Xing Tianyu, Wang Xiaohao, Ni Kai, Zhou Qian
Division of Advanced Manufacturing, Shenzhen International Graduate School, Tsinghua University, Shenzhen 518055, China.
Sensors (Basel). 2024 Feb 19;24(4):1340. doi: 10.3390/s24041340.
Underwater acoustic technology as an important means of exploring the oceans is receiving more attention. Denoising for underwater acoustic information in complex marine environments has become a hot research topic. In order to realize the hydrophone signal denoising, this paper proposes a joint denoising method based on improved symplectic geometry modal decomposition (ISGMD) and wavelet threshold (WT). Firstly, the energy contribution (EC) is introduced into the SGMD as an iterative termination condition, which efficiently improves the denoising capability of SGMD and generates a reasonable number of symplectic geometry components (SGCs). Then spectral clustering (SC) is used to accurately aggregate SGCs into information clusters mixed-clusters, and noise clusters. Spectrum entropy (SE) is used to distinguish clusters quickly. Finally, the mixed clusters achieve the signal denoising by wavelet threshold. The useful information is reconstructed to achieve the original signal denoising. In the simulation experiment, the denoising effect of different denoising algorithms in the time domain and frequency domain is compared, and SNR and RMSE are used as evaluation indexes. The results show that the proposed algorithm has better performance. In the experiment of hydrophone, the denoising ability of the proposed algorithm is also verified.
水下声学技术作为探索海洋的重要手段正受到越来越多的关注。复杂海洋环境下的水下声学信息去噪已成为一个热门研究课题。为了实现水听器信号去噪,本文提出了一种基于改进辛几何模态分解(ISGMD)和小波阈值(WT)的联合去噪方法。首先,将能量贡献(EC)引入到SGMD中作为迭代终止条件,有效提高了SGMD的去噪能力,并生成合理数量的辛几何分量(SGCs)。然后利用谱聚类(SC)将SGCs准确地聚为信息簇、混合簇和噪声簇。用谱熵(SE)快速区分簇。最后,混合簇通过小波阈值实现信号去噪。对有用信息进行重构以实现原始信号去噪。在仿真实验中,比较了不同去噪算法在时域和频域的去噪效果,并用信噪比(SNR)和均方根误差(RMSE)作为评价指标。结果表明,所提算法具有更好的性能。在水听器实验中,也验证了所提算法的去噪能力。