Error estimation for the linearized auto-localization algorithm

Sensors (Basel). 2012;12(3):2561-81. doi: 10.3390/s120302561. Epub 2012 Feb 24.

Abstract

The Linearized Auto-Localization (LAL) algorithm estimates the position of beacon nodes in Local Positioning Systems (LPSs), using only the distance measurements to a mobile node whose position is also unknown. The LAL algorithm calculates the inter-beacon distances, used for the estimation of the beacons' positions, from the linearized trilateration equations. In this paper we propose a method to estimate the propagation of the errors of the inter-beacon distances obtained with the LAL algorithm, based on a first order Taylor approximation of the equations. Since the method depends on such approximation, a confidence parameter τ is defined to measure the reliability of the estimated error. Field evaluations showed that by applying this information to an improved weighted-based auto-localization algorithm (WLAL), the standard deviation of the inter-beacon distances can be improved by more than 30% on average with respect to the original LAL method.

Keywords: auto-calibration; auto-localization; differential sensitivity analysis; local positioning systems; uncertainty propagation.

Publication types

  • Research Support, Non-U.S. Gov't