AUTHOR=Chen Tan , Song Chunqiao , Fan Chenyu , Gao Xin , Liu Kai , Li Zhen , Cheng Jian , Zhan Pengfei TITLE=Remote sensing modeling of environmental influences on lake fish resources by machine learning: A practice in the largest freshwater lake of China JOURNAL=Frontiers in Environmental Science VOLUME=Volume 10 - 2022 YEAR=2022 URL=https://www.frontiersin.org/journals/environmental-science/articles/10.3389/fenvs.2022.944319 DOI=10.3389/fenvs.2022.944319 ISSN=2296-665X ABSTRACT=Climate change and human interference pose a significant threat to fishery habitats and fish biodiversity, leading to changes in fishery resources. However, the impact of environmental change on lake fishery resources has been largely blurred in assessments due to the complicated variables of the lake environment. Here, taking the largest freshwater lake (Poyang Lake) of China as a study case, we first propose a conceptual model and simulate the effect of environmental variables on fish catches based on remote sensing techniques and machine learning algorithms. We find that the hydrometeorological conditions of fishery habitats are critical controlling factors affecting the fish catches in Poyang Lake through a long time series of simulations. Among the involved hydrometeorological variables, the temperature, precipitation, and water level are strongly correlated with the fish catches in the simulation experiments. Further, we tested other experiments and found that the integration with water quality variables (correlation coefficient (R) increased by 11%, root mean square error (RMSE) decreased by 2600 tons) and water ecological variables (R increased by 17%, RMSE decreased by 3200 tons) can further improve the accuracy of fish catches simulation. The results also show that fish catches of aquatic species in Poyang Lake are more susceptible to water ecological variables than water quality refers to the model performance improvements by different input variable selections. In addition, a multi-dimension variable combination involving hydrometeorological, water quality, and water ecological variables derived from remote sensing can maximally optimize the model performance of fish catches simulation (R increased by 21%, RMSE decreased by 4300 tons). The approach developed in this study can save the labor and financial costs for large-area investigation and assessment of lake fishery resources compared to conventional methods. It is expected to demonstrate an efficient way for public authorities, stakeholders, and decision-makers to guide fishery conservation and management strategies.