4.3 Article

Euclidean Distance Matrix-Based Rapid Fault Detection and Exclusion

Journal

Publisher

Inst Navigation - ION
DOI: 10.33012/navi.555

Keywords

GNSS; Euclidean distance matrix; fault detection; fault exclusion; fault isolation

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This paper introduces a new technique using Euclidean distance matrices for fault detection and exclusion of GNSS measurements. The technique is proven to be accurate and significantly faster than other existing methods.
Faulty signals from global navigation satellite systems (GNSSs) often lead to erroneous position estimates. A variety of fault detection and exclusion (FDE) methods have been proposed in prior research to both detect and exclude faulty measurements. This paper introduces a new technique for the FDE of GNSS measurements using Euclidean distance matrices. After a brief introduction to Euclidean distance matrices, both the detection and exclusion strategy is explained in detail. Euclidean distance matrix-based FDE is verified in two separate real-world data sets and proven to accurately detect and exclude GNSS faults on an average of 1.4-times faster than residual-based FDE and 70-times faster than solution separation FDE.

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