新型复合多稳态随机共振弱信号探测

Shangbin Jiao, Qiongjie Xue, Na Li, Rui Gao, Gang Lv, Yi Wang, Yvjun Li
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摘要

随机共振(SR)用于从噪声背景中提取微弱信号,其研究具有重要的理论意义和广阔的应用前景。针对经典三稳态随机共振模型的不足,本文结合伍兹-撒克逊(WS)模型和三稳态模型,提出了一种新型复合多稳态随机共振(NCMSR)模型。研究了不同 α 稳定噪声下 NCMSR 系统参数对输出响应性能的影响。同时,采用基于所提模型的自适应同步优化算法,实现了在α稳定噪声环境下的周期和非周期性信号识别。结果表明,所提出的系统模型在检测性能方面优于三稳态系统。最后,将 NCMSR 模型应用于二维图像处理,取得了很好的降噪和图像复原效果。
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Novel compound multistable stochastic resonance weak signal detection
The research on stochastic resonance (SR) which is used to extract weak signals from noisy backgrounds is of great theoretical significance and promising application. To address the shortcomings of the classical tristable SR model, this article proposes a novel compound multistable stochastic resonance (NCMSR) model by combining the Woods–Saxon (WS) and tristable models. The influence of the parameters of the NCMSR systems on the output response performance is studied under different α stable noises. Meanwhile, the adaptive synchronization optimization algorithm based on the proposed model is employed to achieve periodic and non-periodic signal identifications in α stable noise environments. The results show that the proposed system model outperforms the tristable system in terms of detection performance. Finally, the NCMSR model is applied to 2D image processing, which achieves great noise reduction and image recovery effects.
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