利用激光雷达形态测量参数模拟盐沼蓝碳的空间分布

IF 3.8 2区 地球科学 Q1 GEOSCIENCES, MULTIDISCIPLINARY
B. Turek, W. Teng, Q. Yu, B. Yellen, J. Woodruff
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引用次数: 0

摘要

盐沼吸收了大量的碳,主要在其深层土壤中。一些全国性的评估表明,沼泽土壤碳的空间变异性很小,但是需要通过使用基于过程的建模方法探索更精细尺度的变化来进一步减少碳储量的不确定性。沼泽土壤性质随几个参数的变化而变化,包括控制淹没深度的沼泽平台海拔,以及控制相对泥沙供应变化的沼泽边缘和潮汐溪网的接近程度。我们使用激光雷达从盐沼中提取这些形态测量参数,以米为尺度绘制沼泽中的土壤有机碳。土壤样本于2021年从美国东北部四个具有独特地貌的盐沼中收集。利用GIS中的半自动化工作流程,从1米分辨率的地形图激光雷达数据中描绘潮汐溪。建立了对数线性多元回归模型来预测土壤有机质、体积密度和碳密度作为每个站点和跨站点预测指标的函数。离潮溪的距离是最显著的模型预测因子。沼泽土壤特征建模在单通道水文的沼泽中效果最好。加入到入口的距离和潮汐差作为区域度量显著改善了跨站点的建模。我们的机械方法揭示了沼泽土壤特征的重要米级变化,并为继续在精细空间分辨率下严格绘制土壤碳提供了动力。此外,用于计算总沼泽碳储量的碳密度值应根据项目规模、沼泽地貌和所需精度仔细选择。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modeling Spatial Distributions of Salt Marsh Blue Carbon Using Morphometric Parameters From Lidar

Salt marshes sequester large amounts of carbon, mainly within their deep soils. Several nationwide assessments have indicated that spatial variability of marsh soil carbon is minimal, however there's a need to further reduce carbon stock uncertainties by exploring finer-scale variation using a process-based modeling approach. Marsh soil properties vary spatially with several parameters, including marsh platform elevation, which controls inundation depth, and proximity to the marsh edge and tidal creek network, which control variability in relative sediment supply. We used lidar to extract these morphometric parameters from salt marshes to map soil organic carbon across a marsh at the meter scale. Soil samples were collected in 2021 from four northeast U.S. salts marshes with distinctive geomorphologies. Tidal creeks were delineated from 1-m resolution topobathy lidar data using a semi-automated workflow in GIS. Log-linear multivariate regression models were developed to predict soil organic matter, bulk density, and carbon density as a function of predictive metrics at each site and across sites. Distance from tidal creeks was the most significant model predictor. Modeling marsh soil characteristics worked best in marshes with single channel hydrology. Addition of distance to the inlet and tidal range as regional metrics significantly improved cross-site modeling. Our mechanistic approach reveals important meter-level variation in soil characteristics across a marsh and provides motivation to continue rigorous mapping of soil carbon at fine spatial resolutions. Furthermore, carbon density values used to calculate total marsh carbon stocks should be carefully selected depending on project scale, marsh geomorphology, and desired accuracy.

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来源期刊
Journal of Geophysical Research: Earth Surface
Journal of Geophysical Research: Earth Surface Earth and Planetary Sciences-Earth-Surface Processes
CiteScore
6.30
自引率
10.30%
发文量
162
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