Title of article :
Optimal experiment design based on local model networks and multilayer perceptron networks
Author/Authors :
Hametner، نويسنده , , Christoph and Stadlbauer، نويسنده , , Markus and Deregnaucourt، نويسنده , , Maxime and Jakubek، نويسنده , , Stefan and Winsel، نويسنده , , Thomas، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2013
Pages :
11
From page :
251
To page :
261
Abstract :
This paper addresses the topic of model based design of experiments for the identification of nonlinear dynamic systems. Data driven modeling decisively depends on informative input and output data obtained from experiments. Design of experiments is targeted to generate informative data and to reduce the experimentation effort as much as possible. Furthermore, design of experiments has to comply with constraints on the system inputs and the system output, in order to prevent damage to the real system and to provide stable operational conditions during the experiment. For that purpose a model based approach is chosen for the optimization of excitation signals in this paper. Two different modeling architectures, namely multilayer perceptron networks and local model networks are chosen and the experiment design is based on the optimization of the Fisher information matrix of the associated model architecture. The paper presents and discusses feasible problem formulations and solution approaches for the constrained dynamic design of experiments. In this context the effects of the Fisher information matrix in the static and the dynamic configurations are discussed. The effectiveness of the proposed method is demonstrated on a complex nonlinear dynamic engine simulation model and an analysis as well as a comparison of the presented model architectures for model based experiment design is given.
Keywords :
NEURAL NETWORKS , Design of experiments , Nonlinear systems , Multilayer perceptron networks , Local model networks , System identification
Journal title :
Engineering Applications of Artificial Intelligence
Serial Year :
2013
Journal title :
Engineering Applications of Artificial Intelligence
Record number :
2125787
Link To Document :
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