Supporting data for "Granularity of model input data impacts estimates of carbon storage in soils"
收藏Figshare2024-05-23 更新2026-04-28 收录
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The exchange of carbon between the soil and the atmosphere is an important factor in climate change. Soil organic carbon (SOC) storage is sensitive to land management, soil properties, and climatic conditions, and these data serve as key inputs to computer models projecting SOC change. Farmland has been identified as a sink for atmospheric carbon, and we have previously estimated the potential for SOC sequestration in agricultural soils in Vermont, USA using the Rothamsted Carbon Model. However, fine spatial-scale (high granularity) input data are not always available, which can limit the skill of SOC projections. For example, climate projections are often only available at scales of 10s to 100s of km2. To overcome this, we use a climate projection dataset downscaled to In this repository are the downscaled climate input data that drive the RothC model, as well as the model outputs for each GCM.
创建时间:
2024-05-23



