2023
DOI: 10.3390/atmos14040760
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Big-Data-Driven Machine Learning for Enhancing Spatiotemporal Air Pollution Pattern Analysis

Abstract: Air pollution is an important problem for public health. The spatiotemporal analysis is a crucial step for understanding the complex characteristics of air pollution. Using many sensors and high-resolution time-step observations makes this task a big data challenge. In this study, unsupervised machine learning algorithms were applied to analyze spatiotemporal patterns of air pollution. The analysis was conducted using PM10 big data collected from almost 100 sensors located in Krakow, over a period of one year,… Show more

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Cited by 13 publications
(14 citation statements)
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“…Between 2014 and 2019, studies on air pollution control have highlighted the significance of understanding the spatiotemporal patterns of outbreaks for comprehending their transmission mechanisms and formulating effective environmental policies. By quantifying spatial patterns and movements of air pollution at annual, daily, and hourly scales, it becomes possible to gain a better insight into potential driving factors [69][70][71].…”
Section: Discussionmentioning
confidence: 99%
“…Between 2014 and 2019, studies on air pollution control have highlighted the significance of understanding the spatiotemporal patterns of outbreaks for comprehending their transmission mechanisms and formulating effective environmental policies. By quantifying spatial patterns and movements of air pollution at annual, daily, and hourly scales, it becomes possible to gain a better insight into potential driving factors [69][70][71].…”
Section: Discussionmentioning
confidence: 99%
“…This has been demonstrated through numerous studies in urban settings, including Krakow. In the previous study 20 unsupervised machine techniques were utilized to examine the spatiotemporal distribution of air pollution, employing PM10 data gathered hourly from sensors across Krakow over a year. By applying clustering methods, the study uncovered significant disparities in the average and peak concentrations of pollutants.…”
Section: Introductionmentioning
confidence: 99%
“…However, few worldwide studies have conducted in-depth analysis of the characteristics and causes of PM 2.5 -O 3 complex pollution, and the findings of our study could therefore fill the gap in the related fields. Currently, many studies have utilized machine learning techniques and big data analysis to identify hotspots, cold spots, and air pollution patterns in air pollution research [48]. Kovacs and Haidu [49] used principal component analysis of multidimensional satellite images to study NO 2 changes, and modeled tropospheric NO 2 concentrations by using developed principal component analysis models for air pollution estimation, fully demonstrating the reliability of principal component analysis in identifying and predicting patterns of air pollution changes.…”
Section: Introductionmentioning
confidence: 99%