Development of Artificial Neural Network for Predicting The Photodegradation of Reactive Black 5 Dye

Dika Rahayu Widiana, Ryan Yudha Adhitya

Abstract


We applied a multilayer artificial neural network (ANN) developed using a Lavenberg–Marquadt algorithm to predict the photodegradation activity of the Reactive Black 5 (RB5) dye. A copper-doped titanium dioxide was employed as a photocatalyst. A copper doped titanium dioxide was synthesized through a wet-impregnation method. To optimize the network the operational parameters including the RB5 initial concentration, photocatalyst dose, irradiation time, hydrogen peroxide concentration, and visible light intensity were used as the input parameter. Removal efficiency of RB5 was selected as output. The number of neurons in the second hidden layer was optimized to determine the suitable ANN model structure for the RB5 removal. ANN based through Levenberg-Marquadth algorithm with structure 1-10-21-1 gave the best performance in this study. The criteria for the applicability of the model were the root mean square error (0.1) and coefficient of correlation (0.98275).


Keywords


Artificial neural network; Levenberg–Marquadt; Copper-doped TiO2; photodegradation; Reactive Black 5

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References


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DOI: https://doi.org/10.31284/j.iptek.2019.v23i2.547

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