Litcius/Paper detail

Fully Distributed Filtering With a Stochastic Event-Triggered Mechanism

Jiachen Qian, Peihu Duan, Zhisheng Duan

2021IEEE Transactions on Control of Network Systems22 citationsDOI

Abstract

This article focuses on distributed filtering for a discrete time-varying system observed by multiple smart sensors, where every sensor only measures partial state information of the target system and then sends it to a corresponding remote estimator. Subsequently, the estimator performs the local Kalman filter and shares its estimates with the estimators in its neighborhood in a distributed way. This article aims to reduce the communication rate between sensors and estimators, and guarantee the estimation performance, simultaneously. To achieve this goal, a novel distributed information fusion algorithm is designed by embedding a stochastic event-triggered communication mechanism. Based on a new developed mathematics technique, the consistency and stability of the proposed distributed state estimation algorithms are both ensured. Furthermore, compared with the literature, the stability can be guaranteed with a milder collectively uniformly observable condition. Moreover, the tradeoff between the communication rate and estimation performance is analyzed in a closed-form expression. Finally, the effectiveness of the theoretical results is demonstrated by several comparative numerical examples.

Topics & Concepts

EstimatorKalman filterComputer scienceStability (learning theory)Wireless sensor networkConsistency (knowledge bases)State (computer science)ObservabilityFilter (signal processing)Event (particle physics)Control theory (sociology)Distributed computingAlgorithmMathematicsControl (management)Artificial intelligenceComputer networkApplied mathematicsPhysicsComputer visionQuantum mechanicsMachine learningStatisticsDistributed Sensor Networks and Detection AlgorithmsTarget Tracking and Data Fusion in Sensor NetworksStability and Control of Uncertain Systems