Title of article :
Dynamical systems identification using Gaussian process models with incorporated local models
Author/Authors :
A?man، نويسنده , , K. and Kocijan، نويسنده , , J.، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2011
Pages :
11
From page :
398
To page :
408
Abstract :
Gaussian process (GP) models form an emerging methodology for modelling nonlinear dynamic systems which tries to overcome certain limitations inherent to traditional methods such as e.g. neural networks (ANN) or local model networks (LMN). model seems promising for three reasons. First, less training parameters are needed to parameterize the model. Second, the variance of the modelʹs output depending on data positioning is obtained. Third, prior knowledge, e.g. in the form of linear local models can be included into the model. In this paper the focus is on GP with incorporated local models as the approach which could replace local models network. f the effort up to now has been spent on the development of the methodology of the GP model with included local models, while no application and practical validation has yet been carried out. The aim of this paper is therefore twofold. The first aim is to present the methodology of the GP model identification with emphasis on the inclusion of the prior knowledge in the form of linear local models. The second aim is to demonstrate practically the use of the method on two higher order dynamical systems, one based on simulation and one based on measurement data.
Keywords :
Local models network , Gaussian processes model , Prediction confidence , Two tank system , Off-equilibrium dynamics , nonlinear system identification , Linear system identification
Journal title :
Engineering Applications of Artificial Intelligence
Serial Year :
2011
Journal title :
Engineering Applications of Artificial Intelligence
Record number :
2125421
Link To Document :
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