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Revista Técnica energía

versión On-line ISSN 2602-8492versión impresa ISSN 1390-5074

Resumen

IZQUIERDO, C.; PEZANTES, B.  y  AYALA, E.. Prediction of the Optimal Dosage of Poly Aluminum Chloride for Coagulation in Drinking Water Treatment using Artificial Neural Networks. Revista Técnica energía [online]. 2023, vol.20, n.1, pp.93-99. ISSN 2602-8492.  https://doi.org/10.37116/revistaenergia.v20.n1.2023.562.

The addition of chemicals in drinking water treatment is usually a manual procedure performed by highly trained and experienced persons. To solve this problem, this study is based on the analysis of data collected from a raw water source located in Ecuador. Then, using the information on the physical-chemical parameters of the raw water such as pH, turbidity and color, the definition of the doses of Poly Aluminum Chloride (PAC), and the input and output variables of the dosage process are identified. Consequently, the implementation of an intelligent control system based on Artificial Neural Networks (ANN) is proposed in order to reduce the dependence on experienced people. These experiments start with data collection and analysis in order to establish the variables involved in the process. The proposed neural model has three hidden layers, and it uses adaptive gradient algorithms. An analysis of the results was performed using Mean Absolute Percentage Error (MAPE) and Root Mean Square Error (RMSE). The PAC predictive model in the training phase gives a MAPE value of 0.0425 for the not adjusted values and 0.0262 for the adjusted numerical values. However, in the test phase the neural model achieves a MAPE of 0.057 for the not adjusted PAC values and 0.041 for the adjusted values. This alternative provides an efficient solution to solve dosing problems in drinking water treatment plants (DWTP), with reliable results according to RMSE and MAPE metrics.

Palabras clave : Drinking water; Dosing; DWTP; Coagulant chemicals; Artificial neural networks; Control system..

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