Fig. 4 Variation in the ambiguity surface versus time for
deep source. The depth and range ambiguity surfaces are shown for TMFP
in (a) and (d) respectively, for MFP I in (b) and (e), and for MFP II in
(c) and (f), where the solid black line denotes the real source range
and depth.
Observing Figs. 3 and 4, comparing the depth estimation ambiguity
surface of TMFP, MFP I and MFP II, the main lobe width of depth
estimation ambiguity surface for MFP II is the narrowest, but the
background interference of the ambiguity surface for TMFP is lower than
for MFP I and MFP II, especially under the condition of low
signal-to-noise ratio (the range from source to VLA in the first 30min
is large). The suppression performance of TMFP on ambient noise is
better than that of MFP I and MFP II.
Summary and conclusions: Comparing the range estimation ambiguity
surface obtained by TMFP with the range estimation ambiguity surface
obtained by MFP I and MFP II, the main lobe width of range estimation
ambiguity surface for MFP II is the narrowest, but the background
interference of the ambiguity surface obtained by TMFP is lower than
that obtained by MFP I and MFP II, and the suppression performance of
the ambient noise under a low signal-to-noise ratio is better. The
reason is that the singular value decomposition of the matrix expanded
in each dimension of the tensor can obtain a more accurate tensor signal
subspace and then realize the suppression of the ambient noise.
This study draws on the advantages of tensors in multidimensional data
processing and applies tensor decomposition to broadband matched field
sound source localization processing for the first time. A
space-time-frequency three-dimensional tensor signal model is
constructed, and then a matched field sound source localization method
based on tensor decomposition is proposed. The performance of TMFP with
MFP I and MFP II is compared by processing the VLA data recorded in
event S5 of SWellEx-96. The results show that TMFP has a better
suppression effect on ambient noise than MFP I and MFP II. Especially
under a low signal-to-noise ratio, given the advantage of tensor
decomposition in signal subspace estimation, the advantage of TMFP is
more evident than that of MFP I and MFP II. Therefore, the TMFP
processors could be used in real applications because of better
performance. Finally, it needs to be mentioned that one can develop an
adaptive TMFP with higher resolution (similar to MVDR beamformer)
[18].
Acknowledgments: This research was funded by Science and
Technology on Sonar Laboratory foundation, Grant No. 2022-JCJQ-LB-031-02
and Youth Elite Scientists Sponsorship Program by CAST, Grant No.
YESS20200330.
2021 The Authors. Electronics Letters published by John Wiley
& Sons Ltd on behalf of The Institution of Engineering and Technology
This is an open access article under the terms of the Creative Commons
Attribution License, which permits use, distribution and reproduction in
any medium, provided the original work is properly cited.
Received: xx January 2021 Accepted: xx March 2021
doi: 10.1049/ell2.10001
References
1. Conan, E., Bonnel, J., Chonavel, T., Nicolas, B.: Source depth
discrimination with a vertical line array. J. Acoust. Soc. Am., 2016,
140, EL434–EL440, doi:10.1121/1.4967506.
2. Kuperman, W. A.: An overview of beamforming, matched-field
processing, and time reversal techniques. J. Acoust. Soc. Am., 2016,
139, 2081-2081, doi:10.1121/1.4950176.
3. Baggeroer, A. B., Kuperman, W. A., Mikhalevsky, P. N.: An overview of
matched field methods in ocean acoustics. IEEE J. Oceanic Eng., 1993,
18, 401-424, doi:10.1109/48.262292.
4. Huang, Y. W.: Research on Remote Source Matching Field Source
Localization in Shallow Water. Doctor, Harbin Engineering University,
Harbin, Heilongjiang Province, China, 2015.
5. Yang, K. D., Ma, Y. L., Zou, S. X., Lei, B.: Linear matched field
processing based on environmental perturbation. Acta. Acust., 2006, 31,
496–505.
6. Yang, K. D., Ma, Y. L., Zhang, Z. B., Zou, S. X.: Robust adaptive
matched field processing with environmental uncertainty. Acta. Acust.,
2006, 31, 120–130.
7. Bro, R.: PARAFAC Tutorial and Applications. Chemometr. Intell. Lab.,
1997, 38, 149–171, doi:10.1016/S0169-7439(97)00032-4.
8. Cichocki, A., Mandic, D., Lathauwer, L. D., Zhou, G., Zhao, Q.,
Calafa, C., Phan, H.: Tensor Decompositions for Signal Processing
Applications: From Two-Way to Multiway Component Analysis. IEEE Signal
Proc., Mag., 2015, 32, 145–163, doi:10.1109/MSP.2013.2297439.
9. Lathauwer, L. D., Moor, B. D., Vandewalle, J.: A Multilinear singular
value decomposition. SIAM J. Matrix Anal. A., 2000, 21, 1253–1278,
doi:10.1137/s0895479896305696.
10. Kolda, T. G., Bader, B. W.: Tensor decompositions and applications.
SIAM Rev. 2009, 51, 455–500, doi:10.1137/07070111x.
11. Zhang X., He Q.: Time–frequency audio feature extraction based on
tensor representation of sparse coding. Electron. Lett. 2015,
51(2):131-132, doi:10.1049/el.2014.3333.
12. Zhan, C., Hu, G., Zhao, F., Zhou, H.: Efficient tensor
model-Toeplitz matrix iterative reconstruction for angle estimation with
nested array. Electron. Lett. 2023, 59: e12912, doi:10.1049/ell2.12912.
13. Wen, F., Xu, Y.: HOSVD Based Multidimensional Parameter Estimation
for Massive MIMO System from Incomplete Channel Measurements. Multidim.
Syst. Sign. P., 2018, 29, 1255–1267, doi:10.1007/s11045-017-0501-0.
14. The SWellEx-96 Experiment. Available online:
http://swellex96.ucsd.edu/events.html (accessed on 15 August 2018).
15. Battle, D. J., Gerstoft, P., Kuperman, W. A., Hodgkiss, W. S.,
Siderius, M.: Geoacoustic inversion of tow-ship noise via
near-field-matched-field processing. IEEE J. Oceanic ENG. 2003, 28,
454-467, doi:10.1109/JOE.2003.816679.
16. Gerstoft, P., Mecklenbraukerb, C. F.: Ocean Acoustic Inversion with
Estimation of a Posteriori Probability Distributions. J. Acoust. Soc.
Am., 1998, 104, 808-819, doi: 10.1121/1.423355.
17. Porter, M.: The KRAKEN normal mode program. SACLANTCEN Undersea
Research Centre Tech. Report. (SACLANT Undersea Research Centre, La
Spezia, Italy), 1992.
18. Miron, S., Bihan, N. L., Mars, J. I.: Vector-sensor MUSIC for
polarized seismic sources localization. EURASIP J. Appl. Sig. P., 2005,
2005, 74-84, doi:10.1155/ASP.2005.74.