Forecasting Daily Air Quality in Northern Thailand Using Machine Learning Techniques
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- @InProceedings{Srikamdee:2019:InCIT,
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author = "Supawadee Srikamdee and Janya Onpans",
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title = "Forecasting Daily Air Quality in Northern Thailand
Using Machine Learning Techniques",
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booktitle = "2019 4th International Conference on Information
Technology (InCIT)",
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year = "2019",
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pages = "259--263",
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abstract = "The air pollution problem becomes more intense in many
countries including Thailand. It affects all sectors
such as government, industries, and local communities.
Accurate forecasts of air quality index would be useful
for strategic planning, and pollution warning. Machine
learning techniques have been applied to forecast the
air quality index (AQI) in many areas. However, most of
the existing researches proposed the forecasting model
for a specific monitoring station [7-9]. This paper
proposes the models to forecast the daily AQIs of the
entire Northern Thailand. We collected data during the
dry season (January - May) in the year 2018 - 2019,
which are the most suffering years. We compared and
analyzed the models obtained from three algorithms,
i.e., linear regression, neural networks, and genetic
programming. Based on the analysis, we recommend two
linear equations derived from linear regression and
genetic programming as the AQI forecasting models. The
results show that our two recommended equations yield
the average accuracy of 97.6percent and 78.7percent for
forecasting clean and unhealthy air quality situations
(i.e., AQI values of 0-50 and AQI values greater than
100), respectively.",
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keywords = "genetic algorithms, genetic programming",
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DOI = "doi:10.1109/INCIT.2019.8912072",
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month = oct,
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notes = "Also known as \cite{8912072}",
- }
Genetic Programming entries for
Supawadee Srikamdee
Janya Onpans
Citations