TY - GEN
T1 - Multivariate analysis for probabilistic WLAN location determination systems
AU - Youssef, Moustafa
AU - Abdallah, Mohamed
AU - Agrawala, Ashok
PY - 2005
Y1 - 2005
N2 - WLAN location determination systems are gaining increasing attention due to the value they add to wireless networks. In this paper, we present a multivariate analysis technique for enhancing the performance of WLAN location determination systems by taking the correlation between samples from the same access point into account. We show that the autocorrelation between consecutive samples from the same access point can be as high as 0.9. Giving a sequence of correlated signal strength samples from an access point, the technique estimates the user location based on the calculated probability of this sequence from the multivariate distribution. We use a linear autoregressive model to derive the multivariate distribution function for the correlated samples. Using analytical analysis, we show that the proposed technique provides better location accuracy over previous techniques especially for the highly correlated samples in a typical WLAN environment. Implementation of the technique in the Horus WLAN location determination system shows that the average system accuracy is increased by more than 64%. This significant enhancement in the accuracy of WLAN location determination systems helps increase the set of context-aware applications implemented on top of these systems.
AB - WLAN location determination systems are gaining increasing attention due to the value they add to wireless networks. In this paper, we present a multivariate analysis technique for enhancing the performance of WLAN location determination systems by taking the correlation between samples from the same access point into account. We show that the autocorrelation between consecutive samples from the same access point can be as high as 0.9. Giving a sequence of correlated signal strength samples from an access point, the technique estimates the user location based on the calculated probability of this sequence from the multivariate distribution. We use a linear autoregressive model to derive the multivariate distribution function for the correlated samples. Using analytical analysis, we show that the proposed technique provides better location accuracy over previous techniques especially for the highly correlated samples in a typical WLAN environment. Implementation of the technique in the Horus WLAN location determination system shows that the average system accuracy is increased by more than 64%. This significant enhancement in the accuracy of WLAN location determination systems helps increase the set of context-aware applications implemented on top of these systems.
UR - https://www.scopus.com/pages/publications/33749507872
U2 - 10.1109/MOBIQUITOUS.2005.41
DO - 10.1109/MOBIQUITOUS.2005.41
M3 - Conference contribution
AN - SCOPUS:33749507872
SN - 0769523757
SN - 9780769523750
T3 - MobiQuitous 2005: Second Annual International Conference on Mobile and Ubiquitous Systems -Networking and Services
SP - 353
EP - 362
BT - MobiQuitous 2005
T2 - MobiQuitous 2005: Second Annual International Conference on Mobile and Ubiquitous Systems -Networking and Services
Y2 - 17 July 2005 through 21 July 2005
ER -