Multi-model approach to predict phytoplankton biomass and composition dynamics in a eutrophic shallow lake governed by extreme meteorological events

被引:23
|
作者
Crisci, Carolina [1 ]
Terra, Rafael [2 ]
Pablo Pacheco, Juan [3 ]
Ghattas, Badih [4 ]
Bidegain, Mario [5 ]
Goyenola, Guillermo [3 ]
Jose Lagomarsino, Juan [6 ]
Mendez, Gustavo [6 ]
Mazzeo, Nestor [3 ]
机构
[1] Ctr Univ Reg Este, Polo Desarrollo Univ Modelizac & Anal Recursos Na, Ruta Nacl 9 Intersecc Con Ruta 15, Rocha 27000, Uruguay
[2] Univ Republica, Fac Ingn, Inst Mecan Fluidos & Ingn Ambiental, Julio Herrera & Reissig 565, Montevideo 11300, Uruguay
[3] Univ Republ, Dept Ecol Teor & Aplicada, Ctr Univ Reg Este, Tacuarembo Entre Ave Artigas & Aparicio Saravia, Maldonado 20000, Uruguay
[4] CNRS, UMR 7373, Inst Math Marseille, 163 Ave Luminy, F-13288 Marseille, France
[5] Inst Uruguayo Meteorol, Javier Barrios Amorin 1488, Montevideo 11200, Uruguay
[6] Obras Sanitarias Estado, Unidad Gest Desconcentrada, Ruta 12 Km 6, Maldonado 20003, Uruguay
关键词
Extreme meteorological events; Inorganic turbidity dynamics; Chlorophyll-a dynamics; Phytoplankton morphology-based; functional groups; Water quality; Predictions; COMMUNITY STRUCTURE; CLIMATE-CHANGE; CLASSIFICATION; SEDIMENT; BLOOMS; CYANOBACTERIA; STRATEGIES; RESERVOIR; ECOLOGY; HABITAT;
D O I
10.1016/j.ecolmodel.2017.06.017
中图分类号
Q14 [生态学(生物生态学)];
学科分类号
071012 ; 0713 ;
摘要
A multi-model approach to predict phytoplankton biomass and composition was performed in a eutrophic Uruguayan shallow lake which is the second drinking water source of the country. We combined statistical (spectral analysis and Machine learning techniques) and physically based models to generate, for the first time in this system, a predictive tool of phytoplankton biomass (chlorophyll-a) and composition (morphology-based functional groups). The results, based on a 11-year time series, revealed two alternating phases in the temporal dynamics of phytoplankton biomass. One phase is characterized by high inorganic turbidity and low phytoplankton biomass, and the other by low inorganic turbidity and variable (low and high) phytoplankton biomass. A threshold of turbidity (29 TNU), above which phytoplankton remains with low biomass (<15-20 ug/l) was established. The periods of high turbidity, which in total cover 30% of the time series, start abruptly and are related to external forcing. Meteorological conditions associated with the beginning of these periods were modeled through a regression tree analysis. These conditions consist of moderate to high wind intensities from the SW direction, in some cases combined with high antecedent precipitation or low water level. The results from the physically-based modeling indicated that the long decaying time-scale of turbidity and intermediate resuspension events could explain the prolonged length of the high turbidity periods (similar to 1.5 years). Random Forests models for the prediction of phytoplankton biomass and composition in periods of low turbidity resulted in a proportion of explained variance and a classification error over a test sample of 0.46 and 0.34 respectively. Turbidity, conductivity, temperature and water level were within the most important model predictors. The development and improvement of this type of modeling is needed to provide management tools to water managers in the current water supply situation. (C) 2017 Elsevier B.V. All rights reserved.
引用
收藏
页码:80 / 93
页数:14
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