据和色噪声背景数据检测性能明显下降。为解决该问题,文中结合幂律检测稳健优势和变门限累计和检测边沿精确提取优势提出了一种自适应检测方法:首先,基于归一化瑞利系数的检测信噪比最大准则,以分帧方式提取帧内最佳检测序列进行幂律检测;其次,以近零率为特征值判断帧内瞬态信号存在性;最后,通过变门限累积和检测精确提取瞬态信号。仿真实验表明相比于传统幂律检测方法和变门限累积和检测方法,该方法在白噪声背景下检测性能可分别提升近2 dB和5 dB;在色噪声背景下检测性能均可提升近7 dB;瞬态信号前沿检测精度可达0.0073 s。

     

    Abstract: Traditional detection methods exhibit significant performance degradation when processing data containing transient signals with substantial energy disparities or operating in colored noise environments. To address this issue, this study proposes an adaptive detection algorithm that combines the robustness of power-law detection with the edge extraction precision of variable-threshold cumulative sum detection. The methodology involves three key steps: First, optimal detection sequences are extracted on a frame-by-frame basis through power-law detection, guided by the maximum signal-to-noise ratio criterion derived from normalized Rayleigh coefficients. Second, the near-zero rate serves as a feature indicator to determine the presence of transient signals within each frame. Finally, variable-threshold cumulative sum detection precisely extracts transient signal edges. Simulation results demonstrate that compared to conventional power-law detection and variable-threshold cumulative sum methods, the proposed approach achieves performance improvements of approximately 2 dB and 5 dB respectively in white noise environments, and nearly 7 dB in colored noise conditions, while maintaining a transient signal leading-edge detection accuracy of 0.0073 seconds.

     

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