Title :
Appliance of optimized Bayesian networks for location estimation [mobile radio applications]
Author :
Kunczier, Harald ; Anegg, Hermann
Author_Institution :
Telecommun. Res. Center Vienna, Austria
Abstract :
Location based mobile applications will yield high profitability in urban areas with their high density of customers. In these types of areas, localization techniques based on runtime measurements often lack performance due to multipath propagation. We present a positioning method especially suited for heavy urban areas based on power-level measurements or any other location dependent parameter of the serving and adjacent cells. The main focus of this paper is on improving the performance of the Bayesian-network-based algorithm by utilizing prior knowledge gained from neighboring positions. Analysis of measurements performed in the inner city of Vienna reveals that utilizing the prior information halves the number of necessary samples and concurrently improves the accuracy.
Keywords :
belief networks; cellular radio; mobility management (mobile radio); multipath channels; GSM; adjacent cells; heavy urban area; high customer density urban areas; localization accuracy; location based applications; location dependent parameters; mobile radio location estimation; multipath propagation; neighboring positions prior knowledge; optimized Bayesian networks; power-level measurements; runtime measurements; serving cell; Area measurement; Bayesian methods; Home appliances; Information analysis; Land mobile radio; Performance analysis; Position measurement; Profitability; Runtime; Urban areas;
Conference_Titel :
Vehicular Technology Conference, 2004. VTC 2004-Spring. 2004 IEEE 59th
Print_ISBN :
0-7803-8255-2
DOI :
10.1109/VETECS.2004.1391409