Abstract
Predicting the levels of chlorophyll-a (Chl-a) is a vital component of water quality management, which ensures that urban drinking water is safe from harmful algal blooms. This study developed a model to predict Chl-a levels in the Yuqiao Reservoir (Tianjin, China) biweekly using water quality and meteorological data from 1999-2012. First, six artificial neural networks (ANNs) and two non-ANN methods (principal component analysis and the support vector regression model) were compared to determine the appropriate training principle. Subsequently, three predictors with different input variables were developed to examine the feasibility of incorporating meteorological factors into Chl-a prediction, which usually only uses water quality data. Finally, a sensitivity analysis was performed to examine how the Chl-a predictor reacts to changes in input variables. The results were as follows: first, ANN is a powerful predictive alternative to the traditional modeling techniques used for Chl-a prediction. The back program (BP) model yields slightly better results than all other ANNs, with the normalized mean square error (NMSE), the correlation coefficient (Corr), and the Nash-Sutcliffe coefficient of efficiency (NSE) at 0.003 mg/l, 0.880 and 0.754, respectively, in the testing period. Second, the incorporation of meteorological data greatly improved Chl-a prediction compared to models solely using water quality factors or meteorological data; the correlation coefficient increased from 0.574-0.686 to 0.880 when meteorological data were included. Finally, the Chl-a predictor is more sensitive to air pressure and pH compared to other water quality and meteorological variables.
Highlights
Chlorophyll-a (Chl-a) is commonly used as an indicator of the abundance of phytoplankton and the population levels of primary productivity in the lakes and reservoirs that provide most of the drinking water for dozens of large and medium cities in China
This study developed a model to predict Chl-a levels in the Yuqiao Reservoir (Tianjin, China) biweekly using water quality and meteorological data from 1999-2012
Three artificial neural networks (ANNs) models with different input variables were developed to determine the feasibility of incorporating meteorological variables
Summary
Chlorophyll-a (Chl-a) is commonly used as an indicator of the abundance of phytoplankton and the population levels of primary productivity in the lakes and reservoirs that provide most of the drinking water for dozens of large and medium cities in China. Chl-a levels in lakes and reservoirs have been modeled for over 40 years [1], [2], and several statistical and process-based physical models have been developed using analysis of phytoplankton. With improved understanding of aquatic ecosystem processes and advanced computing capabilities, physical models are used to address water quality problems [8], [9], [10]. These models can describe variations in Chl-a levels based on the mechanism, they are not well suited for most Chinese lakes and reservoirs they require a significant amount of field data
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