4.7 Article

Grassland Aboveground Biomass Estimation through Assimilating Remote Sensing Data into a Grass Simulation Model

期刊

REMOTE SENSING
卷 14, 期 13, 页码 -

出版社

MDPI
DOI: 10.3390/rs14133194

关键词

grassland aboveground biomass; data assimilation; 4DVar; four-dimensional variational; MCMC; Markov chain Monte Carlo; ModVege model

资金

  1. National Key R&D Program of China [2018YFE0122700]
  2. National Natural Science Foundation of China [41971383]

向作者/读者索取更多资源

This study investigates a new method that combines remote sensing data assimilation technology and a grassland process-based model to estimate regional grassland biomass, focusing on improving simulation accuracy and revealing mechanism interpretability of grassland growth processes. The aboveground grassland biomass of Xilinhot City shows specific spatial distribution patterns, and data assimilation improves accuracy.
Grassland aboveground biomass is crucial for evaluating grassland desertification, degradation, and grassland and livestock balance. Given the lack of understanding of mechanical processes and limited simulation accuracy for grassland aboveground biomass estimation, especially at the regional scale, this study investigates a new method combining remote sensing data assimilation technology and a grassland process-based model to estimate regional grassland biomass, focusing on improving the simulation accuracy by modeling and revealing the mechanism interpretability of grassland growth processes. Xilinhot City of Inner Mongolia was used as the study area. The ModVege model was selected as the grass dynamic simulation model. A likelihood function was constructed composed of the LAI, grassland aboveground biomass, and daily measurements wherein the accumulated temperature reached ST2 (the temperature sum defining the end of reproductive growth). Then, the Markov chain Monte Carlo (MCMC) methodology was adapted to calibrate the ModVege model by maximizing the likelihood function. The time-series LAI from MOD15A3H was assimilated into the ModVege model, and the model parameters ST2 and BMGV0 (initial biomass and green vegetative tissues, respectively) were optimized at a 500 m pixel scale based on the four-dimensional variational method (4DVar) method. Compared with August 15th, the RMSE and MAPE of aboveground biomass were 242 kg/ha and 10%, respectively, after calibration. Data assimilation improved this accuracy, with the RMSE decreasing to 214 kg/ha. Overall, the aboveground grassland biomass of Xilinhot City shows spatial distribution patterns of high value in the northeast and low value in the central and southeast areas. Generally, the method implemented in this study provides an important reference for the aboveground biomass estimation of regional grassland.

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