A frequency domain approach for local module identification in dynamic networks
Karthik R. Ramaswamy, P\'eter Zolt\'an Csurcsia, Johan Schoukens, Paul, M.J. Van den Hof

TL;DR
This paper introduces a two-step frequency domain method for local module identification in dynamic networks that reduces computational complexity and variance by combining non-parametric and parametric approaches, avoiding full parametric modeling.
Contribution
It proposes a novel two-step frequency domain identification approach that simplifies the process by focusing only on the target module and using non-parametric noise modeling.
Findings
Reduces computational complexity compared to classical methods.
Achieves lower variance in estimates through non-parametric noise modeling.
Demonstrates effectiveness via numerical simulations.
Abstract
In classical approaches of dynamic network identification, in order to identify a system (module) embedded in a dynamic network, one has to formulate a Multi-input-Single-output (MISO) identification problem that requires identification of a parametric model for all the modules constituting the MISO setup including (possibly) the noise model, and determine their model order. This requirement leads to model order selection steps for modules that are of no interest to the experimenter which increases the computational complexity for large-sized networks. Also, identification using a parametric noise model (like BJ method) can suffer from local minima, however neglecting the noise model has its impact on the variance of the estimates. In this paper, we provide a two-step identification approach to avoid these problems. The first step involves performing a non-parametric indirect approach…
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Taxonomy
TopicsControl Systems and Identification · Structural Health Monitoring Techniques · Fault Detection and Control Systems
