Tijjani Sadiya B, Giri Subhasis, Lathrop Richard, Qi Junyu, Karki Ritesh, Schäfer Karina V R, Kaplan Marjorie B, Oleghe Ewan E, Dhakal Suman
Department of Geography, Rutgers, The State University of New Jersey, Lucy Stone Hall, 54 Joyce Kilmer Avenue, Piscataway, NJ 08854, USA.
Department of Ecology, Evolution, and Natural Resources, School of Environmental and Biological Sciences, Rutgers, The State University of New Jersey, New Brunswick, NJ 08901, USA.
Sci Total Environ. 2024 Dec 15;956:177271. doi: 10.1016/j.scitotenv.2024.177271. Epub 2024 Nov 9.
The terrestrial ecosystem plays a vital role in regulating regional and global carbon budgets. Ecosystem models are extensively employed to estimate carbon fluxes across different spatial scales. However, there remains a need to reduce the uncertainties associated with model parameterization and input data. To address these limitations, we assessed a distributed-calibration and independent-verification (DCIV) approach that uses (1) remotely sensed net primary production (NPP) and evapotranspiration (ET) data from the Moderate Resolution Imaging Spectroradiometer (MODIS), (2) multi-site eddy covariance net ecosystem exchange (NEE) data; and (3) field sampling of soil organic carbon (SOC) and aboveground biomass (ABG) data to improve the overall predictability of carbon fluxes for the different land use and land cover (LULC) types at a watershed scale. The DCIV approach was applied to an advanced version of the Soil and Water Assessment Tool (SWAT)-Carbon (or SWAT-C), equipped with Century-based SOC algorithms to simulate carbon dynamics for watersheds with heterogeneous vegetation. The objective of the modeling effort was to assess carbon stocks and fluxes under different land management scenarios for a 3000-acre experimental farm and forest preserve in the northeastern United States. Our study showed that a large SOC stock of at least 100 tons ha is stored under mixed forest, deciduous, shrubland, and floodplain (grass). Our study also showed that converting floodplain (grass) to deciduous forest has the potential to increase CO uptake (-NEE) by an order of three magnitude and ABG by 77 %, leading to an increased SOC stock of 23 % after twenty years. Similarly, we found that converting ungrazed grassland to grazed pasture leads to a non-statistically decreasing trend of SOC, especially in the 0-30 cm soil layer. Thus, the methodology used in this study can be applied to improve carbon dynamic prediction from a heterogeneous watershed at a regional scale.
陆地生态系统在调节区域和全球碳收支方面发挥着至关重要的作用。生态系统模型被广泛用于估算不同空间尺度上的碳通量。然而,仍有必要减少与模型参数化和输入数据相关的不确定性。为解决这些限制,我们评估了一种分布式校准和独立验证(DCIV)方法,该方法使用(1)来自中分辨率成像光谱仪(MODIS)的遥感净初级生产力(NPP)和蒸散量(ET)数据,(2)多站点涡度协方差净生态系统交换(NEE)数据;以及(3)土壤有机碳(SOC)和地上生物量(ABG)数据的实地采样,以提高流域尺度上不同土地利用和土地覆盖(LULC)类型碳通量的整体可预测性。DCIV方法应用于配备基于世纪的SOC算法的土壤和水资源评估工具(SWAT)-碳(或SWAT-C)的高级版本,以模拟植被异质流域的碳动态。建模工作的目的是评估美国东北部一个3000英亩的实验农场和森林保护区在不同土地管理情景下的碳储量和通量。我们的研究表明,混交林、落叶林、灌木林和河漫滩(草地)下储存着至少100吨/公顷的大量SOC储量。我们的研究还表明,将河漫滩(草地)转变为落叶林有可能使CO吸收量(-NEE)增加三个数量级,ABG增加77%,二十年后SOC储量增加23%。同样,我们发现将未放牧草地转变为放牧牧场会导致SOC呈非统计性下降趋势,尤其是在0-30厘米土层。因此,本研究中使用的方法可应用于改善区域尺度上异质流域的碳动态预测。