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인공신경망 모형을 이용한 급속혼화공정에서 적정 응집제 주입농도 결정 및 응집처리후 탁도의 예측Prediction of Turbidity in Treated Water and the Estimation of the Optimum Feed Concentration of Coagulants in Rapid Mixing Process using an Artificial Neural Network Model

Authors
박규홍정동환
Issue Date
2005
Publisher
한국물환경학회
Keywords
Artificial neural network; Coagulant; Turbidity; Optimization; Rapid mixing
Citation
한국물환경학회지, v.21, no.1, pp 21 - 28
Pages
8
Journal Title
한국물환경학회지
Volume
21
Number
1
Start Page
21
End Page
28
URI
https://scholarworks.bwise.kr/cau/handle/2019.sw.cau/28319
ISSN
2289-0971
2289-098X
Abstract
The training and prediction modeling using an artificial neural network was implemented to predict the turbidity of treated water as well as to estimate the optimized feed concentration of polyaluminium chloride (PACl) in a water treatment plant. The parameters used in the input layers were pH, temperature, turbidity and alkalinity, while those in output layers were PACl and turbidity of treated water. Levenberg-Marquadt method of feedforward back-propagation perceptron in the neural network toolbox of MATLAB program was used in this study.Correlation coefficients of the training data with the measured data were 0.9997 for PACl and 0.6850 for turbidity and those of the testing data with measured data were 0.9140 for PACl and 0.3828 for turbidity, when four parameters at input layer, 12-12 nodes each at both the first and the second hidden layers, and two parameters(PACl and turbidity) at output layer were used. Although the predictability of PACl was improved, compared to that of the previous studies to use the only coagulant dose as output layer, turbidity in treated water could not be predicted well. Acquisition of more data through several years obtained with the advanced on-line measuring system could make the artificial neural network useful and practical in actual water treatment plants.
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공과대학 (건설환경플랜트공학)
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