Use of ANFIS/Genetic Algorithm and Neural Network to Predict Inorganic Indicators of Water Quality

The present research used novel hybrid computational intelligence (CI) models to predict inorganic indicators of water quality. Two CI models i.e. artificial neural network (ANN) and a hybrid adaptive neuro-fuzzy inference system (ANFIS) trained by genetic algorithm (GA) were used to predict inorgan...

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Main Authors: Majid Mohadesi, Babak Aghel
Format: Article
Language:English
Published: University of Tehran 2020-12-01
Series:Journal of Chemical and Petroleum Engineering
Subjects:
ann
Online Access:https://jchpe.ut.ac.ir/article_78104.html
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spelling doaj-bc1d615c45a14c1f9a3a64646c298a732021-01-10T06:26:13ZengUniversity of TehranJournal of Chemical and Petroleum Engineering2423-673X2423-67212020-12-0154215516410.22059/JCHPE.2020.264471.1244Use of ANFIS/Genetic Algorithm and Neural Network to Predict Inorganic Indicators of Water QualityMajid Mohadesi0Babak Aghel1Department of Chemical Engineering, Faculty of Energy, Kermanshah University of Technology, Kermanshah, IranDepartment of Chemical Engineering, Faculty of Energy, Kermanshah University of Technology, Kermanshah, IranThe present research used novel hybrid computational intelligence (CI) models to predict inorganic indicators of water quality. Two CI models i.e. artificial neural network (ANN) and a hybrid adaptive neuro-fuzzy inference system (ANFIS) trained by genetic algorithm (GA) were used to predict inorganic indicators of water quality including total dissolved solids (TDS), total hardness (TH), total alkalinity (TAlk), and electrical conductivity (σ). The study was conducted on samples collected from water wells of Kermanshah province through analyzing water parameters including pH, temperature (T), and the sum of mill equivalents of cations (SC) and anions (SA). A multilayer perceptron (MLP) structure was used to forecast inorganic indicators of water quality using the ANN approach. A MATLAB code was used for the proposed ANFIS model to adjust and optimize the ANFIS parameters during the training process using GA. The accuracy of the generated models was described using various evaluation techniques such as mean absolute error (MAE), correlation factor (R), and mean relative error percentage (MRE%). The results showed that both methods were suitable for predicting inorganic indicators of water quality. Moreover, the comparison of the two methods showed that the predicted values obtained from the ANFIS/GA model were better than those obtained from the ANN approach.https://jchpe.ut.ac.ir/article_78104.htmlanfisanngenetic algorithmwater quality
collection DOAJ
language English
format Article
sources DOAJ
author Majid Mohadesi
Babak Aghel
spellingShingle Majid Mohadesi
Babak Aghel
Use of ANFIS/Genetic Algorithm and Neural Network to Predict Inorganic Indicators of Water Quality
Journal of Chemical and Petroleum Engineering
anfis
ann
genetic algorithm
water quality
author_facet Majid Mohadesi
Babak Aghel
author_sort Majid Mohadesi
title Use of ANFIS/Genetic Algorithm and Neural Network to Predict Inorganic Indicators of Water Quality
title_short Use of ANFIS/Genetic Algorithm and Neural Network to Predict Inorganic Indicators of Water Quality
title_full Use of ANFIS/Genetic Algorithm and Neural Network to Predict Inorganic Indicators of Water Quality
title_fullStr Use of ANFIS/Genetic Algorithm and Neural Network to Predict Inorganic Indicators of Water Quality
title_full_unstemmed Use of ANFIS/Genetic Algorithm and Neural Network to Predict Inorganic Indicators of Water Quality
title_sort use of anfis/genetic algorithm and neural network to predict inorganic indicators of water quality
publisher University of Tehran
series Journal of Chemical and Petroleum Engineering
issn 2423-673X
2423-6721
publishDate 2020-12-01
description The present research used novel hybrid computational intelligence (CI) models to predict inorganic indicators of water quality. Two CI models i.e. artificial neural network (ANN) and a hybrid adaptive neuro-fuzzy inference system (ANFIS) trained by genetic algorithm (GA) were used to predict inorganic indicators of water quality including total dissolved solids (TDS), total hardness (TH), total alkalinity (TAlk), and electrical conductivity (σ). The study was conducted on samples collected from water wells of Kermanshah province through analyzing water parameters including pH, temperature (T), and the sum of mill equivalents of cations (SC) and anions (SA). A multilayer perceptron (MLP) structure was used to forecast inorganic indicators of water quality using the ANN approach. A MATLAB code was used for the proposed ANFIS model to adjust and optimize the ANFIS parameters during the training process using GA. The accuracy of the generated models was described using various evaluation techniques such as mean absolute error (MAE), correlation factor (R), and mean relative error percentage (MRE%). The results showed that both methods were suitable for predicting inorganic indicators of water quality. Moreover, the comparison of the two methods showed that the predicted values obtained from the ANFIS/GA model were better than those obtained from the ANN approach.
topic anfis
ann
genetic algorithm
water quality
url https://jchpe.ut.ac.ir/article_78104.html
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AT babakaghel useofanfisgeneticalgorithmandneuralnetworktopredictinorganicindicatorsofwaterquality
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