Artificial neural network and response surface methodology for modeling oil content in produced water from an Iraqi oil field

Author:

Alardhi Saja Mohsen1,Jabbar Noor Mohsen2,Breig Sura Jasem Mohammed3,Hadi Ahmed Abdulrazzaq4,Salman Ali Dawood5ORCID,Al Saedi Laith Majeed6,Khadium Maytham Khalaf6,Showeel Hamza Abbas6,Malak Haydar Muhamad6,Mohammed Malik M.7,Le Phuoc-Cuong8

Affiliation:

1. a Nanotechnology and Advanced Materials Research Center, University of Technology – Iraq, Baghdad, Iraq

2. b Biochemical Engineering Department, Al-Khwarizmi College of Engineering, University of Baghdad, Baghdad, Iraq

3. c Engineering Department, Baghdad Health Al-Karkh Directorate, Ministry of Health, Baghdad, Iraq

4. d Science Department, College of Basic Education, Al-Muthanna University, Al-Muthanna, Iraq

5. e Chemical Engineering Department, College of Engineering, University of Baghdad, Baghdad, Iraq

6. f Missan Oil Company, Amarah, Iraq

7. g Engineering techniques of Fuel and Energy Department, Al Mustaqbal University, Babilon, Iraq

8. h The University of Danang-University of Science and Technology, Danang, 550000, Viet Nam

Abstract

ABSTRACT The majority of the environmental outputs from gas refineries are oily wastewater. This research reveals a novel combination of response surface methodology and artificial neural network to optimize and model oil content concentration in the oily wastewater. Response surface methodology based on central composite design shows a highly significant linear model with P value <0.0001 and determination coefficient R2 equal to 0.747, R adjusted was 0.706, and R predicted 0.643. In addition from analysis of variance flow highly effective parameters from other and optimization results verification revealed minimum oily content with 8.5 ± 0.7 ppm when initial oil content 991 ppm, temperature 46.4 °C, pressure 21 Mpa, and flowrate 27,000 m3/day which is nearly closed to suggested oily content 8.5 ppm. An artificial neural network (ANN) technique was employed in this study to estimate the oil content in the treatment process. An artificial neural network model was remarkably accurate at simulating the process under investigation. A low mean squared error (MSE) and relative error (RE) equal to 1.55 × 10−7 and 2.5, respectively, were obtained during the training phase, whilst the testing results demonstrated a high coefficient of determination (R2) equal to 0.99.

Publisher

IWA Publishing

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