Spatiotemporal Analysis of Sonar Detection Range in Luzon Strait
Abstract
:1. Introduction
2. Data and Methods
2.1. Data
2.2. Research Methods
2.2.1. Modeling Sound Propagation Loss Using Bellhop
2.2.2. Methodology for Estimating Detection Range
2.2.3. The Advantages of Integration Methodology
3. Results
3.1. Overall Analysis of Spatiotemporal Changes in Detection Range
- The Shallow Water Zone, which includes the continental shelf off the coast of Guangdong, China, within the 150 m isobath. In this region, the DR remains almost constant throughout the year and maintains the lowest values (1–2 km).
- The Intermediate Depth Zone, ranging from 150 m to 2500 m isobaths, encompassing the broad lateral intermediate water zone in the northwestern part of the study area, as well as the regions around the Heng-Chun and Luzon Ridges in the Luzon Strait. In January, the Intermediate Depth Zone is mostly covered by high values, while from February to October, the DR largely stabilizes within 5–8 km, and from October to December, it is again gradually covered by high-value areas, with the maximum DR reaching up to 16 km.
- The Deepwater Zone, including the basin region deeper than 2500 m located in the southwestern part and the deepwater area in the eastern part of the study area. Starting from January, the low-value areas of the DR (2–5 km) gradually expand northward, almost completely occupying the region within the 2500 m isobath by March. Thereafter, the DR in the southern part of the basin further decreases, with the low-value area reaching its maximum extent around May. From June, the low-value area in the basin begins to retract, almost disappearing by December. In the deepwater area east of Luzon Strait, the DR gradually decreases from January to July, then increases from August to December, exhibiting the largest range of variation throughout the year (3–16 km).
3.2. Sound Propagation Environment Analysis
3.2.1. Shallow Water Zone
3.2.2. Intermediate Depth Zone
3.2.3. Deepwater Zone
4. Discussion
5. Conclusions
- During the summer and autumn seasons, when the mixed layer is shallow and a surface sound channel cannot form, the DR is primarily influenced by the water depth. In the Shallow Water Zone (<150 m), acoustic waves undergo frequent reflections between the sea surface and the seabed, resulting in significant energy loss and maintaining a low DR throughout the year. In the Intermediate Depth Zone (150–2500 m), the acoustic rays retain considerable energy after the first reflection from the seabed, enabling a DR of up to 5–8 km. As the water depth increases (>2500 m), the acoustic energy after the seabed reflection no longer satisfies the detection requirements, resulting in a DR of 2–5 km.
- During winter and spring, the thick mixed layer is capable of forming a surface sound channel, which becomes the primary factor influencing the DR. In these seasons, the DRs are generally larger, with maximum values exceeding 10 km.
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
Dual-use Research Statement
- Ø
- Explanation of Potential Risks: Our paper examines the sonar detection range in the Luzon Strait. This research is confined to comprehending the spatiotemporal variations of the acoustic propagation environment in the said maritime area and does not pose a threat to public health or national security.
- Ø
- Evaluation of Benefits to the General Public: Our research is limited to the academic field, which is beneficial to the development of oceanography. There is no risk to the general public.
- Ø
- Compliance with Laws: As an ethical responsibility, we strictly adhere to relevant national and international laws about dual-use research. And we have considered and adhered to these regulations in our paper.
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= 0 | = 1 | = 2 | |
---|---|---|---|
4.325 | 1.421 | 0.5278 | |
−2.173 | 0.5881 | 0.007674 | |
1.852 | −0.2314 | 0.00438 | |
1.095 | −0.2371 | ||
0.7718 |
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Zhang, G.; Zhang, L.; Wang, Y.; Ma, Y.; Zhou, X.; Yu, Y. Spatiotemporal Analysis of Sonar Detection Range in Luzon Strait. J. Mar. Sci. Eng. 2024, 12, 1191. https://doi.org/10.3390/jmse12071191
Zhang G, Zhang L, Wang Y, Ma Y, Zhou X, Yu Y. Spatiotemporal Analysis of Sonar Detection Range in Luzon Strait. Journal of Marine Science and Engineering. 2024; 12(7):1191. https://doi.org/10.3390/jmse12071191
Chicago/Turabian StyleZhang, Gengming, Lihua Zhang, Yitao Wang, Yaowei Ma, Xingyu Zhou, and Yue Yu. 2024. "Spatiotemporal Analysis of Sonar Detection Range in Luzon Strait" Journal of Marine Science and Engineering 12, no. 7: 1191. https://doi.org/10.3390/jmse12071191
APA StyleZhang, G., Zhang, L., Wang, Y., Ma, Y., Zhou, X., & Yu, Y. (2024). Spatiotemporal Analysis of Sonar Detection Range in Luzon Strait. Journal of Marine Science and Engineering, 12(7), 1191. https://doi.org/10.3390/jmse12071191