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Application of partial mutual information variable selection to ANN forecasting of water quality in water distribution systems
Authors:Robert J May  Graeme C Dandy  Holger R Maier  John B Nixon
Affiliation:aResearch and Development, United Water International Pty Ltd, GPO Box 1875, Adelaide, SA 5001, Australia;bSchool of Civil, Environmental and Mining Engineering, University of Adelaide, North Terrace, Adelaide, SA 5005, Australia;cDepartment of Innovatio, Industry, Science and Research, GPO Box 9839, Adelaide, SA 5001, Australia
Abstract:Recent trends in the management of water supply have increased the need for modelling techniques that can provide reliable, efficient, and accurate representation of the complex, non-linear dynamics of water quality within water distribution systems. Statistical models based on artificial neural networks (ANNs) have been found to be highly suited to this application, and offer distinct advantages over more conventional modelling techniques. However, many practitioners utilise somewhat heuristic or ad hoc methods for input variable selection (IVS) during ANN development.This paper describes the application of a newly proposed non-linear IVS algorithm to the development of ANN models to forecast water quality within two water distribution systems. The intention is to reduce the need for arbitrary judgement and extensive trial-and-error during model development. The algorithm utilises the concept of partial mutual information (PMI) to select inputs based on the analysis of relationship strength between inputs and outputs, and between redundant inputs. In comparison with an existing approach, the ANN models developed using the IVS algorithm are found to provide optimal prediction with significantly greater parsimony. Furthermore, the results obtained from the IVS procedure are useful for developing additional insight into the important relationships that exist between water distribution system variables.
Keywords:Water quality modelling  Chlorine residual forecasting  Artificial neural networks  Input variable selection  Partial mutual information  Chlorine disinfection
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