6G Sensing Systems: From Radio Channels to Machine Learning (wECHO2)
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Examensarbete på kandidatnivå
Bachelor Thesis
Bachelor Thesis
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In the context of future 6th generation (6G) and Integrated Sensing and Communication
(ISAC) applications, this thesis explores the possibility of using data from
the S21 parameter for indoor detection of human presence in the 4 GHz to 16 GHz
frequency range. Physical measurements in Chalmers’ antenna lab were combined
with simulations in a digital twin of the lab environment to analyze how a stationary
human affects the wireless channel. The Multiple Signal Classification (MUSIC)
algorithm was applied to both physical and simulated data in order to analyze directions
of arrival (DoA) and reflections caused by human presence. The results
show that the MUSIC algorithm was able to detect changes caused by a human
in the wireless channel, although the accuracy depended on the environment, the
placement of the antennas as well as the assumed number of sources. Additionally,
a Convolutional Neural Network (CNN) was trained on simulated and measured
data in several dataset combinations. As a result it could be observed that combining
simulated and real data in training improved the models ability to adapt to
realistic environments, while training on only simulated data resulted in reduced
transferability to the real measurements.
