Abstract
Not only are reservoir managers and aquatic scientists concerned with
the environmental effects of water quality, civil engineers must also
consider water quality to comply with regulations in the construction of
new reservoirs, or in making structural and operational modifications to
existing reservoirs. This study establishes a machine learning approach
for predicting Carlson’s Trophic State Index (CTSI), which is a
frequently used metric of water quality in reservoirs. Data collected
over ten years (1995-2016) from the stations at 20 reservoirs in Taiwan
were preprocessed as the input for the modeling system. Four well-known
artificial intelligence (AI) techniques, ANN (Artificial Neural
Network), SVM (Support Vector Machine), CART (Classification And
Regression Technique), and LR (Linear Regression), were used to analyze
in baseline and ensemble scenarios. Moreover, one variation of support
vector machine was integrated with a metaheuristic optimization
algorithm to develop a hybrid AI model. The comprehensive comparison
demonstrated that the ensemble ANN model, based on tiering method, is
more accurate than the other single, ensemble, and hybrid models. The
novelty of this study is providing a new approach of AI models, reducing
the complexity of measuring three traditional parameters of CTSI
formula, as an alternative to the conventional approach to predicting
CTSI. This work contributes to the improvement of water quality
management by providing a versatile technique that offers diverse
predictive methods to meet the specific requirements of practitioners.