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Estimating forest carbon fluxes for large regions based on process-based modelling, NFI data and landsat satellite images.

机译:根据基于过程的建模,NFI数据和Landat卫星图像估算大区域的森林碳通量。

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The aim of this study was to develop and evaluate a new approach for estimating forest carbon fluxes for large regions based on climate-sensitive process-based model, national forest inventory (NFI) data and satellite images. The approach was tested for Central Finland and Lapland with NFI field data and daily weather data from 2004 to 2008. The approach combines (1) a light use efficiency (LUE) model, (2) a process-based summary model for estimating gross primary production (GPP) and net primary production (NPP), and (3) the Yasso07 soil carbon model, which together allow the estimation of net ecosystem exchange (NEE). Landsat TM 5 satellite images were utilized to generalize the carbon fluxes obtained for field sample plots for all forested areas using the k-NN imputation method. The accuracy of the imputations was examined by leave-one-out cross validation and by comparing the imputed and simulated values with Eddy covariance (EC) measurements. RMSE of the k-NN imputations was slightly better in Central Finland than in Lapland, the bias staying at a similar level. Based on the EC comparisons, the approach seemed to work rather well with GPP estimates in both areas, but in the north the NEE estimates were remarkably biased. The main advantages of the approach include its applicability to basic NFI data and a high output resolution (30 m). The method proved to be a promising way to produce carbon flux estimates based on large-scale forest inventory data and could therefore be easily applied to the whole of Northern Europe. However, there are still drawbacks to the approach, such as lacking parameters for peat lands. One of the future goals is to integrate the approach with an interactive mapping framework, which could thereafter be utilized, for example, in climate change research.
机译:这项研究的目的是基于气候敏感的基于过程的模型,国家森林清单(NFI)数据和卫星图像,开发和评估一种估算大区域森林碳通量的新方法。使用2004年至2008年的NFI现场数据和每日天气数据对该方法进行了中芬兰和拉普兰的测试。该方法结合了(1)光利用效率(LUE)模型,(2)基于过程的汇总模型以估算初级生产(GPP)和净初级生产(NPP),以及(3)Yasso07土壤碳模型,它们一起可以估算净生态系统交换(NEE)。利用Landsat TM 5卫星图像,使用k-NN归纳法对所有林区的田间样地的碳通量进行了概括。通过留一法交叉验证,以及通过将推算值和模拟值与涡度协方差(EC)测量值进行比较,检查了推算的准确性。在芬兰中部,k-NN估算的RMSE略好于拉普兰,偏差保持在相似的水平。根据EC的比较,该方法在两个地区的GPP估计值上似乎都可以很好地工作,但是在北部,NEE估计值明显偏颇。该方法的主要优点包括适用于基本NFI数据和高输出分辨率(30 m)。该方法被证明是一种基于大规模森林清单数据进行碳通量估算的有前途的方法,因此可以轻松地应用于整个北欧。但是,该方法仍然存在缺陷,例如缺少泥炭地参数。未来的目标之一是将该方法与交互式地图框架集成在一起,然后可以在例如气候变化研究中利用该框架。

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