Abstract
Using communication signals for radar applications has been a major area of
research in radar engineering. In the recent years, due to the widely available
wireless signals, a new area of research called commensal radars has emerged.
Commensal radars use available wireless Radio Frequency (RF) signals to detect
and track targets of interest. This is achieved by placing two antennas, one
towards the transmitting base station and the other towards the surveillance
area. The signal received by these two antennas are correlated to determine the
location and velocity of the target.
When a signal passes through a channel, it reects o_ the obstacles within its
path. These reections usually degrade quality of the signal and cause interference
to the telecommunication systems. To mitigate the e_ects of the channel
on a signal these systems transmit a known bit sequence within each frame.
Our goal, with this thesis, is to design and implement a working prototype of a
novel architecture for the commensal radar system, which uses these known bit
sequences to extract the channel information and determine events of interest.
The major novelties of the system are as follows. Firstly, this system will be
built upon existing communication systems using Software De_ned Radio (SDR)
technology. Secondly, this design eliminates the need for a reference antenna,
which reduces the cost of the system and creates an opportunity to make the
system portable. We name this system Communication-Sensing (CommSense).
Since, our plan is to use Global System for Mobile Communication (GSM) as
the parent system for the prototype development, we decide to update the name
to GSM based Communication-Sensing (GSM-CommSense) system.
This thesis begins with theoretical analysis of the feasibility of the GSM-CommSense
system. First of all, we perform a link budget analysis to determine the power
requirements for the system. Then we calculate the ambiguity function and
Cram_er-Rao Lower Bound (CRLB) for a two-path received signal model. With
encouraging theoretical results, we design a prototype of the system that can
capture real GSM base station broadcast signals. After the design of the GSMCommSense
system, we capture channel data from multiple locations with varying
environmental conditions. The aim for this set of experiment is to be able
to distinguish between di_erent environmental conditions. Then, we performed
statistical analysis on the data by means of Probability Density Function (PDF)
_tting, a goodness-of-_t test called chi-square test and a clustering algorithm
called Principal Components Analysis (PCA). We have presented the results
from each analysis and discussed them in detail. Upon, receiving positive results
in each step we have decided to move towards using learning algorithms
to categorise the data captured by the system. We have compared two widely
accepted supervised learning algorithms, called Support Vector Machines (SVM)
and Multi-Layer Perceptron (MLP). The results showed that with the current
hardware capabilities of the system and the amount of data available per GSM
frame, the performance of SVM is better than MLP. Thus, we have used SVM
to classify two events of detection and classi_cation across a wall. We have
presented our _ndings and discussed the results in detail.
We conclude our current work and provide scope for future work in development
and analysis of the GSM-CommSense system.
Bhatta, A (2021). GSM based Communication-Sensor (CommSense) System. Afribary. Retrieved from https://track.afribary.com/works/gsm-based-communication-sensor-commsense-system
Bhatta, Abhishek "GSM based Communication-Sensor (CommSense) System" Afribary. Afribary, 15 May. 2021, https://track.afribary.com/works/gsm-based-communication-sensor-commsense-system. Accessed 23 Nov. 2024.
Bhatta, Abhishek . "GSM based Communication-Sensor (CommSense) System". Afribary, Afribary, 15 May. 2021. Web. 23 Nov. 2024. < https://track.afribary.com/works/gsm-based-communication-sensor-commsense-system >.
Bhatta, Abhishek . "GSM based Communication-Sensor (CommSense) System" Afribary (2021). Accessed November 23, 2024. https://track.afribary.com/works/gsm-based-communication-sensor-commsense-system