This letter proposes an adaptive event-triggered communication framework for distributed state estimation in sensor networks, enabling each node to self-adapt its transmission rule while maintaining a desired average rate and complying with an upper bound on individual transmission rates. Unlike existing approaches that require manual tuning, the proposed method dynamically tunes transmission thresholds, achieving uniform energy and bandwidth consumption across nodes. We analyze the theoretical properties of the proposed transmission strategy, and verify its effectiveness through simulations in a target-tracking scenario.

Distributed Kalman Filtering With Adaptive Communication

Selvi, Daniela;Battistelli, Giorgio
2025-01-01

Abstract

This letter proposes an adaptive event-triggered communication framework for distributed state estimation in sensor networks, enabling each node to self-adapt its transmission rule while maintaining a desired average rate and complying with an upper bound on individual transmission rates. Unlike existing approaches that require manual tuning, the proposed method dynamically tunes transmission thresholds, achieving uniform energy and bandwidth consumption across nodes. We analyze the theoretical properties of the proposed transmission strategy, and verify its effectiveness through simulations in a target-tracking scenario.
2025
adaptive communication
Distributed state estimation
event-triggered communication
Kalman filtering
sensor networks
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11311/1310426
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