• DocumentCode
    2532184
  • Title

    Estimation and bias correction of aerosol abundance using data-driven machine learning and remote sensing

  • Author

    Malakar, N.K. ; Lary, D.J. ; Moore, A. ; Gencaga, D. ; Roscoe, B. ; Albayrak, Arif ; Wei, Jennifer

  • Author_Institution
    Univ. of Texas at Dallas, Richardson, TX, USA
  • fYear
    2012
  • fDate
    24-26 Oct. 2012
  • Firstpage
    24
  • Lastpage
    30
  • Abstract
    Air quality information is increasingly becoming a public health concern, since some of the aerosol particles pose harmful effects to peoples health. One widely available metric of aerosol abundance is the aerosol optical depth (AOD). The AOD is the integrated light extinction coefficient over a vertical atmospheric column of unit cross section, which represents the extent to which the aerosols in that vertical profile prevent the transmission of light by absorption or scattering. The comparison between the AOD measured from the ground-based Aerosol Robotic Network (AERONET) system and the satellite MODIS instruments at 550 nm shows that there is a bias between the two data products. We performed a comprehensive search exploring possible factors which may be contributing to the inter-instrumental bias between MODIS-Aqua land data set and AERONET. The analysis used several measured variables, including the MODIS AOD, as input in order to train a neural network in regression mode to predict the AERONET AOD values. This not only allowed us to obtain an estimate, but also allowed us to infer the optimal sets of variables that played an important role in the prediction. In addition, we applied machine learning to infer the global abundance of ground level PM2.5 from the AOD data and other ancillary satellite and meteorology products. This research is part of our goal to provide air quality information, which can also be useful for global epidemiology studies.
  • Keywords
    aerosols; air pollution measurement; atmospheric light propagation; atmospheric techniques; geophysics computing; health hazards; learning (artificial intelligence); light absorption; light scattering; regression analysis; remote sensing; AERONET AOD value prediction; AERONET system; MODIS AOD; MODIS-Aqua land data set; aerosol abundance estimation; aerosol optical depth; aerosol particles; air quality information; bias correction; data-driven machine learning; global abundance; global epidemiology studies; ground-based aerosol robotic network; harmful health effects; integrated light extinction coefficient; inter-instrumental bias; light absorption; light scattering; light transmission prevention; meteorology products; neural network training; public health; regression mode; remote sensing; satellite MODIS instruments; vertical atmospheric column; Aerosols; Artificial neural networks; Azimuth; Correlation; MODIS; Sea measurements;
  • fLanguage
    English
  • Publisher
    ieee
  • Conference_Titel
    Intelligent Data Understanding (CIDU), 2012 Conference on
  • Conference_Location
    Boulder, CO
  • Print_ISBN
    978-1-4673-4625-2
  • Type

    conf

  • DOI
    10.1109/CIDU.2012.6382197
  • Filename
    6382197