Please use this identifier to cite or link to this item: https://hdl.handle.net/10321/5464
Title: Predicting the impact of IoT devices on Radio Frequency Noise in South African environments using machine learning
Authors: Ingala, Dominique Guelord Kumamputu 
Keywords: Radio Frequency (RF) devices;Internet of Things (IoT);RF-operated applications
Issue Date: May-2024
Abstract: 
The increasing number of Radio Frequency (RF) devices proliferating in our environment inspired
this research. Forecasts suggest that the Internet of Things (IoT) industry will populate society with
an ever-increasing number of RF-operated applications such as smart homes, remote surveillance,
intelligent vehicles, tracking, smart grid, remote metering, innovative health, and smart cities. This
research aimed to investigate whether the presence of IoT-like radiations could influence the levels
of ambient RF noise. With that in mind, the study required surveying by collecting real-world
ambient radio noise data in target urban, suburban, and industrial environments over the Industrial
Scientific Medical (ISM) bands, such as 433 MHz, 868 MHz, and 2.4 GHz. At the time of this
survey, the IoT industry was still in the infancy stage in South Africa. Therefore, the exercise
necessitated two series of survey campaigns. The first set of measurements had as its primary
mission to assess the existing levels of ambient RF noise in selected candidate sites considering
their early IoT development phase. Subsequently, this phase helped to verify and validate that the
research deployed appropriate equipment, hardware, and software for collecting environmental
radio noise data. This study designed a Radio Noise Surveying System (RNSS) using softwaredefined radio techniques with the Universal Software Radio Peripheral (USRP) and the GNU
Radio platforms as part of the equipment. The simulation and test results agreed that the RNSS
performed adequately, and that all system was suitable for radio noise surveying. This first phase
also helped to confirm that the post-processing methods of importing and transforming raw data
into clean data and the applied calibration techniques were correct. Exploratory data analysis with
these baseline measurements revealed ambient radio noise data characteristics, for example, their
extensive data volume. One of the remarkable findings was that, out of six candidate sites, the
Steeve Biko Campus showed the highest levels of ambient radio noise compared to the rest,
irrespective of frequency bands.
The second measurement trial, over five candidate sites, envisaged assessing the direct contribution
of IoT operations. Therefore, the exercise necessitated environments populated with IoT devices.
Hence, this research created IoT radio noise generators (ING) to produce intentional RF emissions
in the ISM bands to imitate the presence of IoT devices in selected environments. The research
underwent a complete product design cycle covering conceptualisation, component selection,
schematic and PCB design, board assembly, firmware development, and functional testing. Survey
campaigns deployed forty-five ING units, of which fifteen covered each of the three frequencies of
interest. Data analysis exploited the elements of descriptive statistics to understand the
characteristic nature of data emanating from ambient RF measurements. Concerning the central question of this research, exploratory results revealed that 80% of analysed cases show an increase
in environmental radio noise levels, with a conclusion that ambient radio noise levels were directly
proportional to radio activities in given environments. This finding forewarns that the proliferating
presence of IoT products will directly influence ambient radio noise levels.
Finally, this study applied Machine Learning techniques to develop linear regression models to
predict the levels of ambient RF noise. The research developed a computer application as Radio
Noise Predictor (RNP) software installable in Windows PC. Based on models produced in this
research, the RNP application allows interested users to estimate the radio noise levels from a
selected environment and frequency.
Description: 
A Thesis submitted to the Doctor of Philosophy in Electronic and Computer Engineering, Durban University of Technology, Durban, South Africa, 2024.
URI: https://hdl.handle.net/10321/5464
DOI: https://doi.org/10.51415/10321/5464
Appears in Collections:Theses and dissertations (Engineering and Built Environment)

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