Big-Data-Driven Machine Learning for Enhancing Spatiotemporal Air Pollution Pattern Analysis

被引:13
|
作者
Zareba, Mateusz [1 ]
Dlugosz, Hubert [1 ]
Danek, Tomasz [1 ]
Weglinska, Elzbieta [1 ]
机构
[1] AGH Univ Sci & Technol, Fac Geol Geophys & Environm Protect, Dept Geoinformat & Appl Comp Sci, PL-30059 Krakow, Poland
关键词
big data; machine learning; spatiotemporal; air pollution; pattern analysis; time series; SPATIAL ASSOCIATION;
D O I
10.3390/atmos14040760
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
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, with data being recorded at 1-h intervals. The analysis results using K-means and SKATER clustering revealed distinct differences between average and maximum values of pollutant concentrations. The study found that the K-means algorithm with Dynamic Time Warping (DTW) was more accurate in identifying yearly patterns and clustering in rapidly and spatially varying data, compared to the SKATER algorithm. Moreover, the clustering analysis of data after kriging greatly facilitated the interpretation of the results. These findings highlight the potential of machine learning techniques and big data analysis for identifying hot-spots, coldspots, and patterns of air pollution and informing policy decisions related to urban planning, traffic management, and public health interventions.
引用
收藏
页数:25
相关论文
共 50 条
  • [41] Air Quality Forecasting Using Big Data and Machine Learning Algorithms
    Koo, Youn-Seo
    Choi, Yunsoo
    Ho, Chang-Hoi
    ASIA-PACIFIC JOURNAL OF ATMOSPHERIC SCIENCES, 2023, 59 (05) : 529 - 530
  • [42] Air Quality Forecasting Using Big Data and Machine Learning Algorithms
    Youn-Seo Koo
    Yunsoo Choi
    Chang‐Hoi Ho
    Asia-Pacific Journal of Atmospheric Sciences, 2023, 59 : 529 - 530
  • [43] The application of machine learning to air pollution research: A bibliometric analysis
    Li, Yunzhe
    Sha, Zhipeng
    Tang, Aohan
    Goulding, Keith
    Liu, Xuejun
    ECOTOXICOLOGY AND ENVIRONMENTAL SAFETY, 2023, 257
  • [44] Big-Data-Driven and AI-Based Framework to Enable Personalization in Wireless Networks
    Alkurd, Rawan
    Abualhaol, Ibrahim
    Yanikomeroglu, Halim
    IEEE COMMUNICATIONS MAGAZINE, 2020, 58 (03) : 18 - 24
  • [45] Machine Learning in Big Data
    Wang, Lidong
    Alexander, Cheryl Ann
    INTERNATIONAL JOURNAL OF MATHEMATICAL ENGINEERING AND MANAGEMENT SCIENCES, 2016, 1 (02) : 52 - 61
  • [46] Machine Learning on Big Data
    Condie, Tyson
    Mineiro, Paul
    Polyzotis, Neoklis
    Weimer, Markus
    2013 IEEE 29TH INTERNATIONAL CONFERENCE ON DATA ENGINEERING (ICDE), 2013, : 1242 - 1244
  • [47] A systematic review of data mining and machine learning for air pollution epidemiology
    Colin Bellinger
    Mohomed Shazan Mohomed Jabbar
    Osmar Zaïane
    Alvaro Osornio-Vargas
    BMC Public Health, 17
  • [48] A systematic review of data mining and machine learning for air pollution epidemiology
    Bellinger, Colin
    Jabbar, Mohomed Shazan Mohomed
    Zaiane, Osmar
    Osornio-Vargas, Alvaro
    BMC PUBLIC HEALTH, 2017, 17
  • [49] Enhancing correlated big data privacy using differential privacy and machine learning
    Biswas, Sreemoyee
    Fole, Anuja
    Khare, Nilay
    Agrawal, Pragati
    JOURNAL OF BIG DATA, 2023, 10 (01)
  • [50] Enhancing correlated big data privacy using differential privacy and machine learning
    Sreemoyee Biswas
    Anuja Fole
    Nilay Khare
    Pragati Agrawal
    Journal of Big Data, 10