Robust Component-based Network Localization with Noisy Range Measurements
Tianyuan Sun, Yongcai Wang, Deying Li, Wenping Chen, Zhaoquan Gu

TL;DR
This paper introduces a robust component-based localization method for wireless networks that effectively handles noisy range measurements by evaluating flip ambiguities and local deformations, leading to improved accuracy.
Contribution
It proposes novel metrics and algorithms for assessing and enhancing the robustness of network components against ranging noise, advancing localization reliability.
Findings
RCGR outperforms existing methods in noise resistance
Significant improvement in localization accuracy under noisy conditions
Effective evaluation of flip ambiguities and deformation sensitivities
Abstract
Accurate and robust localization is crucial for wireless ad-hoc and sensor networks. Among the localization techniques, component-based methods advance themselves for conquering network sparseness and anchor sparseness. But component-based methods are sensitive to ranging noises, which may cause a huge accumulated error either in component realization or merging process. This paper presents three results for robust component-based localization under ranging noises. (1) For a rigid graph component, a novel method is proposed to evaluate the graph's possible number of flip ambiguities under noises. In particular, graph's \emph{MInimal sepaRators that are neaRly cOllineaR (MIRROR)} is presented as the cause of flip ambiguity, and the number of MIRRORs indicates the possible number of flip ambiguities under noise. (2) Then the sensitivity of a graph's local deforming regarding ranging…
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Taxonomy
TopicsIndoor and Outdoor Localization Technologies · Underwater Vehicles and Communication Systems · Robotics and Sensor-Based Localization
