Wang Xinyu, Zhao Jin, Wu Xianliang
Key Lab of Intelligent Computing & Signal Processing, Ministry of Education, Anhui University, Hefei 230601, China.
Sensors (Basel). 2024 Jan 11;24(2):462. doi: 10.3390/s24020462.
This paper aims to explore the difficulty of obtaining source signals from complex mixed signals and the issue that the FastICA algorithm cannot directly decompose the received single-channel mixed signals and distort the signal separation in low signal-to-noise environments. Thus, in this work, a comprehensive single-channel mixed signal separation algorithm was proposed based on the combination of Symplectic Geometry Mode Decomposition (SGMD) and the FastICA algorithm. First, SGMD-FastICA uses SGMD to decompose single-channel mixed signals, and then it uses the Pearson correlation coefficient to select the Symplectic Geometry Components that exhibit higher correlation coefficients with the mixed signals. Then, these components are expanded with the single-channel mixed signals into virtual multi-channel signals and input into the FastICA algorithm. The simulation results show that the SGMD algorithm could eliminate noise interference while keeping the raw time series unchanged, which is achievable through symplectic geometry similarity transformation during the decomposition of mixed signals. Comparative experiment results also show that compared with the EMD-FastICA and VMD-FastICA, the SGMD-FastICA algorithm has the best separation effect for single-channel mixed signals. The SGMD-FastICA algorithm represents an improved solution that addresses the limitations of the FastICA algorithm, enabling the direct separation of single-channel mixed signals, while also addressing the challenge of proper signal separation in noisy environments.
本文旨在探讨从复杂混合信号中获取源信号的困难,以及快速独立成分分析(FastICA)算法无法直接分解接收到的单通道混合信号并在低信噪比环境中使信号分离失真的问题。因此,在这项工作中,基于辛几何模式分解(SGMD)和FastICA算法的组合,提出了一种综合的单通道混合信号分离算法。首先,SGMD-FastICA使用SGMD分解单通道混合信号,然后使用皮尔逊相关系数选择与混合信号具有较高相关系数的辛几何分量。然后,将这些分量与单通道混合信号扩展为虚拟多通道信号,并输入到FastICA算法中。仿真结果表明,SGMD算法在保持原始时间序列不变的同时可以消除噪声干扰,这是通过混合信号分解过程中的辛几何相似变换实现的。对比实验结果还表明,与EMD-FastICA和VMD-FastICA相比,SGMD-FastICA算法对单通道混合信号具有最佳的分离效果。SGMD-FastICA算法是一种改进的解决方案,解决了FastICA算法的局限性,能够直接分离单通道混合信号,同时也解决了在噪声环境中正确进行信号分离的挑战。