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深海波导中基于采样简正波模态降维处理的广义似然比检测

孔德智 孙超 李明杨 卓颉 刘雄厚

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深海波导中基于采样简正波模态降维处理的广义似然比检测

孔德智, 孙超, 李明杨, 卓颉, 刘雄厚

Dimension-reduced generalized likelihood ratio detection based on sampling of normal modes in deep ocean

Kong De-Zhi, Sun Chao, Li Ming-Yang, Zhuo Jie, Liu Xiong-Hou
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  • 针对深海波导中的水下声源检测, 结合声传播与接收特性, 提出了一种基于简正波模态信息降维处理的窄带声源检测方法, 运用广义似然比(generalized likelihood ratio, GLR)方法导出了深海波导中的特征值检测器和恒虚警率特征值检测器(下统称为GLR检测器). 理论分析表明, 给定阵列输入信噪比下, GLR检测器的输出信噪比随接收数据空间维度的减小而增大. 根据简正波理论, 阵列接收信号声场位于由各阶采样简正波模态信息张成的空间(简称模态空间). 由于阵列孔径尺寸的限制, 在深海波导中常会出现“有效模态空间”维度小于阵元域接收数据空间维度的情况. 基于此性质并根据阵列采样的简正波模态信息, 提取“有效模态空间”以构造降维矩阵, 分别导出了使用垂直线列阵和水平线列阵时的降维GLR检测统计量. 数值仿真给出了GLR检测器的检测性能分析与对比, 验证了降维GLR检测器的性能改善效果, 同时表明水平线列阵接收声场位于更低维的“有效模态空间”, “有效模态空间”维度随阵元间距和声源频率的增大而减小.
    In this paper, two generalized likelihood ratio (GLR) detectors are presented for the case of multiple snapshots of test data to detect the presence of an underwater acoustic source in the deep ocean. The two GLR detectors are termed the eigenvalue detector (EVD) and the constant false alarm rate eigenvalue detector (CFAR EVD), respectively. Theoretical analysis and numerical results show that for a given input signal-to-noise ratio (SNR) of the array, the GLR detectors achieve higher output SNRs when the spatial dimension of test data decreases. To further enhance the detection performances of the GLR detectors, we propose a dimension-reduced (DR-GLR) method based on array sampling of modal information. This DR-GLR method combines the characteristics of sound propagation and array receiving. According to normal mode theory, acoustic signals emitted from the acoustic source lie in the modal space spanned by the sampled modal information of the array. Resulting from the restriction of the array size, it often occurs in deep ocean when the dimension of " effective modal subspace” is less than that of the test data which is equivalent to the number of hydrophones. Based on this phenomenon, we reconstruct the modal information by merely retaining the " effective modal subspace” to formulate the dimension reduction matrix. The DR-GLR test statistics is deduced by employing the dimension reduction matrix when using the vertical linear array (VLA) and the horizontal linear array (HLA), respectively. The DR-GLR detectors when using an HLA require more computational amount than when using a VLA. Simulation experiments are conducted to analyze the detection performances of the two GLR detectors, and verify the performance improvement effects of DR-GLR detectors. The numerical results show that the CFAR EVD presents good robustness to the uncertainty of the noise power and the DR-GLR detectors outperform the GLR detectors in detection performance. It also turns out the acoustic signals received by the HLA lie in a lower-dimensional " effective modal subspace” than by the VLA, and thus when using an HLA the DR-GLR detectors present higher detection probabilities than using a VLA. Moreover, the smaller the dimension of the " effective modal subspace”, the better the performance improvement of the DR-GLR detectors will be. The dimension of the " effective modal subspace” increases with hydrophone spacing and/or the source frequency increasing.
      通信作者: 孙超, csun@nwpu.edu.cn
    • 基金项目: 国家自然科学基金重点项目(批准号: 11534009)、国家自然科学基金(批准号: 51479169)和中科院声场声信息国家重点实验室开放课题研究基金(批准号: SKLA201702)资助的课题.
      Corresponding author: Sun Chao, csun@nwpu.edu.cn
    • Funds: Project supported by the Key Program of the National Natural Science Foundation of China (Grant No. 11534009), the National Natural Science Foundation of China (Grant No. 51479169), and the Opening Project of State Key Laboratory of Acoustics (Grant No. SKLA201702).
    [1]

    段睿 2016 博士学位论文 (西安: 西北工业大学)

    Duan R 2016 Ph. D. Dissertation (Xian: Northwestern Polytechnical University) (in Chinese)

    [2]

    李启虎, 李敏, 杨秀庭 2008 声学学报 33 193

    Li Q H, Li M, Yang X T 2008 Acta Acustica 33 193

    [3]

    Gorodetskaya E Y, Malekhanov A I, Sazontov A G 2008 IEEE J. Oceanic Eng. 24 1109

    [4]

    Sha L, Nolte L W 2006 IEEE J. Oceanic Eng. 31 5263

    [5]

    Sha L, Nolte L W 2005 J. Acoust. Soc. Am. 117 5653

    [6]

    刘宗伟, 孙超, 易锋, 郭国强, 向龙凤 2014 声学学报 39 309

    Liu Z W, Sun C, Yi F, Guo G Q, Xiang L F 2014 Acta Acustica 39 309

    [7]

    刘宗伟, 孙超, 吕连港 2015 声学学报 05 5949

    Liu Z W, Sun C, Lv L G 2015 Acta Acustica 05 5949

    [8]

    Hari V N, Anand G V 2013 Digital Signal Processing 23 1645Google Scholar

    [9]

    李明杨, 孙超, 邵炫 2014 63 204302Google Scholar

    Li M Y, Sun C, Shao X 2014 Acta Phys. Sin. 63 204302Google Scholar

    [10]

    Li M Y, Sun C, Willett P 2017 IEEE J. Oceanic Eng. 43 131

    [11]

    Scharf L L, Friedlander B 1994 IEEE trans. Signal Process. 42 2146Google Scholar

    [12]

    Collison N E, Dosso S E 2000 J. Acoust. Soc. Am. 107 3089Google Scholar

    [13]

    刘宗伟, 孙超, 向龙凤, 易锋 2014 63 034304

    Liu Z W, Sun C, Xiang L F, Yi F 2014 Acta Phys. Sin. 63 034304

    [14]

    斯蒂芬 Kay 著 (罗鹏飞, 张文明 译) 2011 统计信号处理基础 (北京: 电子工业出版社) 第573—574页

    Kay S M (translated by Luo P F, Zhang W M) 2011 Fundamentals of Statistical Signal Processing (Beijing: Pushlishing House of Electronics Industry) pp573−574

    [15]

    Wang P, Fang J, Han N, Li H B 2010 IEEE Trans. Veh. Technol. 59 1791Google Scholar

    [16]

    Hack D E, Rossler C W, Patton L K 2014 IEEE Signal Process. Lett. 21 1002

    [17]

    Jin Y, Friedlander B 2004 IEEE Trans. Signal Process. 53 13

    [18]

    Kong D Z, Sun C, Liu X H, Xie L, Jiang G Y 2017 Oceans 2017 Aberdeen, UK, June 19−22, 2017 p1

    [19]

    Kong D Z, Sun C, Liu X H, Li M Y, Xie L 2018 Oceans 2018 Kobe, Japan, May 28−31, 2018 p1

    [20]

    Morgan D R, Smith T M 1990 J. Acoust. Soc. Am. 87 737Google Scholar

    [21]

    Tandra R, Sahai A 2008 IEEE J. Sel. Top. Signal Process. 2 4Google Scholar

    [22]

    Haddadi F, Malek M M, Nayebi M M, Aref M R 2009 IEEE Trans. Signal Process. 58 452

  • 图 1  EVD的输出信噪比随接收数据快拍数和空间维度的变化曲线, ${\rm snr} = 1$ (a) 固定空间维度$N = 20$; (b) 固定快拍数$L = 100$

    Fig. 1.  The output SNR of EVD varying with various snapshot number and spatial dimension, ${\rm snr} = 1$: (a) spatial dimension $N = 20$; (b) snapshot number $L = 100$.

    图 2  使用VLA时DR-GLR检测器的算法流程图

    Fig. 2.  The flow diagrams of the DR-GLR detectors when using a VLA

    图 3  水平阵声源信号入射方位

    Fig. 3.  The arrival angle of acoustic signal on the HLA.

    图 4  使用HLA时DR-GLR检测器的算法流程图

    Fig. 4.  The flow diagrams of the DR-GLR detectors when using a HLA.

    图 5  深海波导及相关环境参数

    Fig. 5.  Deep-sea waveguide and environmental parameters

    图 6  深海声速剖面

    Fig. 6.  Deep-sea sound speed profile.

    图 7  不同信噪比下检测概率曲线比较, $P_{\rm FA}$ = 0.01 (a) $L = 20$; (b) $L = 40$

    Fig. 7.  Probability of detection curves with various SNRs, $P_{\rm FA}$ = 0.01: (a) $L = 20$; (b) $L = 40$.

    图 8  噪声功率不确定, 不同信噪比下检测概率曲线比较 (a)$L = 20$; (b)$L = 40$

    Fig. 8.  Probability of detection curves with various SNRs when noise power is uncertain: (a) $L = 20$; (b) $L = 40$.

    图 9  不同数据维度下的检测概率曲线对比, 快拍数$L = 40$ (a) EVD; (b) CEVD

    Fig. 9.  Probability of detection curves with various spatial dimension: (a) EVD; (b) CEVD.

    图 10  阵列采样模态信息及相应模态矩阵的奇异值 (a) VLA采样的各阶模态; (b) VLA; 归一化的各阶奇异值分布; (c) HLA采样的各阶模态; (d) HLA, 归一化的各阶奇异值分布

    Fig. 10.  Modal information sampled on the array and singular values of corresponding mode matrices: (a) Various modes sampled on the VLA; (b) normalized singular values associated with the VLA; (c) various modes sampled on the HLA; (d) normalized singular values associated with the HLA.

    图 11  不同信噪比下的检测概率曲线对比, 快拍数$L = 20$ (a) VLA; (b) HLA

    Fig. 11.  Probability of detection curves of different detectors, snapshot number $L = 20$: (a) VLA; (b) HLA.

    图 12  噪声功率不确定, 不同信噪比下检测概率曲线对比, 快拍数$L = 40$ (a) VLA; (b) HLA

    Fig. 12.  Probability of detection curves of different detectors when noise power is uncertain, snapshot number $L = 40$: (a) VLA; (b) HLA.

    图 13  声源激发的各阶简正波模态函数和水平波数 (a)各阶模态函数幅值随波导深度的变化; (b)各阶水平波数分布

    Fig. 13.  Modal functions and horizontal wavenumber of various normal modes excited by the acoustic source: (a) Modal functions along with various depths; (b) distribution of various horizontal wavenumbers.

    图 14  阵列配置对降维程度的影响, $N = 40$ (a) 阵列深度100 m; (b) 阵元间距4 m

    Fig. 14.  The influence of array configuration on the degree of dimension reduction, $N = 40$: (a) Array depth of 100 m; (b) hydrophone spacing of 4 m.

    图 15  降维系数随声源频率的变化曲线

    Fig. 15.  The dimension reduction coefficient varying with increasing frequency.

    Baidu
  • [1]

    段睿 2016 博士学位论文 (西安: 西北工业大学)

    Duan R 2016 Ph. D. Dissertation (Xian: Northwestern Polytechnical University) (in Chinese)

    [2]

    李启虎, 李敏, 杨秀庭 2008 声学学报 33 193

    Li Q H, Li M, Yang X T 2008 Acta Acustica 33 193

    [3]

    Gorodetskaya E Y, Malekhanov A I, Sazontov A G 2008 IEEE J. Oceanic Eng. 24 1109

    [4]

    Sha L, Nolte L W 2006 IEEE J. Oceanic Eng. 31 5263

    [5]

    Sha L, Nolte L W 2005 J. Acoust. Soc. Am. 117 5653

    [6]

    刘宗伟, 孙超, 易锋, 郭国强, 向龙凤 2014 声学学报 39 309

    Liu Z W, Sun C, Yi F, Guo G Q, Xiang L F 2014 Acta Acustica 39 309

    [7]

    刘宗伟, 孙超, 吕连港 2015 声学学报 05 5949

    Liu Z W, Sun C, Lv L G 2015 Acta Acustica 05 5949

    [8]

    Hari V N, Anand G V 2013 Digital Signal Processing 23 1645Google Scholar

    [9]

    李明杨, 孙超, 邵炫 2014 63 204302Google Scholar

    Li M Y, Sun C, Shao X 2014 Acta Phys. Sin. 63 204302Google Scholar

    [10]

    Li M Y, Sun C, Willett P 2017 IEEE J. Oceanic Eng. 43 131

    [11]

    Scharf L L, Friedlander B 1994 IEEE trans. Signal Process. 42 2146Google Scholar

    [12]

    Collison N E, Dosso S E 2000 J. Acoust. Soc. Am. 107 3089Google Scholar

    [13]

    刘宗伟, 孙超, 向龙凤, 易锋 2014 63 034304

    Liu Z W, Sun C, Xiang L F, Yi F 2014 Acta Phys. Sin. 63 034304

    [14]

    斯蒂芬 Kay 著 (罗鹏飞, 张文明 译) 2011 统计信号处理基础 (北京: 电子工业出版社) 第573—574页

    Kay S M (translated by Luo P F, Zhang W M) 2011 Fundamentals of Statistical Signal Processing (Beijing: Pushlishing House of Electronics Industry) pp573−574

    [15]

    Wang P, Fang J, Han N, Li H B 2010 IEEE Trans. Veh. Technol. 59 1791Google Scholar

    [16]

    Hack D E, Rossler C W, Patton L K 2014 IEEE Signal Process. Lett. 21 1002

    [17]

    Jin Y, Friedlander B 2004 IEEE Trans. Signal Process. 53 13

    [18]

    Kong D Z, Sun C, Liu X H, Xie L, Jiang G Y 2017 Oceans 2017 Aberdeen, UK, June 19−22, 2017 p1

    [19]

    Kong D Z, Sun C, Liu X H, Li M Y, Xie L 2018 Oceans 2018 Kobe, Japan, May 28−31, 2018 p1

    [20]

    Morgan D R, Smith T M 1990 J. Acoust. Soc. Am. 87 737Google Scholar

    [21]

    Tandra R, Sahai A 2008 IEEE J. Sel. Top. Signal Process. 2 4Google Scholar

    [22]

    Haddadi F, Malek M M, Nayebi M M, Aref M R 2009 IEEE Trans. Signal Process. 58 452

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出版历程
  • 收稿日期:  2019-01-13
  • 修回日期:  2019-05-30
  • 上网日期:  2019-09-01
  • 刊出日期:  2019-09-05

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