Malaysian Applied Biology Journal

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49_01_08

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Malays. Appl. Biol. (2020) 49(1): 69–74

 

PREDICTION OF THE LEVEL OF WATER QUALITY INDEX

USING ARTIFICIAL NEURAL NETWORK TECHNIQUES

IN MELAKA RIVER BASIN


ANG KEAN HUA1,2*


1School of Biological Sciences, Faculty of Science and Technology,

Quest International University Perak (QIUP),

No. 227, Plaza Teh Teng Seng (Level 2), Jalan Raja Permaisuri Bainun,

30250 Ipoh, Perak Darul Ridzuan, Malaysia

2Department of Environmental Sciences, Faculty of Environmental Studies,

Universiti Putra Malaysia, 43400 UPM Serdang, Selangor, Malaysia

*E-mail: This e-mail address is being protected from spambots. You need JavaScript enabled to view it ; This e-mail address is being protected from spambots. You need JavaScript enabled to view it


Accepted 18 February 2020, Published online 30 June 2020


ABSTRACT

Artificial Neural Network (ANN) techniques were used to develop and validate water quality by predicting the Water Quality Index (WQI) in Melaka River Basin, Malaysia. Nine sampling stations were monitored in total. ANN techniques were applied for testing and developing the water quality prediction based on two sets of data. In the first data set, the independent water quality of six variables was used as input into ANN for trained, test and validated samples. In the second data set, a combination between Multiple Linear Regression (MLR) and ANN indicating only Chemical Oxygen Demand (COD), Biochemical Oxygen Demand (BOD), Suspended Solid (SS), and Ammoniacal-Nitrogen (AN) are accounted for training, testing and validating in modeling the water quality. Generally, MLR is used to exclude the lowest value invariance of independent variables, while rejecting the Dissolved Oxygen (DO) and pH. Based on the result of the correlation coefficient, the second set data (0.89) is marginally better than the first set data (0.87). These circumstances stated that predictions for WQI using ANN are acceptable, and the result is better when the variables of DO and pH are eliminated.


Key words: Artificial neural network; multiple linear regression; water quality index; water quality prediction

 

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