Authors
Mohammad Reza Nikoo, Reza Kerachian, Siamak Malakpour-Estalaki, Seyyed Nasser Bashi-Azghadi, Mohammad Mahdi Azimi-Ghadikolaee
Publication date
2011/10/1
Journal
Environmental Monitoring and Assessment
Volume
181
Issue
1-4
Pages
465-478
Publisher
Springer Netherlands
Description
Available water quality indices have some limitations such as incorporating a limited number of water quality variables and providing deterministic outputs. This paper presents a hybrid probabilistic water quality index by utilizing fuzzy inference systems (FIS), Bayesian networks (BNs), and probabilistic neural networks (PNNs). The outputs of two traditional water quality indices, namely the indices proposed by the National Sanitation Foundation and the Canadian Council of Ministers of the Environment, are selected as inputs of the FIS. The FIS is trained based on the opinions of several water quality experts. Then the trained FIS is used in a Monte Carlo analysis to provide the required input–output data for training both the BN and PNN. The trained BN and PNN can be used for probabilistic water quality assessment using water quality monitoring data. The efficiency and applicability of the proposed …
Total citations
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Scholar articles
MR Nikoo, R Kerachian, S Malakpour-Estalaki… - Environmental monitoring and assessment, 2011