Title :
Identification and dynamic data rectification using state correcting recurrent neural networks
Author :
Barton, Randall S. ; Himmelblau, David M.
Author_Institution :
Dept. of Chem. Eng., Texas Univ., Austin, TX, USA
Abstract :
In this work, recurrent neural networks used in data rectification can be regarded as a particular form of discrete extended Kalman filter (DEKF), one that predicts the process states one step into the future, but does not correct the prediction when the new measurement becomes available. By reformulating the rectification problem using a more general objective function during network training, it is shown that optimal state correction can be built into the network and that the network can be “tuned” to yield the desired response characteristics. Networks trained in this way can lead to process models which are less biased than networks trained without state correction. The optimal state correcting recurrent neural network is demonstrated using a simple example
Keywords :
Kalman filters; filtering theory; identification; optimisation; prediction theory; recurrent neural nets; discrete extended Kalman filter; dynamic data rectification; identification; state correcting recurrent neural networks; Electronic mail; Error correction; Filtering; Filters; Gain measurement; Particle measurements; Recurrent neural networks; Time measurement;
Conference_Titel :
Neural Networks, 1996., IEEE International Conference on
Conference_Location :
Washington, DC
Print_ISBN :
0-7803-3210-5
DOI :
10.1109/ICNN.1996.548886