Air Quality Prediction in Smart Cities Using Machine Learning Technologies Based on Sensor Data: A Review

被引:82
作者
Iskandaryan, Ditsuhi [1 ]
Ramos, Francisco [1 ]
Trilles, Sergio [1 ]
机构
[1] Univ Jaume 1, Inst New Imaging Technol INIT, Av Vicente Sos Baynat S-N, Castellon de La Plana 12071, Spain
来源
APPLIED SCIENCES-BASEL | 2020年 / 10卷 / 07期
关键词
air pollution; air quality prediction; machine learning; smart cities; GLOBAL BURDEN; MODEL; POLLUTION; DISEASE;
D O I
10.3390/app10072401
中图分类号
O6 [化学];
学科分类号
0703 ;
摘要
The influence of machine learning technologies is rapidly increasing and penetrating almost in every field, and air pollution prediction is not being excluded from those fields. This paper covers the revision of the studies related to air pollution prediction using machine learning algorithms based on sensor data in the context of smart cities. Using the most popular databases and executing the corresponding filtration, the most relevant papers were selected. After thorough reviewing those papers, the main features were extracted, which served as a base to link and compare them to each other. As a result, we can conclude that: (1) instead of using simple machine learning techniques, currently, the authors apply advanced and sophisticated techniques, (2) China was the leading country in terms of a case study, (3) Particulate matter with diameter equal to 2.5 micrometers was the main prediction target, (4) in 41% of the publications the authors carried out the prediction for the next day, (5) 66% of the studies used data had an hourly rate, (6) 49% of the papers used open data and since 2016 it had a tendency to increase, and (7) for efficient air quality prediction it is important to consider the external factors such as weather conditions, spatial characteristics, and temporal features.
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页数:32
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共 60 条
  • [31] Spatiotemporal Prediction of PM2.5 Concentrations at Different time Granularities Using IDW-BLSTM
    Ma, Jun
    Ding, Yuexiong
    Gan, Vincent J. L.
    Lin, Changqing
    Wan, Zhiwei
    [J]. IEEE ACCESS, 2019, 7 : 107897 - 107907
  • [32] Martínez-España R, 2018, J UNIVERS COMPUT SCI, V24, P261
  • [33] An End-to-End Adaptive Input Selection With Dynamic Weights for Forecasting Multivariate Time Series
    Munkhdalai, Lkhagvadorj
    Munkhdalai, Tsendsuren
    Park, Kwang Ho
    Amarbayasgalan, Tsatsral
    Erdenebaatar, Erdenebileg
    Park, Hyun Woo
    Ryu, Keun Ho
    [J]. IEEE ACCESS, 2019, 7 : 99099 - 99114
  • [34] Relevance analysis and short-term prediction of PM2.5 concentrations in Beijing based on multi-source data
    Ni, X. Y.
    Huang, H.
    Du, W. P.
    [J]. ATMOSPHERIC ENVIRONMENT, 2017, 150 : 146 - 161
  • [35] Oprea M, 2016, REV CHIM-BUCHAREST, V67, P2075
  • [36] Machine Learning Approaches for Outdoor Air Quality Modelling: A Systematic Review
    Rybarczyk, Yves
    Zalakeviciute, Rasa
    [J]. APPLIED SCIENCES-BASEL, 2018, 8 (12):
  • [37] Comparing the Performance of Statistical Models for Predicting PM10 Concentrations
    Sayegh, Arwa S.
    Munir, Said
    Habeebullah, Turki M.
    [J]. AEROSOL AND AIR QUALITY RESEARCH, 2014, 14 (03) : 653 - 665
  • [38] Urban Air Pollution Monitoring System With Forecasting Models
    Shaban, Khaled Bashir
    Kadri, Abdullah
    Rezk, Eman
    [J]. IEEE SENSORS JOURNAL, 2016, 16 (08) : 2598 - 2606
  • [39] Air Pollution Forecasting Using a Deep Learning Model Based on 1D Convnets and Bidirectional GRU
    Tao, Qing
    Liu, Fang
    Li, Yong
    Sidorov, Denis
    [J]. IEEE ACCESS, 2019, 7 : 76690 - 76698
  • [40] Deployment of an open sensorized platform in a smart city context
    Trilles, Sergio
    Calia, Andrea
    Belmonte, Oscar
    Torres-Sospedra, Joaquin
    Montoliu, Raul
    Huerta, Joaquin
    [J]. FUTURE GENERATION COMPUTER SYSTEMS-THE INTERNATIONAL JOURNAL OF ESCIENCE, 2017, 76 : 221 - 233