Fast and Robust State Estimation and Tracking via Hierarchical Learning
Fast and reliable state estimation and tracking are essential for real-time situation awareness in Cyber-Physical Systems (CPS) operating in tactical environments or complicated civilian environments. Traditional centralized solutions do not scale well whereas existing fully distributed solutions ov...
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Zusammenfassung: | Fast and reliable state estimation and tracking are essential for real-time
situation awareness in Cyber-Physical Systems (CPS) operating in tactical
environments or complicated civilian environments. Traditional centralized
solutions do not scale well whereas existing fully distributed solutions over
large networks suffer slow convergence, and are vulnerable to a wide spectrum
of communication failures. In this paper, we aim to speed up the convergence
and enhance the resilience of state estimation and tracking for large-scale
networks using a simple hierarchical system architecture.
We propose two ``consensus + innovation'' algorithms, both of which rely on a
novel hierarchical push-sum consensus component. We characterize their
convergence rates under a linear local observation model and minimal technical
assumptions. We numerically validate our algorithms through simulation studies
of underwater acoustic networks and large-scale synthetic networks. |
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DOI: | 10.48550/arxiv.2306.17267 |