Air Quality Prediction Using Machine Learning
Abstract
The main basis of human survival is
Air. The Air Quality Index is the value that
qualitatively describes the condition of air
quality. The greater the Air Quality Index, the
more threatening risk to human health and
environment. In Sri Lanka, poor air quality is a
huge concern, especially in cities like Colombo
and Kandy. Accurate Air Quality prediction will
minimize health issues that can occur due to air
pollution. This research has attempted to identify
the best-suited machine learning algorithmbased
approach to predict accurate air quality
based on PM2.5 concentration in Colombo. In
order to identify the most influenced air pollution
concentrations for the air quality prediction
purpose, correlation analysis was conducted. In
this research, PM2.5 was predicted in Colombo
city using 4 related air pollution concentrations
including SO2 concentration, NO2 concentration,
PM2.5 concentration & PM10 concentration. In
order to get higher prediction accuracy, the
gathered dataset was pre-processed by
prediction beforehand. The prediction model
trained and tested using machine learning
algorithms such as KNN, Multiple Linear
Regression, Support Vector Machines, and
Random Forest. Multiple Regression was
identified as the most suited prediction model
which was able to gain 94% higher accuracy.
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