Abstract
Artificial neural networks (ANNs) have been applied to an increasing number of real-world problems of considerable complexity. Considered good pattern recognition engines, they offer ideal solutions to a variety of problems such as prediction and modelling where the industrial processes are highly complex. The present paper reports on the elaboration and the validation of a ‘software sensor’ using ANNs for online prediction of optimal coagulant dosage from raw water quality measurements, in a drinking water treatment plant. In the first part, the main parameters affecting the coagulant dosage are determined using a Principal Component Analysis. A brief description of this statistical study is given and experimental results are included. The second part of this work is dedicated to the development of a neural software sensor and the generation of an uncertainty indicator attached to the prediction. Bootstrap sampling has been used to generate a confidence interval for the model outputs. The ANN model was developed using the Levenberg-Marquardt method in combination with ‘weight decay’ regularization to avoid over-fitting. A linear regression model has also been developed for comparison with the ANN model. Experimental and performance results obtained from real data are presented and discussed.
Keywords
Get full access to this article
View all access options for this article.
