Water Quality Modeling in Reservoirs Using Multivariate Linear Regression and Two Neural Network Models

  • Chen W
  • Liu W
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Abstract

In this study, two artificial neural network models (i.e., a radial basis function neural network, RBFN, and an adaptive neurofuzzy inference system approach, ANFIS) and a multilinear regression (MLR) model were developed to simulate the DO, TP, Chl a , and SD in the Mingder Reservoir of central Taiwan. The input variables of the neural network and the MLR models were determined using linear regression. The performances were evaluated using the RBFN, ANFIS, and MLR models based on statistical errors, including the mean absolute error, the root mean square error, and the correlation coefficient, computed from the measured and the model-simulated DO, TP, Chl a , and SD values. The results indicate that the performance of the ANFIS model is superior to those of the MLR and RBFN models. The study results show that the neural network using the ANFIS model is suitable for simulating the water quality variables with reasonable accuracy, suggesting that the ANFIS model can be used as a valuable tool for reservoir management in Taiwan.

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Chen, W.-B., & Liu, W.-C. (2015). Water Quality Modeling in Reservoirs Using Multivariate Linear Regression and Two Neural Network Models. Advances in Artificial Neural Systems, 2015, 1–12. https://doi.org/10.1155/2015/521721

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