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Replacing Outliers and Missing Values from Activated Sludge Data Using Kohonen Self-Organizing Map
Authors:Rabee Rustum  Adebayo J Adeloye
Affiliation:1Ph.D. Research Student, School of the Built Environment, Heriot-Watt Univ., Riccarton, Edinburgh EH14 4AS, U.K. E-mail: rr25@hw.ac.uk
2Senior Lecturer, School of the Built Environment, Heriot-Watt Univ., Riccarton, Edinburgh EH14 4AS, U.K. E-mail: A.J.Adeloye@hw.ac.uk
Abstract:Modeling the activated sludge wastewater treatment plant plays an important role in improving its performance. However, there are many limitations of the available data for model identification, calibration, and verification, such as the presence of missing values and outliers. Because available data are generally short, these gaps and outliers in data cannot be discarded but must be replaced by more reasonable estimates. The aim of this study is to use the Kohonen self-organizing map (KSOM), unsupervised neural networks, to predict the missing values and replace outliers in time series data for an activated sludge wastewater treatment plant in Edinburgh, U.K. The method is simple, computationally efficient and highly accurate. The results demonstrated that the KSOM is an excellent tool for replacing outliers and missing values from a high-dimensional data set. A comparison of the KSOM with multiple regression analysis and back-propagation artificial neural networks showed that the KSOM is superior in performance to either of the two latter approaches.
Keywords:Wastewater management  Mathematical models  Neural networks  Activated sludge  Water treatment plants  
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