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Improving the LPJmL4-SPITFIRE vegetation–fire model for South America using satellite data

机译:使用卫星数据改善南美洲的LPJML4-Spitfire植被 - 火模型

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Vegetation fires influence global vegetation distribution, ecosystem functioning, and global carbon cycling. Specifically in South America, changes in fire occurrence together with land-use change accelerate ecosystem fragmentation and increase the vulnerability of tropical forests and savannas to climate change. Dynamic global vegetation models (DGVMs) are valuable tools to estimate the effects of fire on ecosystem functioning and carbon cycling under future climate changes. However, most fire-enabled DGVMs have problems in capturing the magnitude, spatial patterns, and temporal dynamics of burned area as observed by satellites. As fire is controlled by the interplay of weather conditions, vegetation properties, and human activities, fire modules in DGVMs can be improved in various aspects. In this study we focus on improving the controls of climate and hence fuel moisture content on fire danger in the LPJmL4-SPITFIRE DGVM in South America, especially for the Brazilian fire-prone biomes of Caatinga and Cerrado. We therefore test two alternative model formulations (standard Nesterov Index and a newly implemented water vapor pressure deficit) for climate effects on fire danger within a formal model–data integration setup where we estimate model parameters against satellite datasets of burned area (GFED4) and aboveground biomass of trees. Our results show that the optimized model improves the representation of spatial patterns and the seasonal to interannual dynamics of burned area especially in the Cerrado and Caatinga regions. In addition, the model improves the simulation of aboveground biomass and the spatial distribution of plant functional types (PFTs). We obtained the best results by using the water vapor pressure deficit (VPD) for the calculation of fire danger. The VPD includes, in comparison to the Nesterov Index, a representation of the air humidity and the vegetation density. This work shows the successful application of a systematic model–data integration setup, as well as the integration of a new fire danger formulation, in order to optimize a process-based fire-enabled DGVM. It further highlights the potential of this approach to achieve a new level of accuracy in comprehensive global fire modeling and prediction.
机译:植被火灾影响全球植被分布,生态系统功能和全球碳循环。特别是在南美洲,火灾发生的变化与土地利用变化加速了生态系统碎片,并增加了热带森林和大草原对气候变化的脆弱性。动态全球植被型号(DGVM)是估计消防对生态系统功能和碳循环的影响的宝贵工具。然而,大多数灭火的DGVM都有问题捕获卫星观察到的烧毁区域的幅度,空间模式和时间动态。由于燃烧由天气条件,植被特性和人类活动的相互作用来控制,在各个方面可以改善DGVM中的火模块。在这项研究中,我们专注于改善气候的控制,从而在南美洲LPJML4-Spitfire DGVM中的火灾危险控制,特别是对于Caatinga和Cerrado的巴西火灾易一体生物群体。因此,我们测试了两种替代模型配方(标准Nesterov指数和新实施的水蒸汽压力缺陷),用于在正式模型 - 数据集成设置内对火灾危险进行气候影响,其中我们估算烧毁区域(GFED4)和地上卫星数据集的模型参数树木的生物量。我们的研究结果表明,优化的模型可提高空间模式和季节性的表示,特别是在Cerrado和Caatinga地区的烧毁区域的终际动态。此外,该模型改善了地上生物质的模拟和植物功能类型(PFT)的空间分布。我们通过使用水蒸气压力缺陷(VPD)来获得最佳结果,以计算火灾危险。与Nesterov指数相比,VPD包括空气湿度和植被密度的表示。这项工作显示了系统模型 - 数据集成设置的成功应用,以及新的火灾危险制定的集成,以优化基于过程的启用的DGVM。它进一步突出了这种方法的潜力,以实现全球综合灭火建模和预测的新准确性。

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