Integration of Sentinel-2 Derived Spectral Indices and In-situ Forest Inventory to Predict Forest Biomass

A. Imran, S. Ahmed, Waqar Ahmed, M. Zia-ur-Rehman, Arif Iqbal, N. Ahmad, Irfan Ullah
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引用次数: 1

Abstract

  Forest biomass estimation is the central part of sustainable forest management to assess carbon stocks and carbon emissions from forest ecosystem. Sentinel-2 is state-of-art sensor with refined spatial and recurrent temporal resolution data. The present study explored the potential of Sentinel-2 derived vegetation indices for above ground biomass prediction using four regression models (linear, exponential, power and logarithmic). Sentinel-2 indices includes Global environmental monitoring index, transformed normalized difference vegetation index, normalized difference water index, normalized difference infrared index and red-edge normalized difference vegetation index. The performances of Sentinel-2 indices were assessed by simple single variable (index) based regression for GEMI, TNDVI, NDII, NDWI and RENDVI versus AGB values. Further, stepwise linear regression was also developed in which used all indices entered into stepwise selection and the best index was selected in the final model. Results showed that linear model of all indices performance best compared to the rest three models and R2 values 0.12, 0.39, 0.46, 0.44 and 0.37 for Global environmental monitoring index, transformed normalized. Vegetation index, normalized difference water index, infrared index and red-edge vegetation index, respectively. Normalized difference water index was considered the best index among five computed indices in simple linear as well as in stepwise linear regression, whereas rest of the indices were removed because they were not significant under the stepwise criteria. Further, the accuracy of normalized difference water index model was determined by root mean square error and final prediction model has 28.27 t/ha error for both simple linear and stepwise linear regression. Therefore, normalized difference water index was selected for biomass mapping and resultant biomass showed up to 339 t/ha in the study area. The resultant biomass map also showed consistency with global datasets which include global forest canopy height and global forest tree cover change maps. The study suggest that Sentinel-2 product has great potential to estimate above ground  biomass with accuracy and can be used for large scale mapping in combination with national forest inventory for carbon emission accounting.    
基于Sentinel-2衍生光谱指数和原位森林清查的森林生物量预测
森林生物量估算是森林可持续管理中评估森林生态系统碳储量和碳排放的核心内容。Sentinel-2是最先进的传感器,具有精确的空间和周期性时间分辨率数据。利用4种回归模型(线性、指数、幂和对数),探讨了Sentinel-2衍生植被指数在地上生物量预测中的潜力。Sentinel-2指数包括全球环境监测指数、转化归一化植被指数、归一化水体指数、归一化红外指数和红边归一化植被指数。通过简单的单变量(指数)回归评估Sentinel-2指数的GEMI、TNDVI、NDII、NDWI和RENDVI与AGB值的关系。进一步发展逐步线性回归,利用所有进入逐步选择的指标,在最终模型中选择最佳指标。结果表明,各指标的线性模型表现最好,经归一化处理后,全球环境监测指标的R2值分别为0.12、0.39、0.46、0.44和0.37。植被指数、归一化差水指数、红外指数和红边植被指数。在简单线性回归和逐步线性回归的5个计算指标中,归一化差水指数被认为是最好的指标,其余指标因在逐步标准下不显著而被剔除。归一化差水指数模型的精度由均方根误差决定,简单线性和逐步线性回归的最终预测模型误差均为28.27 t/ha。因此,选择归一化差水指数进行生物量制图,研究区生物量最高可达339 t/ha。所得生物量图与全球数据集(包括全球森林冠层高度和全球森林覆盖变化图)也具有一致性。该研究表明,Sentinel-2产品在准确估算地上生物量方面具有很大的潜力,可以结合国家森林清查进行大比例尺制图,用于碳排放核算。
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