Aspects of Artificial Neural Networks as a Modelling Tool for Industrial Processes

Aspects of Artificial Neural Networks as a Modelling Tool for Industrial Processes

Mohamed Khadir

Department of Computer Science, University Badji Mokhtar of Annaba, Algeria

Abstract: In order to investigate the behavior of industrial processes for design, fault prevention, prediction, control, etc., a model of the process is necessary. Due to inherent nonlinearities proper to industrial processes, and/or nonlinearities due to the characteristics of the valves and pumps forming the entire industrial plant, nonlinear models are desired. Complete mathematical models of such plants proves to be time and efforts consuming, when not totally unrealizable. The fact that Artificial Neural Networks (ANNs) have been proven, by Cybenko, able to represent any nonlinear function, as well as their easy implementation, led to their widespread usage in the modeling community; often not at best and ending in controversial results. This paper proposes a methodology for designing and validating ANN models for modeling industrial plants, taking into consideration typical industrial constraints such as restricted data sets. The approach is applied to an industrial milk pasteurization plant.

Keywords: Artificial neural networks, multi-layer perceptron, nonlinear models, pasteurization plant.

Received July 10, 2004; accepted September 17, 2004


Read 7708 times Last modified on Wednesday, 20 January 2010 03:18
Share
Top
We use cookies to improve our website. By continuing to use this website, you are giving consent to cookies being used. More details…