College of Biomedical Engineering & Instrument Science, Zhejiang University, Hangzhou 310058, China.
School of Earth Sciences, Zhejiang University, Hangzhou 310058, China.
Sensors (Basel). 2022 Mar 17;22(6):2327. doi: 10.3390/s22062327.
Utilizing the difference in phase and power spectrum between signals and noise, the estimation of direction of arrival (DOA) can be transferred to a spatial sample classification problem. The power ratio, namely signal-to-noise ratio (SNR), is highly required in most high-resolution beamforming methods so that high resolution and robustness are incompatible in a noisy background. Therefore, this paper proposes a Subspaces Deconvolution Vector (SDV) beamforming method to improve the robustness of a high-resolution DOA estimation. In a noisy environment, to handle the difficulty in separating signals from noise, we intend to initial beamforming value presets by incoherent eigenvalue in the frequency domain. The high resolution in the frequency domain guarantees the stability of the beamforming. By combining the robustness of conventional beamforming, the proposed method makes use of the subspace deconvolution vector to build a high-resolution beamforming process. The SDV method is aimed to obtain unitary frequency matrixes more stably and improve the accuracy of signal subspaces. The results of simulations and experiments show that when the input SNR is less than -27 dB, signals of decomposition differ unremarkably in the subspace while the SDV method can still obtain clear angles. In a marine background, this method works well in separating the noise and recruiting the characteristics of the signal into the DOA for subsequent processing.
利用信号与噪声之间的相位和功率谱差异,可以将到达方向(DOA)估计转换为空间样本分类问题。大多数高分辨率波束形成方法都需要功率比,即信噪比(SNR),因此在噪声背景下,高分辨率和稳健性是不兼容的。因此,本文提出了一种子空间去卷积向量(SDV)波束形成方法,以提高高分辨率 DOA 估计的稳健性。在噪声环境中,为了解决从噪声中分离信号的困难,我们打算在频域中通过不相干特征值预先设定初始波束形成值。频域中的高分辨率保证了波束形成的稳定性。通过结合常规波束形成的稳健性,该方法利用子空间去卷积向量构建高分辨率波束形成过程。SDV 方法旨在更稳定地获得单位频率矩阵,并提高信号子空间的准确性。仿真和实验结果表明,当输入 SNR 小于-27dB 时,分解后的信号在子空间中差异不明显,而 SDV 方法仍能获得清晰的角度。在海洋背景下,该方法能够很好地分离噪声,并将信号的特征纳入 DOA 进行后续处理。