Artificial intelligence models for predicting the performance of biological wastewater treatment plant in the removal of Kjeldahl Nitrogen from wastewater

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Date

2017

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Springer Verlag

Abstract

The current work demonstrates the support vector machine (SVM) and adaptive neuro-fuzzy inference system (ANFIS) modeling to assess the removal efficiency of Kjeldahl Nitrogen of a full-scale aerobic biological wastewater treatment plant. The influent variables such as pH, chemical oxygen demand, total solids (TS), free ammonia, ammonia nitrogen and Kjeldahl Nitrogen are used as input variables during modeling. Model development focused on postulating an adaptive, functional, real-time and alternative approach for modeling the removal efficiency of Kjeldahl Nitrogen. The input variables used for modeling were daily time series data recorded at wastewater treatment plant (WWTP) located in Mangalore during the period June 2014–September 2014. The performance of ANFIS model developed using Gbell and trapezoidal membership functions (MFs) and SVM are assessed using different statistical indices like root mean square error, correlation coefficients (CC) and Nash Sutcliff error (NSE). The errors related to the prediction of effluent Kjeldahl Nitrogen concentration by the SVM modeling appeared to be reasonable when compared to that of ANFIS models with Gbell and trapezoidal MF. From the performance evaluation of the developed SVM model, it is observed that the approach is capable to define the inter-relationship between various wastewater quality variables and thus SVM can be potentially applied for evaluating the efficiency of aerobic biological processes in WWTP. © 2017, The Author(s).

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Keywords

Ammonia, Biological water treatment, Chemical oxygen demand, Efficiency, Effluent treatment, Effluents, Errors, Function evaluation, Fuzzy inference, Fuzzy neural networks, Fuzzy systems, Mean square error, Nitrogen, Nitrogen removal, Reclamation, Sewage pumping plants, Support vector machines, Wastewater treatment, Adaptive neuro-fuzzy inference, Adaptive neuro-fuzzy inference system, Kjeldahl, Memberships function, Neuro-fuzzy inference systems, Statistical indices, Support vectors machine, System models, Total Kjeldahl nitrogens, Waste water treatment plants, Membership functions, artificial intelligence, artificial neural network, biological method, nitrogen, performance assessment, prediction, support vector machine, wastewater treatment plant

Citation

Applied Water Science, 2017, 7, 7, pp. 3783-3791

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