Artificial intelligence-based approaches for multi-station modelling of dissolve oxygen in river

Authors

  • G. Elkiran Faculty of Civil and Environmental Engineering, Near East University, Near East Boulevard 99138, Nicosia, Cyprus
  • J. Abdullahi Faculty of Civil and Environmental Engineering, Near East University, Near East Boulevard 99138, Nicosia, Cyprus
  • S.I. Abba Faculty of Civil and Environmental Engineering, Near East University, Near East Boulevard 99138, Nicosia, Cyprus
  • V. Nourani Department of Water Resources Engineering, Faculty of Civil Engineering, University of Tabriz, Tabriz, Iran
Abstract:

ABSTRACT: In this study, adaptive neuro-fuzzy inference system, and feed forward neural network as two artificial intelligence-based models along with conventional multiple linear regression model were used to predict the multi-station modelling of dissolve oxygen concentration at the downstream of Mathura City in India. The data used are dissolved oxygen, pH, biological oxygen demand and water temperature at upper, middle and downstream of the river. To predict outlet of dissolved oxygen of the river in each station, considering different input combinations as i) 11 inputs parameters for all three locations except, dissolved oxygen at the downstream ii) 7 inputs for middle and downstream except dissolved oxygen, at the target location and lastly iii) 3 inputs for downstream location. To determine the accuracy of the model, root mean square error and determination coefficient were employed. The simulated results of dissolved oxygen at three stations indicated that, multi-linear regression is found not to be efficient for predicting dissolved oxygen. In addition, both artificial intelligence models were found to be more capable and satisfactory for the prediction. Adaptive neuro fuzzy inference system model demonstrated high prediction ability as compared to feed forward neural network model. The results indicated that adaptive neuro fuzzy inference system model has a slight increment in performance than feed forward neural network model in validation step. Adaptive neuro fuzzy inference system proved high improvement in efficiency performance over multi-linear regression modeling up to 18% in calibration phase and 27% in validation phase for the best models.

Upgrade to premium to download articles

Sign up to access the full text

Already have an account?login

similar resources

Artificial Intelligence in Power Station

Artificial intelligence is the science of automating intelligent behaviours currently achievable by humans. Power system has grown tremendously over a few decades. As the size and complexity of the power system consisting of generators, transmission lines, power transformers, distribution transformers etc. increases the possibility of inviting faults. The acquisition of data, the processing of ...

full text

Artificial Intelligence Modelling: Data Driven and Theory Driven Approaches

Compared with conventional computer models, AI based modelling offers a wide range of decisive advantages for the social sciences: theoretical knowledge does not have to be quantified, is coded explicitly and modularly and its conclusions can be explained and justified. AI or knowledge based systems can be used in the social sciences for both theory driven and data driven model building. In the...

full text

Artificial Intelligence Approaches for GPS GDOP Classification

Geometrical dilution of precision (GDOP) concept is a powerful and widespread quantify for determining the errors resulting from satellite configuration geometry. GDOP computation is based on the complicated transformation and inversion of measurement matrices that has a time and power burden. Also, basic back propagation neural network (BPNN) is easy to fall into local minima. To overcome this...

full text

Artificial Intelligence Techniques for Steam Generator Modelling

Inference system out performed the other methods in terms of accuracy and ease of implementation, while still achieving a fast execution time as well as a reasonable training time.

full text

Artificial intelligence-based approach to modelling of pipe organs

i Author's Decl£iration iii Acknowledgements iv Dedication v Glossary xvi

full text

Review - Artificial Intelligence Based Modelling of Hydrological Processes

Hydrological processes such as runoff and contaminant transport are usually affected by various complex interrelated variables. Moreover, uncertainties in variables estimate are the common stamp of these processes. Due to this complex nature, Physical modeling of any hydrological system requires availability of large, accurate and detailed data related to all influencing variables, which are no...

full text

My Resources

Save resource for easier access later

Save to my library Already added to my library

{@ msg_add @}


Journal title

volume 4  issue 4

pages  439- 450

publication date 2018-10-01

By following a journal you will be notified via email when a new issue of this journal is published.

Hosted on Doprax cloud platform doprax.com

copyright © 2015-2023