Title of article :
Fuzzy neural networks for estimation and fuzzy controller design: simulation study for a pulp batch digester
Author/Authors :
K. Belarbi، نويسنده , , K. Bettou and A. Mezaache، نويسنده ,
Abstract :
A structural implementation of a fuzzy inference system through connectionist network based on MLP with logical neurons
connected through binary and numerical weights is considered. The resulting fuzzy neural network is trained using classical back-
propagation to learn the rules of inference of a fuzzy system by adjustment of the numerical weights. For controller design training
is carried out o line in a closed loop simulation. Rules for the fuzzy logic controller are extracted from the network by interpreting
the consequence weights as measure of con®dence of the underlying rule. The framework is used in a simulation study for estima-
tion and control of a pulp batch digester. The controlled variable the Kappa number a measure of lignin content in the pulp
which is not measurable is estimated through temperature and liquor concentration using the fuzzy neural network. On the other
hand a fuzzy neural network is trained to control the Kappa number and rules are extracted from the trained network to construct
a fuzzy logic controller.
Keywords :
Fuzzy estimation , fuzzy control , Pulp batch digester , Fuzzy neural network
Journal title :
Astroparticle Physics