International Institute for Applied Systems Analysis, Ecosystems Services and Management Program, Schlossplatz 1, A-2361, Laxenburg, Austria; Faculty of Natural Sciences, Comenius University in Bratislava, Ilkovičova 6, 842 15, Bratislava, Slovak Republic.
Crop Research Institute, Division of Crop Management Systems, Drnovská 507/73, 161 06, Praha 6 - Ruzyně, Czech Republic.
J Environ Manage. 2020 Nov 15;274:111206. doi: 10.1016/j.jenvman.2020.111206. Epub 2020 Aug 17.
Regional monitoring, reporting and verification of soil organic carbon change occurring in managed cropland are indispensable to support carbon-related policies. Rapidly evolving gridded agronomic models can facilitate these efforts throughout Europe. However, their performance in modelling soil carbon dynamics at regional scale is yet unexplored. Importantly, as such models are often driven by large-scale inputs, they need to be benchmarked against field experiments. We elucidate the level of detail that needs to be incorporated in gridded models to robustly estimate regional soil carbon dynamics in managed cropland, testing the approach for regions in the Czech Republic. We first calibrated the biogeochemical Environmental Policy Integrated Climate (EPIC) model against long-term experiments. Subsequently, we examined the EPIC model within a top-down gridded modelling framework constructed for European agricultural soils from Europe-wide datasets and regional land-use statistics. We explored the top-down, as opposed to a bottom-up, modelling approach for reporting agronomically relevant and verifiable soil carbon dynamics. In comparison with a no-input baseline, the regional EPIC model suggested soil carbon changes (0.1-0.5 Mg C ha y) consistent with empirical-based studies for all studied agricultural practices. However, inaccurate soil information, crop management inputs, or inappropriate model calibration may undermine regional modelling of cropland management effect on carbon since each of the three components carry uncertainty (0.5-1.5 Mg C ha y) that is substantially larger than the actual effect of agricultural practices relative to the no-input baseline. Besides, inaccurate soil data obtained from the background datasets biased the simulated carbon trends compared to observations, thus hampering the model's verifiability at the locations of field experiments. Encouragingly, the top-down agricultural management derived from regional land-use statistics proved suitable for the estimation of soil carbon dynamics consistently with actual field practices. Despite sensitivity to biophysical parameters, we found a robust scalability of the soil organic carbon routine for various climatic regions and soil types represented in the Czech experiments. The model performed better than the tier 1 methodology of the Intergovernmental Panel on Climate Change, which indicates a great potential for improved carbon change modelling over larger political regions.
区域监测、报告和核实管理耕地中发生的土壤有机碳变化对于支持与碳相关的政策是不可或缺的。快速发展的网格化农业模型可以在整个欧洲为这些努力提供便利。然而,它们在模拟区域尺度土壤碳动态方面的性能尚未得到探索。重要的是,由于这些模型通常由大规模投入驱动,因此需要与田间实验进行基准测试。我们阐明了在网格化模型中需要纳入的详细程度,以稳健估计管理耕地中的区域土壤碳动态,并用捷克共和国的区域进行了测试。我们首先根据长期实验校准生物地球化学环境政策综合气候(EPIC)模型。随后,我们在一个从全欧数据集和区域土地利用统计数据构建的用于欧洲农业土壤的自上而下的网格化建模框架内检查了 EPIC 模型。我们探索了自上而下的建模方法,而不是自下而上的方法,用于报告农业上相关且可验证的土壤碳动态。与无输入基线相比,区域 EPIC 模型表明,所有研究农业实践的土壤碳变化(0.1-0.5 Mg C ha y)与基于经验的研究一致。然而,不准确的土壤信息、作物管理投入或不合适的模型校准可能会破坏对农田管理对碳的影响的区域建模,因为这三个组成部分中的每一个都带有不确定性(0.5-1.5 Mg C ha y),比相对于无输入基线的农业实践的实际影响大得多。此外,从背景数据集获得的不准确土壤数据与观测相比使模拟的碳趋势产生偏差,从而阻碍了模型在田间实验地点的可验证性。令人鼓舞的是,从区域土地利用统计数据得出的自上而下的农业管理对于与实际田间实践一致的土壤碳动态估计是合适的。尽管对生物物理参数敏感,但我们发现,对于在捷克实验中代表的各种气候区和土壤类型,土壤有机碳常规具有稳健的可扩展性。该模型的表现优于政府间气候变化专门委员会的第 1 层方法,这表明在更大的政治区域内进行碳变化建模有很大的改进潜力。