Distributed Zonotopic Fusion Estimation for Multi-sensor Systems
Yuchen Zhang, Bo Chen, Zheming Wang, Wen-An Zhang, Li Yu, and Lei Guo

TL;DR
This paper introduces a novel distributed zonotopic fusion estimation method for multi-sensor systems, improving accuracy and efficiency through optimized criteria and handling sequential data with stability guarantees.
Contribution
The paper proposes new zonotope fusion criteria and an optimal parameter tuning approach, enhancing distributed estimation performance and reducing conservatism in multi-sensor systems.
Findings
The proposed DZFE meets the state inclusion property.
Enhanced criteria reduce estimation conservatism.
Sequential fusion decreases computational complexity.
Abstract
Fusion estimation is often used in multi-sensor systems to provide accurate state information which plays an important role in the design of efficient control and decision-making. This paper is concerned with the distributed zonotopic fusion estimation problem for multi-sensor systems. The objective is to propose a zonotopic fusion estimation approach using different zonotope fusion criteria. We begin by proposing a novel zonotope fusion criterion to compute a distributed zonotopic fusion estimate (DZFE). The DZFE is formulated as a zonotope enclosure for the intersection of local zonotopic estimates from individual sensors. Then, the optimal parameter matrices for tuning the DZFE are determined by the analytical solution of an optimization problem. To reduce the conservatism of the DZFE with optimal parameters, we enhance our approach with an improved zonotope fusion criterion, which…
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Taxonomy
TopicsTarget Tracking and Data Fusion in Sensor Networks · Fault Detection and Control Systems · Distributed Sensor Networks and Detection Algorithms
