Machine Learning Algorithms for the Estimation of Water Quality Parameters in Lake Llanquihue in Southern Chile

被引:7
|
作者
Rodriguez-Lopez, Lien [1 ]
Bustos Usta, David [2 ]
Bravo Alvarez, Lisandra [3 ]
Duran-Llacer, Iongel [4 ]
Lami, Andrea [5 ]
Martinez-Retureta, Rebeca [6 ]
Urrutia, Roberto [6 ]
机构
[1] Univ San Sebastian, Fac Ingn Arquitectura & Diseno, Lientur 1457, Concepcion 4030000, Chile
[2] Univ Concepcion, Fac Oceanog, Concepcion 4030000, Chile
[3] Univ Concepcion, Dept Elect Engn, Edmundo Larenas 219, Concepcion 4030000, Chile
[4] Univ Mayor, Fac Ciencias Ingn & Tecnol, Hemera Ctr Observac Tierra, Camino La Piramide 5750, Santiago 8580745, Chile
[5] Inst Water Res IRSA, Sez Verbania, I-1000015 Verbania, CP, Italy
[6] Univ Concepcion, Fac Ciencias Ambientales, Concepcion 4030000, Chile
关键词
machine learning algorithms; chlorophyll-a; lake; CHLOROPHYLL-A; FRESH-WATER; CROSS-VALIDATION; CLIMATE-CHANGE; LANDSAT-8; IMPACT;
D O I
10.3390/w15111994
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
The world's water ecosystems have been affected by various human activities. Artificial intelligence techniques, especially machine learning, have become an important tool for predicting the water quality of inland aquatic ecosystems. As an excellent biological indicator, chlorophyll-a was studied to determine the state of water quality in Lake Llanquihue, located in southern Chile. A 31-year time series (1989 to 2020) of data collected in situ was used to determine the evolution of limnological parameters at eight spaced stations covering all of the main points of the lake, and the year, month, day, and hour time intervals were selected. Using machine learning techniques, out of eight estimation algorithms that were applied with real data to estimate chlorophyll-a, three models showed better performance (XGBoost, LightGBM, and AdaBoost). The results for the best models show excellent performance, with a coefficient of determination between 0.81 and 0.99, a root-mean-square error of between 0.03 ug/L and 0.46 ug/L, and a mean bias error of between 0.01 and 0.27 ug/L. These models are scalable and applicable to other lake systems of interest that present similar conditions and can support decision making related to water resources.
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页数:21
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