Relative kinematics of an anchorless network
Raj Thilak Rajan, Geert Leus, Alle-Jan van der Veen

TL;DR
This paper introduces a novel data model and recursive solutions for estimating the relative positions and velocities of mobile nodes in an anchorless network using time-varying distance measurements, addressing the challenge of localizing moving nodes without fixed references.
Contribution
It develops a new data model linking time-varying distance measurements to relative kinematics and provides closed-form recursive estimators for these parameters in anchorless mobile networks.
Findings
Proposed a new data model for time-varying EDMs in mobile networks.
Derived closed-form recursive estimators for relative positions and velocities.
Performed simulations validating the effectiveness of the estimators.
Abstract
Estimating the location of N coordinates in a P dimensional Euclidean space from pairwise distances (or proximity measurements), is a principal challenge in a wide variety of fields. Conventionally, when localizing a static network of immobile nodes, non-linear dimensional reduction techniques are applied on the measured Euclidean distance matrix (EDM) to obtain the relative coordinates upto a rotation and translation. In this article, we focus on an anchorless network of mobile nodes, where the distance measurements between the mobile nodes are time-varying in nature. Furthermore, in an anchorless network the absolute knowledge of any node positions, motion or reference frame is absent. We derive a novel data model which relates the time-varying EDMs to the time-varying relative positions of an anchorless network. Using this data model, we estimate the relative position, relative…
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