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http://dx.doi.org/10.6109/JKIICE.2009.13.6.1200

Improvement of Modeling Capability of GMDH Algorithm with Interlayer Connection  

Hong, Yeon-Chan (인천대학교 전자공학과)
Abstract
The GMDH(Group Method of Data Handling) algorithm can be used to model the complex nonlinear systems. The traditional GMDH algorithm produces the output of the system model in the output layer through the input layer and the intermediate layers as the prescribed process. The outputs of each layer are produced only by the outputs of the former layer. However among the inputs there may be the inputs which can influence the modeling result more than the other inputs. Therefore in this paper the method which improve the modeling capability by interlayer connection of more influential inputs is proposed. The capability improvement of the proposed algorithm compared to the traditional algorithm is verified through computer simulation.
Keywords
GMDH algorithm; nonlinear system; system model; interlayer connection; computer simulation;
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