Title :
A Novel Fuzzy-Neural-Network Modeling Approach to Crude-Oil Blending
Author_Institution :
Dept. de Control Automatico, Inst. Politec. Nac. (Cinvestav-IPN), Mexico City, Mexico
Abstract :
In this brief, we propose a new fuzzy-neural-network (FNN) modeling approach which is applied for the modeling of crude-oil blending. The structure and parameters of FNNs are updated online. The new idea for the structure identification is that the input (precondition) and the output (consequent) spaces partitioning are carried out in the same time index. This idea gives a better explanation for input-output mapping of nonlinear systems. The contributions of the parameters identification are as follows: 1) A time-varying learning rate is applied for the commonly used backpropagation algorithm, and the upper bound of modeling error and stability are proved, and 2) since the data of the precondition and the consequent are in the same temporal interval, we can train each rule by its own group data.
Keywords :
backpropagation; blending; crude oil; fuzzy neural nets; production engineering computing; backpropagation algorithm; crude-oil blending; fuzzy-neural-network modeling; input-output mapping; output spaces partitioning; parameter identification; structure identification; time-varying learning rate; crude-oil blending; fuzzy neural networks; online clustering;
Journal_Title :
Control Systems Technology, IEEE Transactions on
DOI :
10.1109/TCST.2008.2008194