Litcius/Paper detail

MODIS aerosol optical depth retrieval based on random forest approach

Tianchen Liang, Lin Sun, Haoxin Li

2020Remote Sensing Letters21 citationsDOI

Abstract

Despite significant improvement in Moderate Resolution Imaging Spectroradiometer (MODIS) aerosol optical depth (AOD) retrieval, high-resolution–high-accuracy AOD retrieval remains a challenging task. This study utilizes machine learning for AOD retrieval of MODIS data. The global long-time-series data of AERONET sites and corresponding MODIS data in time and space were used as sample training data for aerosol retrieval via use of the random forest (RF) approach. The accuracy and stability of retrieval were ensured by processing AERONET site data, performing time–space matching between different data types, and determining related parameters in the RF model. MODIS data use bands 1–7 of the top-of-atmosphere reflectance (TOA) – extending from the visible to near-infrared radiation spectra – along with the corresponding observation geometry data, global land surface satellite (GLASS) albedo dataset, and normalized difference vegetation index (NDVI) data. The proposed method facilitates realizationthe of high-accuracy aerosol retrieval. Furthermore, significant enhancement in the efficiency of aerosol inversion is an added advantage.

Topics & Concepts

AERONETRemote sensingAerosolModerate-resolution imaging spectroradiometerEnvironmental scienceRandom forestNormalized Difference Vegetation IndexSatelliteAlbedo (alchemy)MeteorologyComputer scienceGeologyGeographyArtificial intelligenceClimate changeAerospace engineeringEngineeringArt historyPerformance artArtOceanographyAtmospheric aerosols and cloudsAtmospheric and Environmental Gas DynamicsAtmospheric chemistry and aerosols