Abstract

Abstract. This paper examines algorithms for estimating terrestrial albedo from the products of the Global Change Observation Mission – Climate (GCOM-C) / Second-generation Global Imager (SGLI), which was launched in December 2017 by the Japan Aerospace Exploration Agency. We selected two algorithms: one based on a bidirectional reflectance distribution function (BRDF) model and one based on multi-regression models. The former determines kernel-driven BRDF model parameters from multiple sets of reflectance and estimates the land surface albedo from those parameters. The latter estimates the land surface albedo from a single set of reflectance with multi-regression models. The multi-regression models are derived for an arbitrary geometry from datasets of simulated albedo and multi-angular reflectance. In experiments using in situ multi-temporal data for barren land, deciduous broadleaf forests, and paddy fields, the albedos estimated by the BRDF-based and multi-regression-based algorithms achieve reasonable root-mean-square errors. However, the latter algorithm requires information about the land cover of the pixel of interest, and the variance of its estimated albedo is sensitive to the observation geometry. We therefore conclude that the BRDF-based algorithm is more robust and can be applied to SGLI operational albedo products for various applications, including climate-change research.

Highlights

  • The Japan Aerospace Exploration Agency (JAXA) initiated the Global Change Observation Mission (GCOM) to observe data on a global scale for analyzing global climate change and water circulation mechanisms

  • We examined the possible combinations of Second-generation Global Imager (SGLI) bands as independent variables of the regression model and found VN5, VN8, VN11, and SW1 to be the best combination in terms of Akaike’s information criterion (AIC)

  • We examined two algorithms for generating GCOM – Climate (GCOM-C)/SGLI surface albedo products, namely, one based on a bidirectional reflectance distribution function (BRDF) model using several sets of reflectance and one based on multi-regression models using a single set of reflectances

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Summary

Introduction

The Japan Aerospace Exploration Agency (JAXA) initiated the Global Change Observation Mission (GCOM) to observe data on a global scale for analyzing global climate change and water circulation mechanisms. Under this project, GCOM – Climate (GCOM-C) was launched successfully in December 2017, and the Second-generation Global Imager (SGLI) onboard GCOM-C is expected to measure reflectance and radiation in the region of visible to infrared wavelengths (GCOM-C, 2021a). SGLI is designed to provide operational products regarding land, atmosphere, ocean, and cryosphere. Using the SGLI data, we aim to develop an algorithm for operational terrestrial albedo products. In this paper we examine an algorithm for the stable estimation of daily SGLI-based albedo from surface reflectance

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