DocumentCode
709559
Title
Predictive modeling of an industrial UASB reactor using NARX neural network
Author
Jain, V.K. ; Banerjee, Atiya ; Kumar, Shashi ; Kumar, Surendra ; Sambi, Surinder S.
Author_Institution
Minist. of New & Renewable Energy, Gov. of India, New Delhi, India
fYear
2015
fDate
24-26 March 2015
Firstpage
1
Lastpage
6
Abstract
A NARX(Nonlinear Autoregressive Exogenous Input) neural network model of an industrial UASB reactor was developed in this research work. A total of 111 days´ data were used for the modeling process, specifically, 100 for training and 11 for comparison of predictions. Several designs were generated for the neural network to check the behavior of the predictive model during the training phase. The final design was optimized by observing performance characteristics and regression analysis by using a customized MATLAB script. The model was capable of realizing the dynamics of the system. A 5-6-2 architecture was capable of suitably modeling the UASB reactor and predicting values of biogas production rate and outlet COD concentration. Almost all predictions lied within ±10% deviations. Such a model may be utilized to predict the output of UASB reactor satisfactorily for its supervision, monitoring and control.
Keywords
autoregressive processes; biofuel; bioreactors; chemical engineering computing; environmental science computing; neural nets; production engineering computing; wastewater treatment; NARX neural network; anaerobic wastewater treatment; biogas production rate; customized MATLAB script; industrial UASB reactor; nonlinear autoregressive exogenous input neural network; outlet COD concentration; performance characteristics; predictive modeling; regression analysis; renewable energy source; training phase; Biological system modeling; Inductors; Mathematical model; Neural networks; Predictive models; Production; Training; ANN; Biogas; NARX; Predictive Modeling; UASB Reactor;
fLanguage
English
Publisher
ieee
Conference_Titel
Renewable Energy Congress (IREC), 2015 6th International
Conference_Location
Sousse
Type
conf
DOI
10.1109/IREC.2015.7110964
Filename
7110964
Link To Document