Atmospheric Measurement Techniques (Nov 2019)

Neural network for aerosol retrieval from hyperspectral imagery

  • S. Mauceri,
  • S. Mauceri,
  • B. Kindel,
  • S. Massie,
  • P. Pilewskie,
  • P. Pilewskie

DOI
https://doi.org/10.5194/amt-12-6017-2019
Journal volume & issue
Vol. 12
pp. 6017 – 6036

Abstract

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We retrieve aerosol optical thickness (AOT) independently for brown carbon, dust and sulfate from hyperspectral image data. The model, a neural network, is trained on atmospheric radiative transfer calculations from MODTRAN 6.0 with varying aerosol concentration and type, surface albedo, water vapor, and viewing geometries. From a set of test radiative transfer calculations, we are able to retrieve AOT with a standard error of better than ±0.05. No a priori information on the surface albedo or atmospheric state is necessary for our model. We apply the model to AVIRIS-NG imagery from a recent campaign over India and demonstrate its performance under high and low aerosol loadings and different aerosol types.