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Parallel genetic algorithms for optimised fuzzy modelling with application to a fermentation process

Soufian, M.; Soufian, M

Authors

M. Soufian

M Soufian



Abstract

This paper reports the construction and application of an evolution program to a computational intelligence system used as a software 'sensor' in state-estimation and prediction of biomass concentration in a fermentation process. A fuzzy logic system (FLS) is used as a computational engine to 'infer' the production of biomass from variables easily measured on-line. For this purpose, genetic algorithms (GAs) are employed to train and tune the desired parameters of the fuzzy logic system. It is shown that the fuzzy logic system, which was tuned by two genetic algorithms implemented in parallel, produces better results in prediction of biomass concentration. The mean sum of squared errors and graphical fit are used to compare the performance of the genetically optimised FLS with artificial neural networks (ANN), which is trained using Levenberg-Marquardt second-order nonlinear optimisation method.

Citation

Soufian, M., & Soufian, M. (1997, September). Parallel genetic algorithms for optimised fuzzy modelling with application to a fermentation process. Presented at Second International Conference on Genetic Algorithms in Engineering Systems

Conference Name Second International Conference on Genetic Algorithms in Engineering Systems
Start Date Sep 3, 1997
End Date Sep 5, 1997
Acceptance Date Jul 1, 1997
Publication Date Sep 3, 1997
Deposit Date May 5, 2017
Book Title Proceeding of Genetic Algorithms in Engineering Systems 97
Chapter Number na
ISBN 0 85296 693 8
DOI https://doi.org/10.1049/cp%3A19971167
Keywords Levenberg-Marquardt second-order nonlinear optimisation, parallel genetic algorithms, optimised fuzzy modelling, fermentation process, evolution program, state estimation, biomass concentration, fuzzy logic system, computational engine, squared errors, gr
Public URL http://researchrepository.napier.ac.uk/Output/840217