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    A Bootstrapped Neural Network Model Applied To Prediction Of The Biodegradation Rate Of Reactive Black 5 Dye [um Modelo De Rede Neural Bootstrap Aplicado Na Predição Da Taxa De Biodegradação Do Corante Reactive Black 5]

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    Current essay forwards a biodegradation model of a dye, used in the textile industry, based on a neural network propped by bootstrap remodeling. Bootstrapped neural network is set to generate estimates that are close to results obtained in an intrinsic experience in which a chemical process is applied. Pseudomonas oleovorans was used in the biodegradation of reactive Black 5. Results show a brief comparison between the information estimated by the proposed approach and the experimental data, with a coefficient of correlation between real and predicted values for a more than 0.99 biodegradation rate. Dye concentration and the solution's pH failed to interfere in biodegradation index rates. 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