Title
Input design as a tool to improve the convergence of PEM
Abstract
The Prediction Error Method (PEM) is related to an optimization problem built on input/output data collected from the system to be identified. It is often hard to find the global solution of this optimization problem because the corresponding objective function presents local minima and/or the search space is constrained to a nonconvex set. The shape of the cost function, and hence the difficulty in solving the optimization problem, depends directly on the experimental conditions, more specifically on the spectrum of the input/output data collected from the system. Therefore, it seems plausible to improve the convergence to the global minimum by properly choosing the spectrum of the input; in this paper, we address this problem. We present a condition for convergence to the global minimum of the cost function and propose its inclusion in the input design. We present the application of the proposed approach to case studies where the algorithms tend to get trapped in nonglobal minima.
Year
DOI
Venue
2013
10.1016/j.automatica.2013.08.027
Automatica
Keywords
Field
DocType
Identification methods,Experiment design
Convergence (routing),Mean squared prediction error,Mathematical optimization,Control theory,Maxima and minima,Input design,Optimization problem,Mathematics,Design of experiments
Journal
Volume
Issue
ISSN
49
11
0005-1098
Citations 
PageRank 
References 
2
0.44
21
Authors
4
Name
Order
Citations
PageRank
Diego Eckhard1173.57
Alexandre S. Bazanella2347.63
Cristian R. Rojas325243.97
Håkan Hjalmarsson41254175.16