PREDICTION OF AIR POLLUTION USING MACHINE LEARNING
Keywords:
Linear Regression, Support Vector Machine, Decision Tree, Random Forest Method, Root Mean Square Error to predict the accuracyAbstract
Due
to
human
activities,
industrialization and urbanization air is
getting
polluted.
The major air
pollutants are CO, NO, C6H6,etc. The
concentration of air pollutants in
ambient air is governed by the
meteorological parameters such as
atmospheric wind speed, wind direction,
relative
humidity, and temperature.
Earlier techniques such as Probability,
Statistics etc. were used to predict the
quality of air, but those methods are
very complex to predict, the Machine
Learning (ML) is the better approach to
predict the air quality. With the need to
predict
air
relative
humidity
by
considering various parameters such as
CO,
Tin
oxide,
nonmetallic
hydrocarbons, Benzene, Titanium, NO,
Tungsten, Indium oxide, Temperature
etc, approach uses Linear Regression
(LR), Support Vector Machine (SVM),
Decision Tree (DT), Random Forest
Method (RF) to predict the Relative
humidity of air and uses Root Mean
Square Error to predict the accuracy.
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