Abstract

The estimation of aboveground biomass (AGB), an important indicator of grassland production, is crucial for evaluating livestock carrying capacity, understanding the response and feedback to climate change, and achieving sustainable development. Most existing grassland AGB estimation studies were based on empirical methods, in which field measurements are indispensable, hindering their operational use. This study proposed a novel physically-based grassland AGB retrieval method through the inversion of PROSAIL model against MCD43A4 imagery. This method relies on the basic understanding that grassland is herbaceous, and therefore AGB can be represented as the product of leaf dry matter content (Cm) and leaf area index (LAI), i.e., AGB = Cm × LAI. First, the PROSAIL model was parameterized according to the literature regarding grassland parameters retrieval, then Cm and LAI were retrieved using a lookup table (LUT) algorithm, finally, the retrieved Cm and LAI were multiplied to obtain the AGB. The method was assessed in Zoige Plateau, China. Results show that it could reproduce the reference AGB map, which is generated by upscaling the field measurements, in terms of magnitude (with RMSE and R-RMSE of 60.06 g·m−2 and 18.1%, respectively) and spatial distribution. The estimated AGB time series also agreed reasonably well with the expected temporal dynamic trends of the grassland in our study area. The greatest advantage of our method is its fully physical nature, i.e., no field measurement is needed. Our method has the potential for operational monitoring of grassland AGB at regional and even larger scales.

Highlights

  • Grassland, defined as permanent vegetation of herbaceous plant communities, provides significant ecosystem services, carbon pooling, and forage production [1,2,3]

  • The objective of this study is to propose a physically-based method to estimate grassland aboveground biomass (AGB) based on inverting the PROSAIL model from MODIS data

  • The physically-based grassland AGB retrieval method was proposed to rely on the basic understanding that grassland is herbaceous, and AGB can be represented as the product of leaf dry matter content (Cm) and leaf area index (LAI), i.e., AGB = Cm × LAI

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Summary

Introduction

Grassland, defined as permanent vegetation of herbaceous plant communities, provides significant ecosystem services, carbon pooling, and forage production [1,2,3]. Aboveground biomass (AGB), which is defined as the total mass of plant material per unit area, is an important indicator of vegetation production. The traditional method to estimate grassland AGB is based on field measurement, consisting of field clippings, laboratory drying, and weighing [4]. The field measurement methods are accurate, they are time-consuming and labor-intensive. Their spatially sparse nature makes them unfeasible to give a comprehensive understanding at regional or larger scales [6]. Optical remote sensing data contain valuable information on vegetation parameters, and provide an alternative to monitor grassland AGB more handily and in a seamless manner [7]

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