DocumentCode
2736299
Title
A real-time recurrent learning network structure for dealing with missing sensor data
Author
Meert, Kurt
Author_Institution
Dept. of Chem. Eng., Katholieke Univ., Leuven, Heverlee, Belgium
Volume
3
fYear
1996
fDate
3-6 Jun 1996
Firstpage
1600
Abstract
A lot of effort has been put into the modeling of highly nonlinear dynamical systems. In every part of the process industry, soft sensors have became a hot item. These soft sensors (neural models) have the ability to map a variety of input-output patterns quite easily. Although they have many advantages over other, more classical modeling techniques or hard sensors, neural networks also have a number of drawbacks. They are insensitive to the availability of sensor data. The practical use of soft sensors, however, shows that this is hardly the case. Network performance reduces rapidly due to lack of sensor data. To cope with this kind of problems a network structure for real-time recurrent learning networks was developed. Two recurrent networks, a model network and an identity network, are merged into one large clustered recurrent net with combined advantages of robustness and high modeling performance. This technique has been tested on a real-life modeling problem from the chemical process industry. Compared to the original model network the clustered recurrent net enhances the robustness to handle missing data and its accuracy of prediction has been greatly improved
Keywords
chemical industry; data handling; nonlinear dynamical systems; process control; real-time systems; recurrent neural nets; chemical process industry; identity network; missing sensor data; model network; nonlinear dynamical systems; process control; real-time systems; recurrent learning network; soft sensors; Chemical engineering; Chemical industry; Chemical sensors; Digital TV; Expert systems; Neural networks; Real time systems; Robustness; Sensor systems and applications; Testing;
fLanguage
English
Publisher
ieee
Conference_Titel
Neural Networks, 1996., IEEE International Conference on
Conference_Location
Washington, DC
Print_ISBN
0-7803-3210-5
Type
conf
DOI
10.1109/ICNN.1996.549139
Filename
549139
Link To Document