Title :
Pattern recognition for modeling and online diagnosis of bioprocesses
Author :
Hamrita, Takoi K ; Wang, Shu
Author_Institution :
Dept. of Biol. & Agric. Eng., Georgia Univ., Athens, GA, USA
Abstract :
Bioprocesses are highly nonlinear and they operate within a wide range of operating regimes. Proper modeling and control of these processes necessitate real-time identification of these regimes. In this paper, the authors introduce an approach for the development of a fuzzy neural network (NN) model for a bioprocess based on decomposition of the process into its different regimes. The model consists of multiple linear local models, one for each regime, and its output is the interpolation of the outputs from the local models. Regime identification is performed using fuzzy clustering and NNs. The outcome of this identification technique is a set of membership functions which indicate to what degree the process is governed by the three operating regimes at any given point in time. The method is illustrated through the development of a real-time product estimation model for a simulated gluconic acid batch fermentation
Keywords :
chemical industry; control system analysis; fermentation; fuzzy neural nets; identification; neurocontrollers; pattern recognition; process control; bioprocesses modelling; bioprocesses online diagnosis; fuzzy clustering; fuzzy neural network; gluconic acid batch fermentation; interpolation; membership functions; multiple linear local models; operating regimes; pattern recognition; process decomposition; real-time identification; real-time product estimation model; regime identification; Agricultural engineering; Chemical industry; Fuzzy control; Fuzzy neural networks; Industry Applications Society; Interpolation; Neural networks; Pattern recognition; Process control; Sugar;
Journal_Title :
Industry Applications, IEEE Transactions on