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Validation of Space-Based Albedo Products from Upscaled Tower-Based Measurements over Heterogeneous and Homogeneous Landscapes.

Remote sensing(2020)SCI 2区SCI 3区

Univ Coll London

Cited 16|Views49
Abstract
Surface albedo is a fundamental radiative parameter as it controls the Earth’s energy budget and directly affects the Earth’s climate. Satellite observations have long been used to capture the temporal and spatial variations of surface albedo because of their continuous global coverage. However, space-based albedo products are often affected by errors in the atmospheric correction, multi-angular bi-directional reflectance distribution function (BRDF) modelling, as well as spectral conversions. To validate space-based albedo products, an in situ tower albedometer is often used to provide continuous “ground truth” measurements of surface albedo over an extended area. Since space-based albedo and tower-measured albedo are produced at different spatial scales, they can be directly compared only for specific homogeneous land surfaces. However, most land surfaces are inherently heterogeneous with surface properties that vary over a wide range of spatial scales. In this work, tower-measured albedo products, including both directional hemispherical reflectance (DHR) and bi-hemispherical reflectance (BHR), are upscaled to coarse satellite spatial resolutions using a new method. This strategy uses high-resolution satellite derived surface albedos to fill the gaps between the albedometer’s field-of-view (FoV) and coarse satellite scales. The high-resolution surface albedo is generated from a combination of surface reflectance retrieved from high-resolution Earth Observation (HR-EO) data and moderate resolution imaging spectroradiometer (MODIS) BRDF climatology over a larger area. We implemented a recently developed atmospheric correction method, the Sensor Invariant Atmospheric Correction (SIAC), to retrieve surface reflectance from HR-EO (e.g., Sentinel-2 and Landsat-8) top-of-atmosphere (TOA) reflectance measurements. This SIAC processing provides an estimated uncertainty for the retrieved surface spectral reflectance at the HR-EO pixel level and shows excellent agreement with the standard Landsat 8 Surface Reflectance Code (LaSRC) in retrieving Landsat-8 surface reflectance. Atmospheric correction of Sentinel-2 data is vastly improved by SIAC when compared against the use of in situ AErosol RObotic NETwork (AERONET) data. Based on this, we can trace the uncertainty of tower-measured albedo during its propagation through high-resolution EO measurements up to coarse satellite scales. These upscaled albedo products can then be compared with space-based albedo products over heterogeneous land surfaces. In this study, both tower-measured albedo and upscaled albedo products are examined at Ground Based Observation for Validation (GbOV) stations (https://land.copernicus.eu/global/gbov/), and used to compare with satellite observations, including Copernicus Global Land Service (CGLS) based on ProbaV and VEGETATION 2 data, MODIS and multi-angle imaging spectroradiometer (MISR).
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surface albedo,directional hemispherical reflectance,bi-hemispherical reflectance,upscaling,CGLS,ProbaV,vegetation,MODIS,MISR
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要点】:本文提出了一种新的方法,通过将地面塔基测量得到的反照率产品进行尺度提升,以验证空间基反照率产品的准确性,尤其是在异质性地表上的应用。

方法】:使用了一种新的尺度提升方法,结合高分辨率地球观测数据检索的表面反射率和MODIS双向反射率分布函数(BRDF)气候学,将塔基测量的反照率产品提升到粗卫星尺度。

实验】:在地面基观测验证(GbOV)站点,将塔基测量的反照率产品以及提升后的反照率产品与Copernicus Global Land Service (CGLS)、MODIS和多角度成像光谱辐射计(MISR)等卫星观测数据进行了比较,使用的数据集包括Sentinel-2、Landsat-8、ProbaV和VEGETATION 2等。