首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Biomass estimation over a large area based on standwise forest inventory data and ASTER and MODIS satellite data: A possibility to verify carbon inventories
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Biomass estimation over a large area based on standwise forest inventory data and ASTER and MODIS satellite data: A possibility to verify carbon inventories

机译:基于常规森林清单数据以及ASTER和MODIS卫星数据的大面积生物量估算:验证碳清单的可能性

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摘要

According to the IPCC GPG (Intergovernmental Panel on Climate Change, Good Practice Guidance), remote sensing methods are especially suitable for independent verification of the national LULUCF (Land Use, Land-Use Change, and Forestry) carbon pool estimates, particularly the aboveground biomass. In the present study, we demonstrate the potential of standwise (forest stand is a homogenous forest unit with average size of 1-3 ha) forest inventory data, and ASTER and MODIS satellite data for estimating stand volume (m{sup}3 ha{sup}(-1)) and aboveground biomass (t ha{sup}(-1)) over a large area of boreal forests in southern Finland. The regression models, developed using standwise forest inventory data and standwise averages of moderate spatial resolution ASTER data (15 m × 15 m), were utilized to estimate stand volume for coarse resolution MODIS pixels (250 m × 250 m). The MODIS datasets for three 8-day periods produced slightly different predictions, but the averaged MODIS data produced the most accurate estimates. The inaccuracy in radiometric calibration between the datasets, the effect of gridding and compositing artifacts and phenological variability are the most probable reasons for this variability. Averaging of the several MODIS datasets seems to be one possibility to reduce bias. The estimates obtained were significantly close to the district-level mean values provided by the Finnish National Forest Inventory; the relative RMSE was 9.9%. The use of finer spatial resolution data is an essential step to integrate ground measurements with coarse spatial resolution data. Furthermore, the use of standwise forest inventory data reduces co-registration errors and helps in solving the scaling problem between the datasets. The approach employed here can be used for estimating the stand volume and biomass, and as required independent verification data.
机译:根据IPCC GPG(政府间气候变化专门委员会,良好实践指南),遥感方法特别适合独立验证国家LULUCF(土地利用,土地利用变化和林业)碳库的估算值,尤其是地上生物量。在本研究中,我们展示了立式(林分是平均大小为1-3公顷的同质森林单位)森林资源清单数据以及ASTER和MODIS卫星数据用于估算林分体积(m {sup} 3公顷{ sup}(-1))和芬兰南部大片北方森林上的地上生物量(t ha {sup}(-1))。利用回归森林模型数据和中等空间分辨率ASTER数据(15 m×15 m)的尺度平均值建立的回归模型,用于估计粗分辨率MODIS像素(250 m×250 m)的林分体积。三个8天周期的MODIS数据集产生的预测略有不同,但是平均的MODIS数据产生的预测最准确。数据集之间辐射校准的不准确性,网格化和合成伪影的影响以及物候变异性是造成这种变异性的最可能原因。平均几个MODIS数据集似乎是减少偏差的一种可能性。所获得的估计值与芬兰国家森林清单所提供的区级平均值非常接近;相对RMSE为9.9%。使用更精细的空间分辨率数据是将地面测量结果与粗糙的空间分辨率数据整合在一起的必不可少的步骤。此外,使用标准森林清单数据可以减少共注册错误,并有助于解决数据集之间的缩放问题。此处采用的方法可用于估算林分体积和生物量,以及作为所需的独立验证数据。

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