Machine Learning Approach for Detection of Water Overgrowth in Azov Sea with Sentinel-2 Data

Author:

Krivoguz Denis1ORCID,Bondarenko Liudmila2,Matveeva Evgenia2,Zhilenkov Anton3ORCID,Chernyi Sergei345ORCID,Zinchenko Elena3

Affiliation:

1. Department of the “Oceanology”, Southern Federal University, 340015 Rostov-on-Don, Russia

2. Azov-Black Sea Branch of the “VNIRO” (“AzNIIRKH”), Russian Federal Research Institute of Fisheries and Oceanography (“VNIRO”), 344002 Rostov-on-Don, Russia

3. Department of Cyber-Physical Systems, St. Petersburg State Marine Technical University, 190121 Saint-Petersburg, Russia

4. Department of Ship’s Electrical Equipment and Automatization, Kerch State Maritime Technological University, 298309 Kerch, Russia

5. Department of Complex Information Security, Admiral Makarov State University of Maritime and Inland Shipping, 198035 Saint-Petersburg, Russia

Abstract

The Azov Sea estuaries play an important role in the reproduction of semi-anadromous fish species. Spawning efficiency is closely connected with overgrowing of those species spawning grounds; thus, the objective of the water vegetation research has vital fisheries importance. Thus, the main goal of the research was to develop a machine learning algorithm for the detection of water overgrowth with Phragmites australis based on Sentinel-2 data. The research was conducted based on field botanical and vegetation investigations in 2020–2021 in Soleniy and Chumyanniy firths. Collected field and remote sensing data were processed with the semi-automatic classification plugin for QGIS. For the classification of Azov Sea estuaries, a random forest algorithm was used. The obtained results showed that in 2020 the areas occupied by reeds reached 0.37 km2, while in 2021, they increased to 0.51 km2. There was a high level of Phragmites australis growth in the Soleniy and Chumyanniy firths. The rapid growth of Phragmites australis in the period of 2020–2021, where the area covered by the reed doubled, is primarily attributed to eutrophication. This is due to the nutrient enrichment from agricultural lands located in the northern part of the research area near Novonekrasovskiy village. Additionally, changes in water flows and hydrological conditions can also contribute to the favorable growth of the reed. This can result in a high growth rate of Phragmites australis, which can reach up to 2 m per year and can propagate both through vegetative and sexual means, leading to the formation of large and dense clusters.

Funder

Ministry of Science and Higher Education of the Russian Federation

Publisher

MDPI AG

Subject

Ocean Engineering,Water Science and Technology,Civil and Structural Engineering

Reference36 articles.

1. Spawning Grounds Overgrowth Dynamics of the Pskov Lake on Anokhov Bay Example;Mikhailova;Ecosyst. Transform.,2020

2. Tsunikova, E.P. (2006). Water Bodies of the Eastern Azov Region: Their Fishery Significance and Optimization of Their Practical Use, Mediapolis Publishing.

3. Artificial Radionuclides in Sediments of the Don River Estuary and Azov Sea;Matishov;J. Environ. Radioact.,2002

4. Satellite Estimation of Chlorophyll-$a$ Concentration Using the Red and NIR Bands of MERIS—The Azov Sea Case Study;Moses;IEEE Geosci. Remote Sens. Lett.,2009

5. Assessment of infection of Hamsa Engraulis encrasicolus nematode Hysterothylacium aduncum in the Sea of Azov in the summer and autumn periods 2015–2020;Mosesyan;Fisheries,2021

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