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Academic Journal of Environment & Earth Science, 2024, 6(4); doi: 10.25236/AJEE.2024.060414.

Selection of Marine Environmental Factors in Oceanic Fishery Forecasting and Advances in Fishery Forecasting Models

Author(s)

Shuyang Su

Corresponding Author:
Shuyang Su
Affiliation(s)

College of Oceanography and Ecological Science, Shanghai Ocean University, Shanghai, 201306, China

Abstract

The marine environment is the most critical factor affecting the formation of fishing grounds. It is very important to explore how the marine environment affects the formation of fishing grounds. In recent years, more and more people have begun to pay attention to the relationship between various marine environmental factors and the formation of fishing grounds, which has led to the rapid development of fishing ground prediction and has formed a certain industry scale, which has provided some help for the scientific development of Fisheries in China. This paper summarizes the relationship between several marine environmental factors such as chlorophyll a (Chl-a), sea surface height (SSH), sea surface salinity (SSS) and sea surface temperature (SST) and the formation of fishing grounds, and briefly summarizes the models used by people to predict fishing grounds in recent years, reviews the research results of researchers at home and abroad in the past, and puts forward some suggestions for the future research and development.

Keywords

marine environmental factors; fishing ground forecasting; machine learning

Cite This Paper

Shuyang Su. Selection of Marine Environmental Factors in Oceanic Fishery Forecasting and Advances in Fishery Forecasting Models. Academic Journal of Environment & Earth Science (2024), Vol. 6, Issue 4: 95-99. https://doi.org/10.25236/AJEE.2024.060414.

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