A variance reduction technique for identification in dynamic networks

Journal Article (2014)
Author(s)

Bilal Gunes (TU Delft - OLD Model-based Measurement & Control)

Arne Dankers (TU Delft - OLD Model-based Measurement & Control)

Paul M J Van Den Hof (TU Delft - OLD Model-based Measurement & Control, Eindhoven University of Technology)

Research Group
OLD Model-based Measurement & Control
DOI related publication
https://doi.org/10.3182/20140824-6-ZA-1003.01495 Final published version
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Publication Year
2014
Language
English
Research Group
OLD Model-based Measurement & Control
Issue number
3
Volume number
47
Pages (from-to)
2842-2847
Event
19th IFAC World Congress on International Federation of Automatic Control, IFAC 2014 (2014-08-24 - 2014-08-29), Pretoria, Cape Town, South Africa
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Abstract

With advancing technology, systems are becoming increasingly interconnected and form more complex networks. Additionally, more measurements are available from systems due to cheaper sensors. Hence there is a need for identification methods specifically designed for networks. For dynamic networks with known interconnection structures, several methods have been proposed for obtaining consistent estimates. We suppose that the internal variables in the network are measured with noise, but that there are external reference signals present in the network that are known exactly. A method that is able to deal with this situation is the two stage method, which solves several open loop identification problems sequentially. In this paper it is shown that solving the problems simultaneously leads to estimates with lower variance.

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