Learning linear modules in a dynamic network with missing node observations
Karthik R. Ramaswamy, Giulio Bottegal, Paul M.J. Van den Hof

TL;DR
This paper introduces a novel method for identifying modules in dynamic networks with missing node data, using kernel-based regularization, Bayesian inference, and MCMC to improve estimation accuracy despite incomplete observations.
Contribution
It proposes a data augmentation approach with kernel-based system identification and Bayesian inference to reconstruct missing data and accurately estimate network modules.
Findings
Improved accuracy in module estimation with missing data.
Effective reconstruction of missing node measurements.
Validated method through numerical simulations.
Abstract
In order to identify a system (module) embedded in a dynamic network, one has to formulate a multiple-input estimation problem that necessitates certain nodes to be measured and included as predictor inputs. However, some of these nodes may not be measurable in many practical cases due to sensor selection and placement issues. This may result in biased estimates of the target module. Furthermore, the identification problem associated with the multiple-input structure may require determining a large number of parameters that are not of particular interest to the experimenter, with increased computational complexity in large-sized networks. In this paper, we tackle these problems by using a data augmentation strategy that allows us to reconstruct the missing node measurements and increase the accuracy of the estimated target module. To this end, we develop a system identification method…
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Taxonomy
TopicsGaussian Processes and Bayesian Inference · Control Systems and Identification · Fault Detection and Control Systems
