Revolutionizing Air Pollution Spikes Analysis With a Blockchain-Driven Machine Learning Framework
Publication Type
Journal Article
Publication Date (Issue Year)
2025
Journal Name
Transactions on Emerging Telecommunications Technologies
Abstract
Air pollution spikes pose significant health risks and environmental challenges that demand innovative solutions for effective analysis and mitigation. This paper introduces a groundbreaking approach to revolutionize air pollution spikes analysis using a blockchain-driven machine learning framework. Leveraging the transparency and immutability of blockchain technology, coupled with the predictive power of machine learning algorithms, our framework offers real-time monitoring, accurate prediction, and proactive management of air pollution spikes. Our framework provides comprehensive insights into air quality dynamics by integrating data from diverse sources, including IoT sensors. Furthermore, the decentralized nature of blockchain ensures data integrity and enhances trust among stakeholders, including regulatory authorities, industries, and communities. Through case studies and simulations, we demonstrated the efficacy and scalability of our framework in addressing air pollution spikes across diverse geographical regions. The Machine learning techniques for the time series model (RNNs, ARIMA, and Exponential Smoothing) were analyzed and compared using statistical metrics (Mean Absolute Error [MAE], Mean Squared Error [MSE], and R-squared [R2]). The exponential Smoothing model performed well compared to the other two models for all parameters, while both ARIMA and RNNNN models showed negative R2 values for certain pollutants, particularly SO2. For example, the PM10 scored 82.4% for R2. This research signifies a paradigm shift in air quality management, empowering stakeholders to make informed decisions and mitigate the adverse impacts of air pollution spikes on public health and the environment. This research demonstrated that machine learning and blockchain can be integrated to analyze data on air pollution spikes and predict pollutant emissions. This solution will help prevent harmful exposure to pollutants, protecting human health and the environment.
Grantee Name(s)
Dr. Nzanywayingoma FredericÂ
Project Title
Real time Assessment of the indoor air pollution in Sub-Saharan households (Case study: Rwanda rural and urban areas)
Type of Grant
Research Award
Thematic Area
ICTs Including Big Data and Artificial Intelligence
Recommended Citation
Nizeyimana, E., Hwang, J., Zirikana, J., Karikumutima, B., Mihigo, I. N., Nizeyimana, P., Hanyurwimfura, D., & Nsenga, J. (2025). Revolutionizing Air Pollution Spikes Analysis With a Blockchain-Driven Machine Learning Framework. Transactions on Emerging Telecommunications Technologies, 36 (5) https://doi.org/10.1002/ett.70143