Prediction of Atmospheric Pollution Using Hybrid Machine Learning Algorithms: A Review

Authors

DOI:

https://doi.org/10.3991/itdaf.v3i2.56455

Keywords:

Atmospheric Pollution Prediction, Machine Learning, Hybrid Models, Air Quality Forecasting, Data Preprocessing

Abstract


Accurate prediction of atmospheric pollution is critical for public health, guiding environmental policies, and mitigating the adverse effects of air pollution. Traditional statistical models and standalone machine learning algorithms, while useful, often fail to capture the complex, nonlinear interactions between multiple factors influencing air quality, such as meteorological conditions, traffic emissions, and industrial activities. This paper presents a comprehensive review of machine learning techniques applied to air pollution prediction, with a special focus on the growing trend of hybrid models (HM). In addition, this paper highlights future research directions centered on developing adaptive HM capable of integrating diverse data streams, addressing gaps in data availability, and dynamically responding to changing pollution patterns. Furthermore, the paper presents a strategy on how combining machine learning algorithms can enhance predictive accuracy and robustness by leveraging the unique capabilities of each model. The findings from this study aim to provide a foundation for future research and practical applications in air quality management, ultimately contributing to more effective pollution forecasting and control strategies.

Author Biographies

Nikolaos Zouglis, Department of Chemistry, University of Ioannina, Ioannina, Greece

Nikolaos Zouglis obtained his bachelor’s degree in mechanical engineering from the Technological Educational Institute of Patras. He also obtained his Master of Science Degree in Information and Communication Systems from the Open University of Cyprus. He works as a mechanical engineer in the technical department at the General Hospital of Patras. Simultaneously, he is studying Information Technology at the Hellenic Open University and is pursuing his PhD at the University of Ioannina. His research interests are focused on Machine Learning and Artificial Intelligence algorithms.

Angelos Kalampounias, Department of Chemistry, University of Ioannina, Ioannina, Greece; University Research Center of Ioannina (URCI), Ioannina, Greece

Angelos G. Kalampounias is both a Chemical Engineer and a Physicist. He currently holds the position of Full Professor of Physical Chemistry at the University of Ioannina. He earned his M.Sc. and Ph.D. in Chemical Engineering from the University of Patras. His research centers on molecular spectroscopy and ultrasonic relaxation techniques for investigating disordered systems, ultrasonically induced molecular dynamics, and reaction engineering, with a particular emphasis on establishing structure–reactivity relationships. Professor Kalampounias has authored over 120 peer-reviewed publications and has participated in numerous EU- and nationally funded projects focused on environmental monitoring. His current research focuses on the characterization of organic aerosols for environmental monitoring, the assessment of material degradation caused by pollution, and the development of mobile laboratory systems designed for on-site measurements of environmental pollutants and the evaluation of emission control technologies.

Apostolos Gkamas, Department of Chemistry, University of Ioannina, Ioannina, Greece

Apostolos Gkamas obtained his Diploma, Master Degree and Ph.D from the Computer Engineering and Informatics DepartmentOther site of Patras University (Greece)Other site. He is currently Associate Professor of Computer Applications in Department of Chemistry Other site of University of Ioannina, GreeceOther site. His research interests include Computer Networks, Telematics, Multimedia transmission, IoT, LPWAN and Applications of Machine Learning and Artificial Intelligent. More particular he is engaged in transmission of multimedia data over networks and multicast congestion control. He has published more than 130 papers in international Journals and well-known refereed conferences. He is also co-author of three books (one with subject Multimedia and Computer Networks one with subject Special Network Issues and one with subject IPv6). He has participated in various R&D project (in both EU and national) such as IST, FP6, FP7, Intereg eLearning, PENED, EPEAEK, Information Society, RESEARCH - CREATE - INNOVATE.

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Published

2025-07-21

How to Cite

Zouglis, N., Kalampounias, A., & Gkamas, A. (2025). Prediction of Atmospheric Pollution Using Hybrid Machine Learning Algorithms: A Review. IETI Transactions on Data Analysis and Forecasting (iTDAF), 3(2), pp. 4–19. https://doi.org/10.3991/itdaf.v3i2.56455

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Section

Papers