Abstract

Satellite remote sensing has been widely used to retrieve aerosol optical depth (AOD), which is an indicator of air quality as well as radiative forcing. The dark target (DT) algorithm is applied to low reflectance areas, such as dense vegetation, and the deep blue (DB) algorithm is adopted for bright-reflecting regions. However, both DT and DB algorithms ignore the effect of surface bidirectional reflectance. This paper provides a method for AOD retrieval in arid or semiarid areas, in which the key points are the accurate estimation of surface reflectance and reasonable assumptions of the aerosol model. To reduce the uncertainty in surface reflectance, a minimum land surface reflectance database at the spatial resolution of 500 m for each month was constructed based on the moderate-resolution imaging spectroradiometer (MODIS) surface reflectance product. Furthermore, a bidirectional reflectance distribution function (BRDF) correction model was adopted to compensate for the effect of surface reflectance anisotropy. The aerosol parameters, including AOD, single scattering albedo, asymmetric factor, Ångström exponent and complex refractive index, are determined based on the observation of two sunphotometers installed in northern Xinjiang from July to August 2014. The AOD retrieved from the MODIS images was validated with ground-based measurements and the Terra-MODIS aerosol product (MOD04). The 500 m AOD retrieved from the MODIS showed high consistency with ground-based AOD measurements, with an average correlation coefficient of ~0.928, root mean square error (RMSE) of ~0.042, mean absolute error (MAE) of ~0.032, and the percentage falling within the expected error (EE) of the collocations is higher than that for the MOD04 DB product. The results demonstrate that the new AOD algorithm is more suitable to represent aerosol conditions over Xinjiang than the DB standard product.

Highlights

  • Xinjiang province in northwest China is part of the Central Asian dust storm area, which is one of the main sources of dust aerosols [1]

  • A modified aerosol retrieval algorithm was proposed for retrieving aerosol optical depth (AOD) over the arid/semiarid region of northern Xinjiang from moderate-resolution imaging spectroradiometer (MODIS) data at 500 m spatial resolution

  • The retrieved AOD values were validated by ground-based sunphotometer observations in two sites and compared with the MODIS deep blue (DB) AOD products

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Summary

Introduction

Xinjiang province in northwest China is part of the Central Asian dust storm area, which is one of the main sources of dust aerosols [1]. The quality of AOD products over arid/semiarid areas, such as Xinjiang, is relatively low due to a large bias in the surface reflectance estimation as well as the aerosol model used in the retrieval algorithms. In the Xinjiang area, the MODIS AOD product is mostly retrieved with the DB algorithm which is applied over bright areas, where the surface reflectance is relatively high, and distinguishing atmospheric aerosol contributions from the satellite sensor energy is difficult. One of the major error sources for the DB algorithm is the difference between the surface reflectance corresponding to the images and that from the pre-calculated database, as a result of the anisotropic surface reflectance Another crucial aspect in AOD retrieval is the aerosol model. The CE-318 sunphotometer data are used to determine the aerosol characteristics of the study area

Field Measurements and Data Used
Methodology
Aerosol Parameter Determination
Rayleigh Correction for Elevation Effect
Error Indicators
Spatial Distribution of AOD
Validation
Conclusions
Full Text
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