Application of channel modeling for indoor localization using TOA and RSS
Abstract (Summary)
Recently considerable attention has been paid to indoor geolocation using wireless local
area networks (WLAN) and wireless personal area networks (WPAN) devices. As more
applications using these technologies are emerging in the market, the need for accurate
and reliable localization increases. In response to this need, a number of technologies and
associated algorithms have been introduced in the literature. These algorithms resolve the
location either by using estimated distances between a mobile station (MS) and at least
three reference points (via triangulation) or pattern recognition through radio frequency
(RF) fingerprinting. Since RF fingerprinting, which requires on site measurements is a
time consuming process, it is ideal to replace this procedure with the results obtained
from radio channel modeling techniques. Localization algorithms either use the received
signal strength (RSS) or time of arrival (TOA) of the received signal as their localization
metric. TOA based systems are sensitive to the available bandwidth, and also to the
occurrence of undetected direct path (UDP) channel conditions, while RSS based
systems are less sensitive to the bandwidth and more resilient to UDP conditions.
Therefore, the comparative performance evaluation of different positioning systems is a
multifaceted and challenging problem.
This dissertation demonstrates the viability of radio channel modeling techniques to
eliminate the costly fingerprinting process in pattern recognition algorithms by
introducing novel ray tracing (RT) assisted RSS and TOA based algorithms. Two sets of
empirical data obtained by radio channel measurements are used to create a baseline for
comparative performance evaluation of localization algorithms. The first database is
obtained by WiFi RSS measurements in the first floor of the Atwater Kent laboratory; an
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academic building on the campus of WPI; and the other by ultra wideband (UWB)
channel measurements in the third floor of the same building. Using the results of
measurement campaign, we specifically analyze the comparative behavior of TOA- and
RSS-based indoor localization algorithms employing triangulation or pattern recognition
with different bandwidths adopted in WLAN and WPAN systems. Finally, we introduce
a new RT assisted hybrid RSS-TOA based algorithm which employs neural networks.
The resulting algorithm demonstrates a superior performance compared to the
conventional RSS and TOA based algorithms in wideband systems.
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Bibliographical Information:
Advisor:
School:Worcester Polytechnic Institute
School Location:USA - Massachusetts
Source Type:Master's Thesis
Keywords:indoor geolocation systems radio frequency wireless communication
ISBN:
Date of Publication: