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Underwater sound speed inversion by joint artificial neural network and ray theory

Published: 03 December 2018 Publication History

Abstract

Sound speed profiles (SSPs) have a great impact on the accuracy of underwater localization and sonar ranging. In traditional SSP inversion, the sound intensity distribution used in normal mode theory-based matching field processing (MFP) or the multipath signal propagation time adopted in ray theory-based MFP is susceptible to boundary parameter mismatch issues, which reduces the inversion accuracy. Moreover, heuristic algorithms introduced in the MFP require many individuals and iterations to search for the optimal feature representation coefficients after the empirical orthogonal function (EOF) decomposition, which causes extra computational time. In this paper, we propose a two-way interactive signal propagation time measurement method based on an autonomous underwater vehicle (AUV) and a horizontal linear array (HLA), and we apply the propagation time of direct arrival signals for shallow-water SSP inversion to avoid the boundary parameter mismatch. We propose a joint artificial neural network (ANN) and ray theory SSP inversion model to reduce the computational time at the working phase by fitting the nonlinear relationship from the signal propagation time to the SSP, and once the relationship is established, the goal of reducing the computational time can be achieved. To make the ANN better learn the SSP distribution in a target region and ensure a good inversion accuracy, we give an empirical data selection strategy. Then we propose a virtual SSP generation algorithm to help ANN training in the case of under-fitting problems caused by insufficient training data. Simulation results show that our approach can provide a reliable and instantaneous monitoring of shallow-water SSP distribution.

References

[1]
J. V. Candy and E.J. Sullivan. 1986. Sound Velocity Profile Estimation: A System Theoretic Approach. IEEE Journal of Oceanic Engineering 18, 3 (July 1986), 240--252.
[2]
D. F. Dinn, B. D. Loncarevic, and G. Costello. 1995. The Effect of Sound Velocity Errors on Multi-beam Sonar Depth Accuracy. In 'Challenges of Our Changing Global Environment' Conference Proceedings. OCEANS '95 MTS/IEEE, Vol. 2. IEEE, San Diego, California, USA, 1001--1010.
[3]
J. J. Hopfield. 1988. Artificial Neural Networks. IEEE Circuits and Devices Magazine 4, 5 (1988), 3--10.
[4]
F. B. Jensen, W. A. Kuperman, M. B. Porter, and H. Schmidt. 2011. Computational Ocean Acoustics (2nd. ed.). Springer New York, New York, NY. 117--121 pages.
[5]
F. H. Li and R. H. Zhang. 2010. Inversion for Sound Speed Profile by Using a Bottom Mounted Horizontal Line Array in Shallow Water. Chinese Physics Letters 27, 8 (Aug 2010), 084303.
[6]
Z. L. Li, H. Li, R. H. Zhang, F. H. Li, Y. X. Yu, and L. Peng. 2015. Sound Speed Profile Inversion Using A Horizontal Line Array in Shallow Water. Science China Physics, Mechanics & Astronomy 58, 1 (Jan 2015), 1--7.
[7]
J. Liu, Z. Wang, J. Cui, S. Zhou, and B. Yang. 2016. A Joint Time Synchronization and Localization Design for Mobile Underwater Sensor Networks. IEEE Transactions on Mobile Computing 15, 3 (March 2016), 530--543.
[8]
A. L. Maas, A. Y. Hannun, and A. Y. Ng. 2013. Rectifier Nonlinearities Improve Neural Network Acoustic Models. In ICML '13: Proceedings of the 30th International Conference on International Conference on Machine Learning, Sanjoy Dasgupta and David McAllester (Eds.), Vol. 28. JMLR.org, Atlanta, Georgia, USA. http://robotics.stanford.edu/~amaas/papers/relu_hybrid_icml2013_final.pdf
[9]
W. Munk and C. Wunsch. 1979. Ocean Acoustic Tomography: A Scheme for Large Scale Monitoring. Deep Sea Research Part A. Oceanographic Research Papers 26, 2 (1979), 123 -- 161.
[10]
W. Munk and C. Wunsch. 1983. Ocean Acoustic Tomography: Rays and Modes. Reviews of Geophysics 21, 4 (May 1983), 777--793.
[11]
D. E. Rumelhart, G. E. Hinton, and R. J. Williams. 1986. Learning Representations by Back-propagating Errors. Nature Publishing Group 323, 6088 (1986), 533.
[12]
E. C. Shang. 1989. Ocean Acoustic Tomography Based on Adiabatic Mode Theory. Acoustical Society of America Journal 85, 4 (Apr 1989), 1531--1537.
[13]
W. C. Sun, J. Y. Bao, S. H. Jin, F. M. Xiao, and Y. Cui. 2016. Inversion of Sound Velocity Profiles by Correcting the Terrain Distortion. Geomatics and Information Science of Wuhan University 41, 3 (2016), 349--355.
[14]
J. F. Tang and S. E. Yang. 2006. Sound Speed Profile in Ocean Inverted by Using Travel Time. Journal of Harbin Engineering University 27, 5 (11 2006), 733--736+756.
[15]
A. Tolstoy, O. Diachok, and L. N. Frazer. 1991. Acoustic Tomography Via Matched Field Processing. The Journal of the Acoustical Society of America 89, 3 (1991), 1119--1127.
[16]
Q. Y. Wu and W. Xu. 2017. Matched Field Source Localization As A Multiple Hypothesis Tracking Problem. In Proceedings of the International Conference on Underwater Networks & Systems, Vol. 7. ACM, Halifax, NS, Canada, 25:1--25:2.
[17]
W. Zhang. 2013. Inversion of Sound Speed Profile in Three-dimensional Shallow Water. Phdthesis. Harbin Engineering University, Harbin, China.
[18]
W. Zhang, S. E. Yang, Y. W. Huang, and L. Li. 2012. Inversion of Sound Speed Profile in Shallow Water with Irregular Seabed. AIP Conference Proceedings 1495, 1 (2012), 392--399.
[19]
Z. M. Zhang. 2005. The Study for Sound Speed Inversion in Shallow Water on Application of Genetic and Simulated Annealing Algorithms. Master's thesis. Harbin Engineering University, Harbin, China.
[20]
G. Y. Zheng and Y. W. Huang. 2017. Improved Perturbation Method for Sound Speed Profile Inversion. Journal of Harbin Engineering University 38, 3 (2017), 371--377.

Cited By

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  • (2024)Predictive Modeling of Future Full-Ocean Depth SSPs Utilizing Hierarchical Long Short-Term Memory Neural NetworksJournal of Marine Science and Engineering10.3390/jmse1206094312:6(943)Online publication date: 4-Jun-2024
  • (2024)Underwater Sound Speed Field Forecasting Based on the Least Square Support Vector MachineJournal of Marine Science and Engineering10.3390/jmse1203048012:3(480)Online publication date: 13-Mar-2024
  • (2023)Experimental Results of Underwater Sound Speed Profile Inversion by Few-Shot Multi-Task LearningRemote Sensing10.3390/rs1601016716:1(167)Online publication date: 31-Dec-2023
  • Show More Cited By

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Published In

cover image ACM Other conferences
WUWNet '18: Proceedings of the 13th International Conference on Underwater Networks & Systems
December 2018
261 pages
ISBN:9781450361934
DOI:10.1145/3291940
This work is licensed under a Creative Commons Attribution-NonCommercial International 4.0 License.

Publisher

Association for Computing Machinery

New York, NY, United States

Publication History

Published: 03 December 2018

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Author Tags

  1. artificial neural network (ANN)
  2. direct arrival signals
  3. ray theory
  4. sound speed profile (SSP)
  5. sparse feature points (SFPs)

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  • Research-article

Funding Sources

  • National Natural Science Foundation of China

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WUWNet'18

Acceptance Rates

WUWNet '18 Paper Acceptance Rate 11 of 23 submissions, 48%;
Overall Acceptance Rate 84 of 180 submissions, 47%

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Cited By

View all
  • (2024)Predictive Modeling of Future Full-Ocean Depth SSPs Utilizing Hierarchical Long Short-Term Memory Neural NetworksJournal of Marine Science and Engineering10.3390/jmse1206094312:6(943)Online publication date: 4-Jun-2024
  • (2024)Underwater Sound Speed Field Forecasting Based on the Least Square Support Vector MachineJournal of Marine Science and Engineering10.3390/jmse1203048012:3(480)Online publication date: 13-Mar-2024
  • (2023)Experimental Results of Underwater Sound Speed Profile Inversion by Few-Shot Multi-Task LearningRemote Sensing10.3390/rs1601016716:1(167)Online publication date: 31-Dec-2023
  • (2023)Deployment Strategy Analysis for Underwater Geodetic NetworksJournal of Marine Science and Engineering10.3390/jmse1201002512:1(25)Online publication date: 20-Dec-2023
  • (2023)Estimation of Underwater Sound Speed Profile via Meta Learning with Data-driven Learning Rate: An Experimental ResultProceedings of the 17th International Conference on Underwater Networks & Systems10.1145/3631726.3631727(1-5)Online publication date: 24-Nov-2023
  • (2021)Double-Scale Adaptive Transmission in Time-Varying Channel for Underwater Acoustic Sensor NetworksSensors10.3390/s2106225221:6(2252)Online publication date: 23-Mar-2021
  • (2021)Collaborating Ray Tracing and AI Model for AUV-Assisted 3-D Underwater Sound-Speed InversionIEEE Journal of Oceanic Engineering10.1109/JOE.2021.306678046:4(1372-1390)Online publication date: Oct-2021
  • (2019)A Stratified Linear Sound Speed Profile Simplification Method for Localization CorrectionProceedings of the 14th International Conference on Underwater Networks & Systems10.1145/3366486.3366517(1-6)Online publication date: 23-Oct-2019

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