DocumentCode :
488515
Title :
A Neural Network Structure for System Identification
Author :
Haesloop, Dan ; Holt, Bradley R.
Author_Institution :
Department of Chemical Engineering, University of Washington, BF-10, Seattle, WA 98195
fYear :
1990
fDate :
23-25 May 1990
Firstpage :
2460
Lastpage :
2465
Abstract :
Establishing a dynamic process model is the first step toward implementing a modern control algorithm. Because of the complexity of chemical processes, most models are identified, that is, determined from a known input/output sequence. Furthermore, models are usually linear and time invariant. This research focuses on the application of neural networks to the development of dynamic models. In particular, this paper presents a modification of the layered structure used most commonly with the Backward Error Propagation algorithm The modification is the addition of a set of weights connected directly from the input to the output layer, weights which contribute in a linear manner to the network output. This creates a number of advantageous compared to traditional structures, including initialization of network parameters based on process knowledge, additional insight to the leaning algorithm, and enhanced extrapolation outside of examples the learning data set.
Keywords :
Chemical processes; Extrapolation; Modems; Neural networks; Power system modeling; Process control; Surges; System identification; Tellurium; Vectors;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
American Control Conference, 1990
Conference_Location :
San Diego, CA, USA
Type :
conf
Filename :
4791170
Link To Document :
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