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Algal community structure prediction by machine learning

Muyuan Liu, Yuzhou Huang, Jing Hu, Junyu He, Xi Xiao

2022Environmental Science and Ecotechnology60 citationsDOIOpen Access PDF

Abstract

The algal community structure is vital for aquatic management. However, the complicated environmental and biological processes make modeling challenging. To cope with this difficulty, we investigated using random forests (RF) to predict phytoplankton community shifting based on multi-source environmental factors (including physicochemical, hydrological, and meteorological variables). The RF models robustly predicted the algal communities composed by 13 major classes (Bray-Curtis dissimilarity = 9.2 ± 7.0%, validation NRMSE mostly <10%), with accurate simulations to the total biomass (validation R2 > 0.74) in Norway's largest lake, Lake Mjosa. The importance analysis showed that the hydro-meteorological variables (Standardized MSE and Node Purity mostly >0.5) were the most influential factors in regulating the phytoplankton. Furthermore, an in-depth ecological interpretation uncovered the interactive stress-response effect on the algal community learned by the RF models. The interpretation results disclosed that the environmental drivers (i.e., temperature, lake inflow, and nutrients) can jointly pose strong influence on the algal community shifts. This study highlighted the power of machine learning in predicting complex algal community structures and provided insights into the model interpretability.

Topics & Concepts

InterpretabilityPhytoplanktonEnvironmental scienceCommunity structureBiomass (ecology)Algal bloomRandom forestEcologyNutrientMachine learningComputer scienceEnvironmental resource managementBiologyHydrological Forecasting Using AIAquatic Ecosystems and Phytoplankton DynamicsFish Ecology and Management Studies