Computer Science ›› 2019, Vol. 46 ›› Issue (6A): 35-40.

• Review • Previous Articles     Next Articles

Review on Urban Air Quality Perception Methods

WANG Peng-yue1,2, GUO Mao-zu1,2, ZHAO Ling-ling3, ZHANG Yu1,4   

  1. School of Electrical and Information Engineering,Beijing University of Civil Engineering and Architecture,Beijing 100044,China1;
    Beijing Key Laboratory of Intelligent Processing for Building Big Data,Beijing 100044,China2;
    School of Computer Science and Technology,Harbin Institute of Technology,Harbin 150001,China3;
    State Key Laboratory in China for GeoMechanics and Deep Underground Engineering,Beijing 100083,China4
  • Online:2019-06-14 Published:2019-07-02

Abstract: Urban air quality information is especially important for controlling air pollution and protecting public health.According to whether the sensor position changes,urbanair quality sensing methods can be divided into two methods:static perception methods and dynamic perception methods.The data acquisition of the static sensing method is based on air quality monitoring stations,satellite remote sensing and fixed position sensors.Then,the static sensing method is further divided into low-cost static sensing method and high-cost static sensing method.The dynamic sensing method can be divided into participatory method and non-participating method according to whether the participant is the perceptual center.With the development of sensing technology and computing ability,the fusion of multi-source hete-rogeneous urban data,such as meteorological data and traffic data,can further improve the accuracy of perception.This paper firstly summarized current air quality sensing methods,then classified the sensing framework and data processing methods of various methods,and finally discussed the problems and challenges.

Key words: Air pollution, Data collection, Machine learning, Urban sensing

CLC Number: 

  • TP181
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