Please use this identifier to cite or link to this item: http://ir.futminna.edu.ng:8080/jspui/handle/123456789/7437
Title: Effects of Data Normalization on Water Quality Model in A Recirculatory Aquaculture System Using Artificial Neural Network
Authors: Folorunso, Taliha A.
Aibinu, Abiodun M.
Kolo, Jonathan G.
Sadiku, Suleiman O. E.
Orire, Abdullahi Muhammad
Keywords: Aquaculture System
artificial neural network
Dissolved Oxygen
Prediction
Water Quality Index
Issue Date: Sep-2018
Publisher: i-manager’s Journal on Pattern Recognition
Citation: Taliha A. Folorunso, Abiodun M. Aibinu, Jonathan G. Kolo, Suleiman O. E. Sadiku, Abdullahi M. Orire, (2018). "Effects of Data Normalization on Water Quality Model in A Recirculatory Aquaculture System Using Artificial Neural Network", i-manager’s Journal on Pattern Recognition, Vol. 5 No. 3 September - November 2018, Pp 21-28.
Series/Report no.: Vol. 5 No. 3;
Abstract: Water Quality remains as one of the most important factors that influence the aquaculture system as its effects can make or mar the state of organisms as well as the environment. Furthermore, the use of Artificial intelligence especially the Artificial Neural Network (ANN) has greatly improved the forecasting capability of water quality due to better solutions produced as compared to other approaches. The performance of these AI techniques lies in the quality of dataset used for its implementation, which is in turn a function of the preprocessing (Normalization) techniques performed on them. In this paper, the effect of different normalization techniques, namely the Min-Max, Decimal Point, Unitary, and the Z-Score were investigated on the prediction of the water quality of the Tank Cultured Re-circulatory Aquaculture System at the WAFT Laboratory, using the ANN. The Water Quality Index was based on the prediction of the Dissolved Oxygen (DO) as a function of the Temperature, Alkalinity, PH, and conductivity. The performance of the techniques on the ANN was evaluated using the Mean Square Error (MSE), Nash-Sutcliffe Efficiency (NSE) coefficient. The comparison of the evaluation of the various techniques depicts that all the approaches are applicable in the prediction of the DO. The Decimal point technique has the least MSE as compared to others, while the Min-Max technique has better performance with respect to the NSE.
URI: http://repository.futminna.edu.ng:8080/jspui/handle/123456789/7437
ISSN: 2349-7912
Appears in Collections:Electrical/Electronic Engineering



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