Acoustic Science and Technology Laboratory, Harbin Engineering University, Harbin 150001, China.
Key Laboratory of Marine Information Acquisition and Security (Harbin Engineering University), Ministry of Industry and Information Technology, Harbin 150001, China.
Sensors (Basel). 2018 Oct 30;18(11):3692. doi: 10.3390/s18113692.
Depth discrimination is a key procedure in acoustic detection or target classification for low-frequency underwater sources. Conventional depth-discrimination methods use a vertical line array, which has disadvantage of poor mobility due to the size of the sensor array. In this paper, we propose a depth-discrimination method for low-frequency sources using a horizontal line array (HLA) of acoustic vector sensors based on mode extraction. First, we establish linear equations related to the modal amplitudes based on modal beamforming in the vector mode space. Second, we solve the linear equations by introducing the total least square algorithm and estimate modal amplitudes. Third, we select the power percentage of the low-order modes as the decision metric and construct testing hypotheses based on the modal amplitude estimation. Compared with a scalar sensor, a vector sensor improves the depth discrimination, because the mode weights are more appropriate for doing so. The presented linear equations and the solution algorithm allow the method to maintain good performance even using a relatively short HLA. The constructed testing hypotheses are highly robust against mismatched environments. Note that the method is not appropriate for the winter typical sound speed waveguide, because the characteristics of the modes differ from those in downward-refracting sound speed waveguide. Robustness analysis and simulation results validate the effectiveness of the proposed method.
深度分辨是低频水下声源声探测或目标分类的关键步骤。传统的深度分辨方法使用垂直线阵,但由于传感器阵列的大小,其机动性较差。在本文中,我们提出了一种基于模态提取的低频声源水平线阵(HLA)深度分辨方法。首先,我们根据矢量模态空间中的模态波束形成建立与模态幅度相关的线性方程。其次,我们通过引入总体最小二乘算法来求解线性方程,并估计模态幅度。然后,我们选择低阶模态的功率百分比作为决策度量,并基于模态幅度估计构建检验假设。与标量传感器相比,矢量传感器可以提高深度分辨能力,因为模式权重更适合进行深度分辨。所提出的线性方程和求解算法使得即使使用相对较短的 HLA,该方法也能保持良好的性能。构建的检验假设对环境失配具有高度鲁棒性。需要注意的是,该方法不适用于冬季典型声速波导,因为模式的特征与下射声速波导中的特征不同。稳健性分析和仿真结果验证了所提出方法的有效性。