Water Quality Assessment in Distribution System Using Artificial Intelligence
Date
2014
Authors
Krishnaji, Patki Vinayak
Journal Title
Journal ISSN
Volume Title
Publisher
National Institute of Technology Karnataka, Surathkal
Abstract
In this study various artificial intelligence techniques have been compared for
assessment and prediction of water quality in various zones of municipal distribution
system using six physico-chemical characteristics viz. pH, alkalinity, hardness,
dissolved oxygen (DO), total solids (TS) and most probable number (MPN). Fuzzy
expert system, artificial neural network (ANN) and adaptive neuro fuzzy inference
system (ANFIS) were used for the comparative study. The proposed expert system
includes a fuzzy model consisting of IF-THEN rules to determine WQI based on
water quality characteristics. The fuzzy models are developed using triangular and
trapezoidal membership functions with centroid, bisector and mean of maxima
(MOM) methods for defuzzification. In ANN method the cascade feed forward back
propagation (CFBP) and feed forward back propagation (FFBP) algorithms were
compared for prediction of water quality in the municipal distribution system. The
comparative study was carried out by varying the number of neuron (1-10) in the
hidden layer, by changing length of training dataset and by changing transfer
function. ANFIS models are developed by using triangular, trapezoidal, bell and
Gaussian membership function. Further, these artificial intelligence techniques are
compared with multiple linear regression technique, which is the commonly used
statistical technique for modelling water quality variables. The study revealed that
artificial neural network (ANN) outperforms other modelling techniques and is a
robust tool for understanding the poorly defined relations between water quality
variables and water quality index (WQI) in municipal distribution system. This tool
could be of great help to the distribution system operator and manager to find change
in WQI with changes in water quality varibles.
Description
Keywords
Department of Civil Engineering, Water distribution system, Water quality index, Fuzzy logic, ANN, ANFIS, Neurons