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Quantifying uncertainty from large-scale model predictions of forest carbon dynamics

机译:从森林碳动态的大规模模型预测中量化不确定性

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Linking environmental computer simulation models and geographic information systems (GIS) is now a common practice to scale up simulations of complex ecosystem processes for decision support. Unfortunately, several important issues of upscaling using GIS are rarely considered; in particular scale dependency of models, availability of input data, support of input and validation data, and uncertainty in prediction including error propagation from the GIS. We linked the biogeochemical Forest-DNDC model to a GIS database to predict growth of Eucalyptus globulus plantations at two different scales ( similar to 0.045 ha plot super(-1) scale and similar to 100 ha grid super(-1) scale) across Victoria, in south-eastern Australia. Results showed that Forest-DNDC was not scale dependent across the range of scales investigated. Reduced availability of input data at the larger scale may introduce severe prediction errors, but did not require adjustment of the model in this study. Differences in the support of input and validation data led to an underestimation of predictive precision but an overestimation of prediction accuracy. Increasing data support, produced a high level of prediction accuracy ( super(-)e%), but a medium level of predictive precision (r super(2)=0.474, ME=0.318) after statistical validation. GIS error contribution could be detected but was not readily or reliably quantified. In a regional case study for 2653 ha of E. globulus plantations, the linked model GIS system estimated a total standing biomass of 95 260 t C for mid-2003 and a net CO sub(2) balance of -45 671 t CO sub(2)-C yr super(-1) for the entire year of 2002. This study showed that regional predictions of forest growth and carbon sequestration can be produced with greater confidence after a comprehensive assessment of upscaling issues.
机译:现在,将环境计算机仿真模型与地理信息系统(GIS)链接起来是扩大对复杂生态系统过程的仿真以提供决策支持的一种常见做法。不幸的是,很少考虑使用GIS进行升级的几个重要问题。特别是模型的比例依赖性,输入数据的可用性,输入和验证数据的支持以及预测的不确定性(包括来自GIS的误差传播)。我们将生物地球化学的Forest-DNDC模型链接到GIS数据库,以预测整个维多利亚州两个不同规模(类似于0.045公顷的土地super(-1)规模和类似于100公顷的网格Super(-1)规模的桉树人工林的生长) ,位于澳大利亚东南部。结果表明,Forest-DNDC在所研究的尺度范围内与尺度无关。大规模减少输入数据的可用性可能会引入严重的预测误差,但在本研究中不需要调整模型。输入和验证数据支持的差异导致对预测精度的低估,但对预测精度的高估。经过统计验证后,数据支持的增加,产生了较高水平的预测精度(super(-)e%),但具有中等水平的预测精度(r super(2)= 0.474,ME = 0.318)。可以检测到GIS错误贡献,但无法轻松或可靠地对其进行量化。在一项针对2653公顷的E. globulus人工林的区域案例研究中,链接模型GIS系统估计2003年中期的总固定生物量为95260 t C,CO sub(2)净平衡为-45671 t CO sub( 2)-C yr super(-1)代表2002年全年。这项研究表明,在对升级问题进行全面评估之后,可以更加自信地得出有关森林生长和碳固存的区域性预测。

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