Title :
Hybrid RF Mapping and Kalman Filtered Spring Relaxation for Sensor Network Localization
Author :
Seet, Boon-Chong ; Zhang, Qing ; Foh, Chuan Heng ; Fong, Alvis C M
Author_Institution :
Dept. of Electr. & Electron. Eng., Auckland Univ. of Technol., Auckland, New Zealand
fDate :
5/1/2012 12:00:00 AM
Abstract :
An accurate and low-cost hybrid solution to the problem of autonomous self-localization in wireless sensor networks (WSN) is presented. The solution is designed to perform robustly under challenging radio propagation conditions in mind, while requiring low deployment efforts, and utilizing only low-cost hardware and light-weight distributed algorithms for location computation. Our solution harnesses the strengths of two approaches for environments with complex propagation characteristics: RF mapping to provide an initial estimate of each sensor´s position based on a coarse-grain RF map acquired with minimal efforts; and a cooperative light-weight spring relaxation technique for each sensor to refine its estimate using Kalman filtered inter-node distance measurements. Using Kalman filtering to pre-process noisy distance measurements inherent in complex propagation environments, is found to have significant positive impacts on the subsequent accuracy and the convergence of our spring relaxation algorithm. Through extensive simulations using realistic settings and real data set, we show that our approach is a practical localization solution which can achieve sub-meter accuracy and fast convergence under harsh propagation conditions, with no specialized hardware or significant efforts required to deploy.
Keywords :
Kalman filters; distance measurement; wireless sensor networks; Kalman filtered spring relaxation; autonomous self-localization; cooperative light-weight spring relaxation technique; data set; harsh propagation conditions; hybrid RF mapping; light-weight distributed algorithms; location computation; low-cost hybrid solution; noisy distance measurements; radio propagation conditions; sensor network localization; spring relaxation algorithm; sub-meter accuracy; wireless sensor networks; Accuracy; Estimation; Force; Kalman filters; Radio frequency; Sensors; Springs; Kalman filtering; radio frequency mapping; self localization; spring relaxation; wireless sensor networks;
Journal_Title :
Sensors Journal, IEEE
DOI :
10.1109/JSEN.2011.2173190