Air quality prediction using CNN+LSTM-based hybrid deep learning architecture

Author(s):  
Aysenur Gilik ◽  
Arif Selcuk Ogrenci ◽  
Atilla Ozmen
IEEE Access ◽  
2021 ◽  
Vol 9 ◽  
pp. 14765-14778
Author(s):  
Ichrak Mokhtari ◽  
Walid Bechkit ◽  
Herve Rivano ◽  
Mouloud Riadh Yaici

Author(s):  
P. Parkavi ◽  
S. Rathi

Air pollution and its harm to human health has become a serious problem in many cities around the world. In recent years, research interests in measuring and predicting the quality of air around people has spiked. Since the Internet of things has been widely used in different domains to improve the quality for people by connecting multiple sensors. In this work an IOT based air pollution monitoring with prediction system is proposed. The internet of Things is a action interrelated computing devices that are given unique identifiers and the capability of exchange information over a system without anticipating that human to human or human to machine communication. The deep learning algorithm approach is to evaluate the accuracy for the prediction of air pollution. The main objective of the project is used to predict the air Quality. The large dataset works with LSTM for better air quality prediction. The prediction accuracy of air quality with LSTM, the evaluation indicator Root means square error is chosen to measure performance.


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