2021
DOI: 10.1016/j.scs.2021.102720
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A deep learning approach for prediction of air quality index in a metropolitan city

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Cited by 120 publications
(29 citation statements)
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“…Due to such a unique trait, LSTM is suitable for processing and predicting important events with very long intervals and delays in the time series. LSTM has been successfully applied to the prediction of air quality. Forest fire data, air emissions, meteorological data, and sea ice coverage were used as input features of the LSMT model, while the historical PAH pollution data in the past 7 years (1996–2021) was learned to predict the PAH concentration in the near future (2012–2014) in the high Arctic. In comparison with the previously constructed atmospheric transport model, the obtained LSTM model has significantly improved the phenanthrene (PHE) and benzo­[ a ]­pyrene (B a P) predictions by 62.5% and 91.1%, respectively .…”
Section: Selelcted Applicatons Of Machine Learning In Environmental P...mentioning
confidence: 99%
“…Due to such a unique trait, LSTM is suitable for processing and predicting important events with very long intervals and delays in the time series. LSTM has been successfully applied to the prediction of air quality. Forest fire data, air emissions, meteorological data, and sea ice coverage were used as input features of the LSMT model, while the historical PAH pollution data in the past 7 years (1996–2021) was learned to predict the PAH concentration in the near future (2012–2014) in the high Arctic. In comparison with the previously constructed atmospheric transport model, the obtained LSTM model has significantly improved the phenanthrene (PHE) and benzo­[ a ]­pyrene (B a P) predictions by 62.5% and 91.1%, respectively .…”
Section: Selelcted Applicatons Of Machine Learning In Environmental P...mentioning
confidence: 99%
“…[13] This instructed, associate degree innovative, unsupervised Deep learning motor-assisted reconstructed software engineer (UDR-RC) that optimize the info throughout pre-processing at on-nodule wearable sensors to induce reduced computation time. [14] Implementation of machine-learning-based patient processing is influenced by heterogeneous patient knowledge and inefficient in analysing feature-learning ways. [15] This works transform such every which way ordered forward/backward firing sequence of transitions within the network into a set topological order of transition-firing in forward direction solely by exchange backward firing transitions into equivalent forward firing transitions.…”
Section: Related Workmentioning
confidence: 99%
“…Machine learning has been used to solve the prediction and classification problems. For example, Support Vector Regression (SVR) and Long Short-Term Memory (LSTM) based deep learning model were combined to establish the deep learning method for predicting the AQI values accurately, which helped to plan the metropolitan city for sustainable development 21 . And LSTM Recurrent Neural Network was also utilized to preform the stock market prediction 22 .…”
Section: Introductionmentioning
confidence: 99%