Applications of machine learning and IoT for Outdoor Air Pollution Monitoring and Prediction: A Systematic Literature Review (2401.01788v1)
Abstract: According to the World Health Organization (WHO), air pollution kills seven million people every year. Outdoor air pollution is a major environmental health problem affecting low, middle, and high-income countries. In the past few years, the research community has explored IoT-enabled machine learning applications for outdoor air pollution prediction. The general objective of this paper is to systematically review applications of machine learning and Internet of Things (IoT) for outdoor air pollution prediction and the combination of monitoring sensors and input features used. Two research questions were formulated for this review. 1086 publications were collected in the initial PRISMA stage. After the screening and eligibility phases, 37 papers were selected for inclusion. A cost-based analysis was conducted on the findings to highlight high-cost monitoring, low-cost IoT and hybrid enabled prediction. Three methods of prediction were identified: time series, feature-based and spatio-temporal. This review's findings identify major limitations in applications found in the literature, namely lack of coverage, lack of diversity of data and lack of inclusion of context-specific features. This review proposes directions for future research and underlines practical implications in healthcare, urban planning, global synergy and smart cities.
- World Health Organization. "92% of the world’s population exposed to unsafe levels of air pollution." ScienceDaily. ScienceDaily, 27 September 2016.
- World Health Organization. Air pollution is one of the biggest environmental threats to human health, alongside climate change,. 22 September 2021. https://www.who.int/news/item/22-09-2021-new-who-global-air-quality-guidelines-aim-to-save-millions-of-lives-from-air-pollution
- Health Effects Institute. 2020. State of Global Air 2020. Special Report. Boston, MA:Health Effects Institute.
- H.-P. Hsieh, S.-D. Lin, and Y. Zheng, “Inferring air quality for station location recommendation based on urban big data,” in Proc. 21th ACM SIGKDD Int. Conf. Knowl. Discovery Data Mining, 2015, pp. 437–446.
- Rybarczyk Y, Zalakeviciute R. machine learning Approaches for Outdoor Air Quality Modelling: A Systematic Review. Applied Sciences. 2018; 8(12):2570. https://doi.org/10.3390/app8122570
- Lemeš, S. (2018). Air Quality Index (AQI)—comparative study and assesment of an appropriate model For B&H. In 2th Scientific/Research Symposium with International Participation ‘Metallic And Nonmetallic Materials.