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浅海环境中基于模态衰减规律加权的子空间检测方法

孔德智 孙超 李明杨

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浅海环境中基于模态衰减规律加权的子空间检测方法

孔德智, 孙超, 李明杨

Weighted subspace detection method based on modal attenuation law in shallow water

Kong De-Zhi, Sun Chao, Li Ming-Yang
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  • 研究了使用垂直线列阵情况下, 浅海环境中的模态空间检测器(modal space detector, MSD)的检测性能. 推导了MSD的处理增益, 结果表明其处理增益随波导环境中传播模态数的增多而减小, 进而其检测性能也随之下降. 利用各阶模态深度函数之间的正交性, 将MSD分解为若干阶模态子空间检测器(modal subspace detector, MSSD). 推导了各阶MSSD的处理增益, 发现其随各阶模态衰减系数的增大而减小. 根据各阶模态的衰减规律设计加权系数, 提出一种加权模态子空间检测器(weighted modal subspace detector, WMSSD). 以处理增益作为比较参量, 通过理论和仿真实验分析了声源位置和声速剖面对WMSSD检测性能的影响. 结果表明: 1) 当声源位于负梯度声速波导的近海面区域和正梯度声速波导的近海底区域时, 由于低阶模态深度函数存在反转点, WMSSD的处理增益弱于MSD, 而当声源位于其他大部分观测区域时, WMSSD的处理增益都优于或显著优于MSD; 2) 在等声速梯度波导中, 各阶模态深度函数不存在反转点, 在所有观测区域WMSSD的处理增益都显著优于MSD.
    In this paper, the modal space detector (MSD) is investigated in shallow water environment when utilizing a vertical linear array. The processing gain of the MSD is derived, and the result demonstrates that the processing gain of the MSD degrades when the number of the propagated normal modes excited by the underwater acoustic source increases, and therefore the detection performance of the MSD decreases. By exploiting the orthogonality among the modal depth functions, the MSD can be decomposed into a group of modal subspace detectors (MSSDs). The processing gains of these MSSDs are derived as well and it is found out that the processing gain of a MSSD is in direct proportion to its corresponding modal attenuation coefficients. By designing a group of weighting coefficients based on the mode attenuation law, a weighted modal subspace detector (WMSSD) is proposed to alleviate the degradation of the processing gain processing of the MSD. We analyze the influences of acoustic source locations and sound velocity profiles (SVPs) on the detection performance of the WMSSD theoretically, and verify the theoretical analyses by comparing its processing gain with the MSD in simulation experiments. The results show that the WMSSD presents various processing gains versus different acoustic source locations. In the waveguide having a negatively-gradient SVP, there exists a ‘weak detection area’ for the WMSSD, that is, the processing gain of the WMSSD is smaller than that of the MSD when the acoustic source locations are close to sea surface. The reason is because there are inversion points on the lower-order modal depth functions and the depths of the inversion points are close to sea surface. In other most areas, the processing gain of the WMSSD is larger (even remarkably larger) than that of the MSD. In the waveguide having a positively-gradient SVP, due to the phenomenon that the modal inversion points of the lower-order modal depth functions are near sea floor, there is a contrary consequence, that is, the ‘weak detection area’ is close to sea floor. And meanwhile the WMSSD outperforms the MSD in other most areas as well. There are no modal inversion points in the waveguide having a constant SVP, and therefore the WMSSD always outperforms the MSD.
      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)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)
    [1]

    Baggeroer A B, Kuperman W A, Mikhalevsky P N 1993 IEEE J. Oceanic Eng. 18 401Google Scholar

    [2]

    Sha L, Nolte L W 2005 J. Acoust. Soc. Am. 117 1942Google Scholar

    [3]

    Sha L, Nolte L W 2006 IEEE J. Oceanic Eng. 31 345Google Scholar

    [4]

    刘宗伟, 孙超, 易锋, 郭国强, 向龙凤 2014 声学学报 3 309

    Liu Z W, Sun C, Yi F, Guo G Q, Xiang L F 2014 Acta Acust. 3 309

    [5]

    刘宗伟, 孙超, 吕连港 2015 声学学报 5 665

    Liu Z W, Sun C, Lv L G 2015 Acta Acust. 5 665

    [6]

    Scharf L L, Friedlander B 1993 IEEE Trans. Signal Process. 42 2146

    [7]

    Krishna K M, Anand G V 2009 IEEE OCEANS Biloxi, USA, October 26−29, 2009 p1

    [8]

    Hari V N, Anand G V, Premkumar A B, Madhukumar A S 2011 IEEE OCEANS Santander, Spain, June 6−9, 2011 p1

    [9]

    Hari V N, Anand G V, Nagesha P V, Nagesha P V, Premkumar A B 2012 Proceedings of the 20th European Signal Processing Conference Bucharest, Romania, August 27−31, 2012 p1334

    [10]

    Hari V N, Anand G V, Premkumar A B 2013 Digit. Signal Process. 23 1645Google Scholar

    [11]

    李明杨, 孙超, 邵炫 2014 20 204302Google Scholar

    Li M Y, Sun C, Shao X 2014 Acta Phys. Sin. 20 204302Google Scholar

    [12]

    Li M, Sun C, Willett P 2017 IEEE J. Oceanic Eng. 99 1

    [13]

    Kong D Z, Sun C, Li M Y, Liu X H, Xie L 2019 IEEE Access 7 79644Google Scholar

    [14]

    孔德智, 孙超, 李明杨, 卓颉, 刘雄厚 2019 68 174301Google Scholar

    Kong D Z, Sun C, Li M Y, Zhuo J, Liu X H 2019 Acta Phys. Sin. 68 174301Google Scholar

    [15]

    Jensen F B, Kuperman W A, Porter M B, Schmidt H 2011 Computational Ocean Acoustics (New York: Springer) pp258−263

    [16]

    张仁和 1979 声学学报 2 16

    Zhang R H 1979 Acta Acust. 2 16

    [17]

    Wang Q, Zhang RH 1990 J. Acoust. Soc. Am. 87 633Google Scholar

    [18]

    汪德昭, 尚尔昌2013 水声学(第二版) (北京: 科学出版社) pp92−94

    Wang D Z, Shang E C 2013 Underwater Acoustics (Vol. 2) (Beijing: Science Press) pp92−94 (in Chinese)

    [19]

    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: Publishing House of Electronics Industry) pp573−574 (in Chinese)

    [20]

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

  • 图 1  浅海波导环境及其相关参数

    Fig. 1.  The shallow water waveguide and its environmental parameters.

    图 2  不同传播模态数下MSD的检测性能曲线 (a) 检测概率随输入信噪比的变化, ${P_{{\rm{FA}}}} = 0.1$; (b) 检测概率随虚警概率的变化, $SNR = - 15\;{\rm{ dB}}$

    Fig. 2.  Detection performance curves of the MSD under various numbers of normal modes: (a) Probabilities of detection versus SNRs, ${P_{{\rm{FA}}}} = 0.1$; (b) probabilities of detection versus probabilities of false alarm, $SNR = - 15\;{\rm{dB}}$.

    图 3  MSD的处理增益随模态数的变化曲线

    Fig. 3.  The processing gains of the MSD versus the numbers of normal modes.

    图 4  各阶MSSD处理增益随阶数的变化

    Fig. 4.  The processing gains of MSSD versus the orders of normal modes.

    图 5  MSD, WMSSD, OWMSSD的检测性能曲线, f = 100 Hz (a) 检测概率随输入信噪比的变化, ${P_{{\rm{FA}}}} = 0.1$; (b) 检测概率随虚警概率的变化, $SNR = - 15\;{\rm{dB}}$

    Fig. 5.  Detection performance curves of the MSD, WMSSD and OWMSSD with f = 100 Hz: (a) Probabilities of detection versus SNR, ${P_{{\rm{FA}}}} = 0.1$; (b) probabilities of detection versus probabilities of false alarm, $SNR = - 15\;{\rm{dB}}$.

    图 6  MSD, WMSSD, OWMSSD的检测性能曲线, f = 300 Hz (a) 检测概率随输入信噪比的变化, ${P_{{\rm{FA}}}} = 0.1$; (b) 检测概率随虚警概率的变化, $SNR = - 15\;{\rm{dB}}$

    Fig. 6.  Detection performance curves of the MSD, WMSSD and OWMSSD with f = 300 Hz: (a) Probabilities of detection versus SNR, ${P_{{\rm{FA}}}} = 0.1$; (b) probabilities of detection versus probabilities of false alarm, $SNR = - 15\;{\rm{dB}}$.

    图 7  MSD, WMSSD, OWMSSD的处理增益随声源位置的变化, f = 300 Hz (a) MSD; (b) WMSSD; (c) OWMSSD

    Fig. 7.  The processing gains of the MSD, WMSSD and OWMSSD versus acoustic source locations with f = 300 Hz: (a) MSD; (b) WMSSD; (c) OWMSSD.

    图 8  各阶模态函数及其反转点深度, f = 300 Hz (a) 波导环境中的各阶模态函数分布; (b) 各阶模态函数的反转点深度

    Fig. 8.  The modal depth functions and their turning-depths with f = 300 Hz: (a) Each modal depth function in the waveguide; (b) the turning-depth of each modal depth function.

    图 9  各阶MSSD的加权系数与处理增益, f = 300 Hz, 声源距离15 km (a)声源深度10 m; (b) 声源深度80 m

    Fig. 9.  The weighting coefficients and the processing gains of the MSSD with f = 300 Hz and source range of 15 km: (a) Source depth of 10 m; (b) source depth of 80 m.

    图 10  不同频率时临界深度随距离的变化图

    Fig. 10.  The critical depths versus ranges under various frequencies.

    图 11  各阶MSSD归一化的加权系数与处理增益, f = 300 Hz, 声源深度10 m, 声源距离25 km

    Fig. 11.  The weighting coefficients and the processing gains of the MSSD with f = 300 Hz, source depth of 10 m and source range of 25 km.

    图 12  等声速剖面与正梯度声速剖面图

    Fig. 12.  Constant sound velocity profile (SVP) and positive gradient SVP.

    图 13  各阶模态函数的反转深度, f = 300 Hz

    Fig. 13.  The turning-depth of each modal depth function with f = 300 Hz.

    图 14  两种声速剖面波导中的各阶模态函数, f = 300 Hz (a) 等声速剖面; (b) 正梯度声速剖面

    Fig. 14.  Each modal depth function in the two kinds of waveguides with f = 300 Hz: (a) Constant SVP; (b) positive gradient SVP.

    图 15  两种声速剖面下, 不同声源位置处的WMSSD处理增益, f = 300 Hz (a)等声速剖面; (b) 正梯度声速剖面

    Fig. 15.  The processing gains of the WMSSD versus acoustic source locations with f = 300 Hz: (a) Constant SVP; (b) positive gradient SVP.

    Baidu
  • [1]

    Baggeroer A B, Kuperman W A, Mikhalevsky P N 1993 IEEE J. Oceanic Eng. 18 401Google Scholar

    [2]

    Sha L, Nolte L W 2005 J. Acoust. Soc. Am. 117 1942Google Scholar

    [3]

    Sha L, Nolte L W 2006 IEEE J. Oceanic Eng. 31 345Google Scholar

    [4]

    刘宗伟, 孙超, 易锋, 郭国强, 向龙凤 2014 声学学报 3 309

    Liu Z W, Sun C, Yi F, Guo G Q, Xiang L F 2014 Acta Acust. 3 309

    [5]

    刘宗伟, 孙超, 吕连港 2015 声学学报 5 665

    Liu Z W, Sun C, Lv L G 2015 Acta Acust. 5 665

    [6]

    Scharf L L, Friedlander B 1993 IEEE Trans. Signal Process. 42 2146

    [7]

    Krishna K M, Anand G V 2009 IEEE OCEANS Biloxi, USA, October 26−29, 2009 p1

    [8]

    Hari V N, Anand G V, Premkumar A B, Madhukumar A S 2011 IEEE OCEANS Santander, Spain, June 6−9, 2011 p1

    [9]

    Hari V N, Anand G V, Nagesha P V, Nagesha P V, Premkumar A B 2012 Proceedings of the 20th European Signal Processing Conference Bucharest, Romania, August 27−31, 2012 p1334

    [10]

    Hari V N, Anand G V, Premkumar A B 2013 Digit. Signal Process. 23 1645Google Scholar

    [11]

    李明杨, 孙超, 邵炫 2014 20 204302Google Scholar

    Li M Y, Sun C, Shao X 2014 Acta Phys. Sin. 20 204302Google Scholar

    [12]

    Li M, Sun C, Willett P 2017 IEEE J. Oceanic Eng. 99 1

    [13]

    Kong D Z, Sun C, Li M Y, Liu X H, Xie L 2019 IEEE Access 7 79644Google Scholar

    [14]

    孔德智, 孙超, 李明杨, 卓颉, 刘雄厚 2019 68 174301Google Scholar

    Kong D Z, Sun C, Li M Y, Zhuo J, Liu X H 2019 Acta Phys. Sin. 68 174301Google Scholar

    [15]

    Jensen F B, Kuperman W A, Porter M B, Schmidt H 2011 Computational Ocean Acoustics (New York: Springer) pp258−263

    [16]

    张仁和 1979 声学学报 2 16

    Zhang R H 1979 Acta Acust. 2 16

    [17]

    Wang Q, Zhang RH 1990 J. Acoust. Soc. Am. 87 633Google Scholar

    [18]

    汪德昭, 尚尔昌2013 水声学(第二版) (北京: 科学出版社) pp92−94

    Wang D Z, Shang E C 2013 Underwater Acoustics (Vol. 2) (Beijing: Science Press) pp92−94 (in Chinese)

    [19]

    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: Publishing House of Electronics Industry) pp573−574 (in Chinese)

    [20]

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

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  • 收稿日期:  2019-12-23
  • 修回日期:  2020-05-12
  • 上网日期:  2020-05-19
  • 刊出日期:  2020-08-20

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