| dc.description.abstract |
Background: Air pollution contributes to the most severe environmental and
health problems due to industrial emissions and atmosphere contamination,
produced by climate and tra c factors, fossil fuel combustion, and industrial
characteristics. Because this is a global issue, several nations have established
control of air pollution stations in various cities to monitor pollutants like
Nitrogen Dioxide (NO2), Ozone (O3), Sulfur Dioxide (SO2), Carbon Monoxide
(CO), Particulate Matter (PM2.5, PM10), to notify inhabitants when pollution levels
surpass the quality threshold. With the rise in air pollution, it is necessary to
construct models to capture data on air pollutant concentrations. Compared
to other parts of the world, Africa has a scarcity of reliable air quality sensors
for monitoring and predicting Particulate Matter (PM2.5). This demonstrates the
possibility of extending research in air pollution control.
Methods: Machine learning techniques were utilized in this study to identify
air pollution in terms of time, cost, and e ciency so that dierent scenarios
and systems may select the optimal way for their needs. To assess and forecast
the behavior of Particulate Matter (PM2.5), this study presented a Machine
Learning approach that includes Cat Boost Regressor, Extreme Gradient Boosting
Regressor, RandomForest Classifier, Logistic Regression, Support VectorMachine,
K-Nearest Neighbor, and Decision Tree.
Results: Cat Boost Regressor and Extreme Gradient Boosting Regressor were
implemented to predict the latest PM2.5 concentrations for South African Cities
with recording stations using past dated recordings, then the best performing
model between the two is used to predict PM2.5 concentrations for South African
Cities with no recording stations and also to predict future PM2.5 concentrations
for South African Cities. K-Nearest Neighbor, Logistic Regression, Support Vector
Machine, Decision Tree, and RandomForest Classifier were implemented to create
a system predicting the Air Quality Index (AQI) Status.
Conclusion: This study investigated various machine learning techniques for air
pollution to analyze and predict air pollution behavior regarding air quality and air
pollutants, detecting which areas are most aected in South African cities. |
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