Interaction between internal solitary waves and the seafloor in the deep sea

Journal article


Tian, Zhuangcai, Huang, Jinjian, Xiang, Jiaming, Zhang, Shaotong, Wu, Jinran, Liu, Xiaolei, Luo, Tingting and Yue, Jianhua. (2024). Interaction between internal solitary waves and the seafloor in the deep sea. Deep Underground Science and Engineering. 3(2), pp. 149-162. https://doi.org/10.1002/dug2.12095
AuthorsTian, Zhuangcai, Huang, Jinjian, Xiang, Jiaming, Zhang, Shaotong, Wu, Jinran, Liu, Xiaolei, Luo, Tingting and Yue, Jianhua
Abstract

Internal solitary wave (ISW), as a typical marine dynamic process in the deep sea, widely exists in oceans and marginal seas worldwide. The interaction between ISW and the seafloor mainly occurs in the bottom boundary layer. For the seabed boundary layer of the deep sea, ISW is the most important dynamic process. This study analyzed the current status, hotspots, and frontiers of research on the interaction between ISW and the seafloor by CiteSpace. Focusing on the action of ISW on the seabed, such as transformation and reaction, a large amount of research work and results were systematically analyzed and summarized. On this basis, this study analyzed the wave–wave interaction and interaction between ISW and the bedform or slope of the seabed, which provided a new perspective for an in-depth understanding of the interaction between ISW and the seafloor. Finally, the latest research results of the bottom boundary layer and marine engineering stability by ISW were introduced, and the unresolved problems in the current research work were summarized. This study provides a valuable reference for further research on the hazards of ISW to marine engineering geology.

Keywordsbottom boundary layer; interaction; internal solitary wave ; seafloor ; sediment
Year01 Jan 2024
JournalDeep Underground Science and Engineering
Journal citation3 (2), pp. 149-162
PublisherEditorial Office of Deep Underground Science and Engineering
ISSN2097-0668
Digital Object Identifier (DOI)https://doi.org/10.1002/dug2.12095
Web address (URL)https://onlinelibrary.wiley.com/doi/10.1002/dug2.12095
Open accessOpen access
Research or scholarlyResearch
Page range149-162
Publisher's version
License
File Access Level
Open
Output statusPublished
Publication dates
Online06 May 2024
Publication process dates
Accepted14 Dec 2023
Deposited15 Nov 2024
Additional information

© 2024 The Authors. Deep Underground Science and Engineering published by John Wiley & Sons Australia, Ltd on behalf of China University of Mining 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.

Funding: National Natural Science Foundation of China. Grant Number: 42107158
Natural Science Foundation of Jiangsu Province. Grant Number: BK20210527

Place of publicationAustralia
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