A review on emerging artificial intelligence (AI) techniques for air pollution forecasting: Fundamentals, application and performance

A Masood, K Ahmad - Journal of Cleaner Production, 2021 - Elsevier
Accurate air quality forecasting is critical for systematic pollution control as well as public
health and wellness. Most of the traditional forecasting techniques have shown inconsistent …

Artificial intelligence technologies for forecasting air pollution and human health: a narrative review

S Subramaniam, N Raju, A Ganesan, N Rajavel… - Sustainability, 2022 - mdpi.com
Air pollution is a major issue all over the world because of its impacts on the environment
and human beings. The present review discussed the sources and impacts of pollutants on …

An integrated 3D CNN-GRU deep learning method for short-term prediction of PM2. 5 concentration in urban environment

M Faraji, S Nadi, O Ghaffarpasand, S Homayoni… - Science of The Total …, 2022 - Elsevier
This study proposes a new model for the spatiotemporal prediction of PM 2.5 concentration
at hourly and daily time intervals. It has been constructed on a combination of three …

[HTML][HTML] Predicting the number of dusty days around the desert wetlands in southeastern Iran using feature selection and machine learning techniques

Z Ebrahimi-Khusfi, AR Nafarzadegan, F Dargahian - Ecological Indicators, 2021 - Elsevier
In the past decades, some desert wetlands have become critical regions for dust production
in the arid and semi-arid regions of the world. Accurate prediction of the number of dusty …

Air quality monitoring based on chemical and meteorological drivers: Application of a novel data filtering-based hybridized deep learning model

M Jamei, M Ali, A Malik, M Karbasi, E Sharma… - Journal of Cleaner …, 2022 - Elsevier
Particulate matter (PM) or particle pollution include the tiny particles of dust and fly ash
particles are expelled from coal-burning power plants. Coal combustion is an extremely …

A hybrid spatiotemporal deep model based on CNN and LSTM for air pollution prediction

S Tsokov, M Lazarova, A Aleksieva-Petrova - Sustainability, 2022 - mdpi.com
Nowadays, air pollution is an important problem with negative impacts on human health and
on the environment. The air pollution forecast can provide important information to all …

Data-driven predictive modeling of PM2.5 concentrations using machine learning and deep learning techniques: a case study of Delhi, India

A Masood, K Ahmad - Environmental Monitoring and Assessment, 2023 - Springer
The present study intends to use machine learning (ML) and deep learning (DL) models to
forecast PM2. 5 concentration at a location in Delhi. For this purpose, multi-layer feed …

Machine learning methods to forecast the concentration of PM10 in Lublin, Poland

J Kujawska, M Kulisz, P Oleszczuk, W Cel - Energies, 2022 - mdpi.com
Air pollution has a major impact on human health, especially in cities, and elevated
concentrations of PMx are responsible for a large number of premature deaths each year …

On the predictability of short-lived particulate matter around a cement plant in Kerman, Iran: machine learning analysis

F Borhani, M Shafiepour Motlagh, AH Ehsani… - International Journal of …, 2023 - Springer
One of the greatest environmental risks in the cement industry is particulate matter emission
(ie, PM2. 5 and PM10). This paper aims to develop descriptive-analytical solutions for …

A comparison of machine learning methods to forecast tropospheric ozone levels in Delhi

EK Juarez, MR Petersen - Atmosphere, 2021 - mdpi.com
Ground-level ozone is a pollutant that is harmful to urban populations, particularly in
developing countries where it is present in significant quantities. It greatly increases the risk …