Title of article :
Identification of neural dynamic models for fault detection and isolation: the case of a real sugar evaporation process
Author/Authors :
Krzysztof Patan and Thomas Parisini، نويسنده ,
Abstract :
The paper deals with problems of fault detection of industrial processes using dynamic neural networks. The considered neural
network has a feed-forward multi-layer structure and dynamic characteristics are obtained by using dynamic neuron models. Two
optimisation problems are associated with neural networks. The first one is selection of a proper network structure which is solved
by using information criteria such as the Akaike Information Criterion or the Final Prediction Error. In turn, the training of the
network is performed by a stochastic approximation algorithm. The effectiveness of the proposed fault detection and isolation
system is checked using real data recorded in Lublin Sugar Factory, Poland. Additionally, a comparison with alternative approaches
is presented.
Keywords :
NEURAL NETWORKS , fault detection and isolation , Stochastic approximation , Sensors , Actuators
Journal title :
Astroparticle Physics