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Design and Enhancement of a Fog-Enabled Air Quality Monitoring and Prediction System: An Optimized Lightweight Deep Learning Model for a Smart Fog Environmental Gateway
by
Velu, Anantha Narayanan
, Pazhanivel, Divya Bharathi
, Palaniappan, Bagavathi Sivakumar
in
Air pollution
/ Air quality
/ air quality forecasting
/ air quality monitoring
/ Decision making
/ fog computing
/ fog intelligence
/ internet of things
/ Outdoor air quality
/ Smart cities
/ smart fog environmental gateway
2024
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Design and Enhancement of a Fog-Enabled Air Quality Monitoring and Prediction System: An Optimized Lightweight Deep Learning Model for a Smart Fog Environmental Gateway
by
Velu, Anantha Narayanan
, Pazhanivel, Divya Bharathi
, Palaniappan, Bagavathi Sivakumar
in
Air pollution
/ Air quality
/ air quality forecasting
/ air quality monitoring
/ Decision making
/ fog computing
/ fog intelligence
/ internet of things
/ Outdoor air quality
/ Smart cities
/ smart fog environmental gateway
2024
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Design and Enhancement of a Fog-Enabled Air Quality Monitoring and Prediction System: An Optimized Lightweight Deep Learning Model for a Smart Fog Environmental Gateway
by
Velu, Anantha Narayanan
, Pazhanivel, Divya Bharathi
, Palaniappan, Bagavathi Sivakumar
in
Air pollution
/ Air quality
/ air quality forecasting
/ air quality monitoring
/ Decision making
/ fog computing
/ fog intelligence
/ internet of things
/ Outdoor air quality
/ Smart cities
/ smart fog environmental gateway
2024
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Design and Enhancement of a Fog-Enabled Air Quality Monitoring and Prediction System: An Optimized Lightweight Deep Learning Model for a Smart Fog Environmental Gateway
Journal Article
Design and Enhancement of a Fog-Enabled Air Quality Monitoring and Prediction System: An Optimized Lightweight Deep Learning Model for a Smart Fog Environmental Gateway
2024
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Overview
Effective air quality monitoring and forecasting are essential for safeguarding public health, protecting the environment, and promoting sustainable development in smart cities. Conventional systems are cloud-based, incur high costs, lack accurate Deep Learning (DL)models for multi-step forecasting, and fail to optimize DL models for fog nodes. To address these challenges, this paper proposes a Fog-enabled Air Quality Monitoring and Prediction (FAQMP) system by integrating the Internet of Things (IoT), Fog Computing (FC), Low-Power Wide-Area Networks (LPWANs), and Deep Learning (DL) for improved accuracy and efficiency in monitoring and forecasting air quality levels. The three-layered FAQMP system includes a low-cost Air Quality Monitoring (AQM) node transmitting data via LoRa to the Fog Computing layer and then the cloud layer for complex processing. The Smart Fog Environmental Gateway (SFEG) in the FC layer introduces efficient Fog Intelligence by employing an optimized lightweight DL-based Sequence-to-Sequence (Seq2Seq) Gated Recurrent Unit (GRU) attention model, enabling real-time processing, accurate forecasting, and timely warnings of dangerous AQI levels while optimizing fog resource usage. Initially, the Seq2Seq GRU Attention model, validated for multi-step forecasting, outperformed the state-of-the-art DL methods with an average RMSE of 5.5576, MAE of 3.4975, MAPE of 19.1991%, R2 of 0.6926, and Theil’s U1 of 0.1325. This model is then made lightweight and optimized using post-training quantization (PTQ), specifically dynamic range quantization, which reduced the model size to less than a quarter of the original, improved execution time by 81.53% while maintaining forecast accuracy. This optimization enables efficient deployment on resource-constrained fog nodes like SFEG by balancing performance and computational efficiency, thereby enhancing the effectiveness of the FAQMP system through efficient Fog Intelligence. The FAQMP system, supported by the EnviroWeb application, provides real-time AQI updates, forecasts, and alerts, aiding the government in proactively addressing pollution concerns, maintaining air quality standards, and fostering a healthier and more sustainable environment.
Publisher
MDPI AG
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