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Automating and Analyzing Whole-Farm Carbon Models

机译:自动化和分析全农场碳模型

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A whole farm carbon model estimates the emissions of greenhouse gasses (GHGs) based on information for a farm. We analyzed two models, Holos whole-farm and COMET-Farm, by running the models on random inputs and building predictive models from the runs. Holos estimates GHG emissions for a particular year based on crop and animal agriculture input, while COMET-farm adds past and future farm management practices. Users of the models must manually enter farm data through a graphical user interface (GUI), which is a good method for a single farm, but makes it infeasible to calculate GHG emissions over hundreds to thousands of farms. So we automated the interface and generated random farm scenarios within ranges given by experts. We scraped the estimated carbon footprint from thousands of runs of the models and used algorithms to build predictive models that have high accuracy. By reverse engineering the whole-farm carbon models we were able to determine which farm management practices in each whole farm carbon model have the biggest impact on GHG emissions. This can help farmers and rural planners change farm management practices to decrease GHG emissions.
机译:整个农场的碳模型会根据农场的信息估算温室气体(GHG)的排放量。通过在随机输入上运行模型并从运行中建立预测模型,我们分析了Holos全农场和COMET-Farm两个模型。 Holos根据农作物和畜牧业的投入估算特定年份的温室气体排放量,而COMET农场则增加了过去和未来的农场管理方法。模型的用户必须通过图形用户界面(GUI)手动输入服务器场数据,这对于单个服务器场来说是一种很好的方法,但是使计算数百到数千个服务器场的温室气体排放量变得不可行。因此,我们使界面自动化,并在专家给定的范围内生成了随机场方案。我们从成千上万的模型中提取了估计的碳足迹,并使用算法来构建具有高精度的预测模型。通过对整个农场碳模型进行逆向工程,我们能够确定每个整个农场碳模型中哪些农场管理实践对温室气体排放影响最大。这可以帮助农民和农村计划者改变农场的管理方式,以减少温室气体的排放。

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