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Data Augmentation Strategies for Improved PM2.5 Forecasting Using Transformer Architectures
by
Yang, Chaowei
, Pan, Phoebe
, Malarvizhi, Anusha Srirenganathan
in
Air pollution
/ Air quality
/ Air quality forecasting
/ Air quality models
/ Artificial intelligence
/ Cardiovascular diseases
/ Climate change
/ cluster-based undersampling
/ Data augmentation
/ Datasets
/ digital twin
/ Digital twins
/ Environmental policies
/ Environmental policy
/ Extreme weather
/ Forecast accuracy
/ Forecasting
/ Forecasting models
/ Health risks
/ Outdoor air quality
/ Particulate matter
/ PM2.5 forecasting
/ Public health
/ Resampling
/ Respiratory diseases
/ Respiratory disorders
/ Sampling
/ Suspended particulate matter
/ Transformer model
/ Wildfires
2025
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Data Augmentation Strategies for Improved PM2.5 Forecasting Using Transformer Architectures
by
Yang, Chaowei
, Pan, Phoebe
, Malarvizhi, Anusha Srirenganathan
in
Air pollution
/ Air quality
/ Air quality forecasting
/ Air quality models
/ Artificial intelligence
/ Cardiovascular diseases
/ Climate change
/ cluster-based undersampling
/ Data augmentation
/ Datasets
/ digital twin
/ Digital twins
/ Environmental policies
/ Environmental policy
/ Extreme weather
/ Forecast accuracy
/ Forecasting
/ Forecasting models
/ Health risks
/ Outdoor air quality
/ Particulate matter
/ PM2.5 forecasting
/ Public health
/ Resampling
/ Respiratory diseases
/ Respiratory disorders
/ Sampling
/ Suspended particulate matter
/ Transformer model
/ Wildfires
2025
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Do you wish to request the book?
Data Augmentation Strategies for Improved PM2.5 Forecasting Using Transformer Architectures
by
Yang, Chaowei
, Pan, Phoebe
, Malarvizhi, Anusha Srirenganathan
in
Air pollution
/ Air quality
/ Air quality forecasting
/ Air quality models
/ Artificial intelligence
/ Cardiovascular diseases
/ Climate change
/ cluster-based undersampling
/ Data augmentation
/ Datasets
/ digital twin
/ Digital twins
/ Environmental policies
/ Environmental policy
/ Extreme weather
/ Forecast accuracy
/ Forecasting
/ Forecasting models
/ Health risks
/ Outdoor air quality
/ Particulate matter
/ PM2.5 forecasting
/ Public health
/ Resampling
/ Respiratory diseases
/ Respiratory disorders
/ Sampling
/ Suspended particulate matter
/ Transformer model
/ Wildfires
2025
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Data Augmentation Strategies for Improved PM2.5 Forecasting Using Transformer Architectures
Journal Article
Data Augmentation Strategies for Improved PM2.5 Forecasting Using Transformer Architectures
2025
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Overview
Breathing in fine particulate matter of diameter less than 2.5 µm (PM2.5) greatly increases an individual’s risk of cardiovascular and respiratory diseases. As climate change progresses, extreme weather events, including wildfires, are expected to increase, exacerbating air pollution. However, models often struggle to capture extreme pollution events due to the rarity of high PM2.5 levels in training datasets. To address this, we implemented cluster-based undersampling and trained Transformer models to improve extreme event prediction using various cutoff thresholds (12.1 µg/m3 and 35.5 µg/m3) and partial sampling ratios (10/90, 20/80, 30/70, 40/60, 50/50). Our results demonstrate that the 35.5 µg/m3 threshold, paired with a 20/80 partial sampling ratio, achieved the best performance, with an RMSE of 2.080, MAE of 1.386, and R2 of 0.914, particularly excelling in forecasting high PM2.5 events. Overall, models trained on augmented data significantly outperformed those trained on original data, highlighting the importance of resampling techniques in improving air quality forecasting accuracy, especially for high-pollution scenarios. These findings provide critical insights into optimizing air quality forecasting models, enabling more reliable predictions of extreme pollution events. By advancing the ability to forecast high PM2.5 levels, this study contributes to the development of more informed public health and environmental policies to mitigate the impacts of air pollution, and advanced the technology for building better air quality digital twins.
Publisher
MDPI AG
Subject
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