AI Article Synopsis

  • Important fishery resources in China's coastal waters, including species with short life cycles and rapid growth, have seen a decline, raising concerns for their protection and utilization.
  • The study utilized three machine learning methods—random forest model, artificial neural network model, and generalized boosted regression models—to analyze the distribution of fish habitat and its relationship with environmental factors in Haizhou Bay.
  • Results indicated that factors like sea bottom temperature, seawater depth, and sea bottom salinity significantly influenced habitat distribution, with the random forest model performing best in both fitting and prediction; the fish were primarily found between coordinates 34.5°-35.8° N and 119.7°-121° E.

Article Abstract

In recent years, a variety of important fishery resources in China's coastal waters have declined. has the characteristics of short life cycle and rapid growth, with great contributions to fisheries of China's coastal waters. However, we know little about the habitat distribution characteristics of and its relationship with environmental factors, which is not conducive to better protection and utilization of its resources. Here, we analyzed the distribution characteristics of and its relationship with environmental factors using three machine learning methods, , random forest model, artificial neural network model, and generalized boosted regression models, based on the survey data of fishery resources and habitat in Haizhou Bay during spring of 2011 and 2013-2017. Among the three models, random forest model had great advantages in the fitting effect and prediction ability. The model analysis results showed that sea bottom temperature, seawater depth and sea bottom salinity had significant effects on the habitat distribution of . The relative resource density of increased first and then decreased with the increases of sea bottom temperature, seawater depth, and sea bottom salinity. Based on environmental data simulated by the FVCOM model, we predicted the habitat distribution of in Haizhou Bay using random forest model and found that was mainly distributed in the area between 34.5°-35.8° N and 119.7°-121° E.

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Source
http://dx.doi.org/10.13287/j.1001-9332.202206.033DOI Listing

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