A comparative analysis among computational intelligence techniques for dissolved oxygen prediction in Delaware River

Most of the water quality models previously developed and used in dissolved oxygen (DO) prediction are complex. Moreover, reliable data available to develop/calibrate new DO models is scarce. Therefore, there is a need to study and develop models that can handle easily measurable parameters of a par...

Full description

Bibliographic Details
Main Authors: Ehsan Olyaie, Hamid Zare Abyaneh, Ali Danandeh Mehr
Format: Article
Language:English
Published: Elsevier 2017-05-01
Series:Geoscience Frontiers
Subjects:
SVM
LGP
ANN
Online Access:http://www.sciencedirect.com/science/article/pii/S1674987116300469
id doaj-cad7241a2c144ac0aca17f02e753c08d
record_format Article
spelling doaj-cad7241a2c144ac0aca17f02e753c08d2020-11-24T22:19:30ZengElsevierGeoscience Frontiers1674-98712017-05-018351752710.1016/j.gsf.2016.04.007A comparative analysis among computational intelligence techniques for dissolved oxygen prediction in Delaware RiverEhsan Olyaie0Hamid Zare Abyaneh1Ali Danandeh Mehr2Young Researchers and Elite Club, Hamedan Branch, Islamic Azad University, Hamedan, IranDepartment of Water Engineering, College of Agriculture, Bu-Ali Sina University, Hamedan, IranIstanbul Technical University, Civil Engineering Department, Hydraulics Division, 34469 Maslak, Istanbul, TurkeyMost of the water quality models previously developed and used in dissolved oxygen (DO) prediction are complex. Moreover, reliable data available to develop/calibrate new DO models is scarce. Therefore, there is a need to study and develop models that can handle easily measurable parameters of a particular site, even with short length. In recent decades, computational intelligence techniques, as effective approaches for predicting complicated and significant indicator of the state of aquatic ecosystems such as DO, have created a great change in predictions. In this study, three different AI methods comprising: (1) two types of artificial neural networks (ANN) namely multi linear perceptron (MLP) and radial based function (RBF); (2) an advancement of genetic programming namely linear genetic programming (LGP); and (3) a support vector machine (SVM) technique were used for DO prediction in Delaware River located at Trenton, USA. For evaluating the performance of the proposed models, root mean square error (RMSE), Nash–Sutcliffe efficiency coefficient (NS), mean absolute relative error (MARE) and, correlation coefficient statistics (R) were used to choose the best predictive model. The comparison of estimation accuracies of various intelligence models illustrated that the SVM was able to develop the most accurate model in DO estimation in comparison to other models. Also, it was found that the LGP model performs better than the both ANNs models. For example, the determination coefficient was 0.99 for the best SVM model, while it was 0.96, 0.91 and 0.81 for the best LGP, MLP and RBF models, respectively. In general, the results indicated that an SVM model could be employed satisfactorily in DO estimation.http://www.sciencedirect.com/science/article/pii/S1674987116300469Dissolved oxygenSVMLGPANNModeling
collection DOAJ
language English
format Article
sources DOAJ
author Ehsan Olyaie
Hamid Zare Abyaneh
Ali Danandeh Mehr
spellingShingle Ehsan Olyaie
Hamid Zare Abyaneh
Ali Danandeh Mehr
A comparative analysis among computational intelligence techniques for dissolved oxygen prediction in Delaware River
Geoscience Frontiers
Dissolved oxygen
SVM
LGP
ANN
Modeling
author_facet Ehsan Olyaie
Hamid Zare Abyaneh
Ali Danandeh Mehr
author_sort Ehsan Olyaie
title A comparative analysis among computational intelligence techniques for dissolved oxygen prediction in Delaware River
title_short A comparative analysis among computational intelligence techniques for dissolved oxygen prediction in Delaware River
title_full A comparative analysis among computational intelligence techniques for dissolved oxygen prediction in Delaware River
title_fullStr A comparative analysis among computational intelligence techniques for dissolved oxygen prediction in Delaware River
title_full_unstemmed A comparative analysis among computational intelligence techniques for dissolved oxygen prediction in Delaware River
title_sort comparative analysis among computational intelligence techniques for dissolved oxygen prediction in delaware river
publisher Elsevier
series Geoscience Frontiers
issn 1674-9871
publishDate 2017-05-01
description Most of the water quality models previously developed and used in dissolved oxygen (DO) prediction are complex. Moreover, reliable data available to develop/calibrate new DO models is scarce. Therefore, there is a need to study and develop models that can handle easily measurable parameters of a particular site, even with short length. In recent decades, computational intelligence techniques, as effective approaches for predicting complicated and significant indicator of the state of aquatic ecosystems such as DO, have created a great change in predictions. In this study, three different AI methods comprising: (1) two types of artificial neural networks (ANN) namely multi linear perceptron (MLP) and radial based function (RBF); (2) an advancement of genetic programming namely linear genetic programming (LGP); and (3) a support vector machine (SVM) technique were used for DO prediction in Delaware River located at Trenton, USA. For evaluating the performance of the proposed models, root mean square error (RMSE), Nash–Sutcliffe efficiency coefficient (NS), mean absolute relative error (MARE) and, correlation coefficient statistics (R) were used to choose the best predictive model. The comparison of estimation accuracies of various intelligence models illustrated that the SVM was able to develop the most accurate model in DO estimation in comparison to other models. Also, it was found that the LGP model performs better than the both ANNs models. For example, the determination coefficient was 0.99 for the best SVM model, while it was 0.96, 0.91 and 0.81 for the best LGP, MLP and RBF models, respectively. In general, the results indicated that an SVM model could be employed satisfactorily in DO estimation.
topic Dissolved oxygen
SVM
LGP
ANN
Modeling
url http://www.sciencedirect.com/science/article/pii/S1674987116300469
work_keys_str_mv AT ehsanolyaie acomparativeanalysisamongcomputationalintelligencetechniquesfordissolvedoxygenpredictionindelawareriver
AT hamidzareabyaneh acomparativeanalysisamongcomputationalintelligencetechniquesfordissolvedoxygenpredictionindelawareriver
AT alidanandehmehr acomparativeanalysisamongcomputationalintelligencetechniquesfordissolvedoxygenpredictionindelawareriver
AT ehsanolyaie comparativeanalysisamongcomputationalintelligencetechniquesfordissolvedoxygenpredictionindelawareriver
AT hamidzareabyaneh comparativeanalysisamongcomputationalintelligencetechniquesfordissolvedoxygenpredictionindelawareriver
AT alidanandehmehr comparativeanalysisamongcomputationalintelligencetechniquesfordissolvedoxygenpredictionindelawareriver
_version_ 1725778789004214272