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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Calibration of remotely sensed, coarse resolution NDVI to CO2 fluxes in a sagebrush-steppe ecosystem [Review]
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Calibration of remotely sensed, coarse resolution NDVI to CO2 fluxes in a sagebrush-steppe ecosystem [Review]

机译:鼠尾草-草原生态系统中的遥感,粗分辨率NDVI对CO2通量的校准[综述]

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The net ecosystem exchange (NEE) of carbon flux can be partitioned into gross primary productivity (GPP) and respiration (R). The contribution of remote sensing and modeling holds the potential to predict these components and map them spatially and temporally. This has obvious utility to quantify carbon sink and source relationships and to identify improved land management strategies for optimizing carbon sequestration. The objective of our study was to evaluate prediction of 14-day average daytime CO2 fluxes (F-day) and nighttime CO2 fluxes (R-n) using remote sensing and other data. F-day and R-n were measured with a Bowen ratio-energy balance (BREB) technique in a sagebrush (Artemisia spp.)-steppe ecosystem in northeast Idaho, USA, during 1996-1999. Micrometeorological variables aggregated across 14-day periods and time-integrated Advanced Very High Resolution Radiometer (AVHRR) Normalized Difference Vegetation Index (iNDVI) were determined during four growing seasons (1996 - 1999) and used to predict F-day and R-n. We found that iNDVI was a strong predictor of F-day (R-2=0.79, n=66, P<0.0001). Inclusion of evapotranspiration in the predictive equation led to improved predictions of F-day (R-2=0.82, n = 66, P < 0.0001). Crossvalidation indicated that regression tree predictions of F-day were prone to overfitting and that linear regression models were more robust. Multiple regression and regression tree models predicted R-n quite well (R-2 = 0.75 - 0.77, n = 66) with the regression tree model being slightly more robust in crossvalidation. Temporal mapping of F-day and R-n is possible with these techniques and would allow the assessment of NEE in sagebrush -steppe ecosystems. Simulations of periodic F-day measurements, as might be provided by a mobile flux tower, indicated that such measurements could be used in combination with iNDVI to accurately predict Fday. These periodic measurements could maximize the utility of expensive flux towers for evaluating various carbon management strategies, carbon certification, and validation and calibration of carbon flux models. (C) 2003 Elsevier Science Inc. All rights reserved. [References: 111]
机译:碳通量的净生态系统交换(NEE)可分为总初级生产力(GPP)和呼吸(R)。遥感和建模的贡献具有预测这些成分并在空间和时间上绘制它们的潜力。这显然可以量化碳汇和碳源的关系,并确定改进的土地管理策略以优化碳固存。我们研究的目的是使用遥感和其他数据评估对14天平均白天CO2通量(F-day)和夜间CO2通量(R-n)的预测。在1996年至1999年期间,在美国爱达荷州东北部的鼠尾草(Artemisia spp。)草原生态系统中,用Bowen比能量平衡(BREB)技术测量了F天和R-n。在四个生长季节(1996年至1999年)期间,确定了14天期间聚集的微气象变量和时间积分的先进超高分辨率辐射计(AVHRR)归一化植被指数(iNDVI),并用于预测F天和R-n。我们发现iNDVI是F天的有力预测指标(R-2 = 0.79,n = 66,P <0.0001)。将蒸散量包括在预测方程中可改善对F天的预测(R-2 = 0.82,n = 66,P <0.0001)。交叉验证表明,F天的回归树预测容易过拟合,而线性回归模型则更可靠。多元回归和回归树模型对R-n的预测很好(R-2 = 0.75-0.77,n = 66),而回归树模型在交叉验证中的鲁棒性更高。利用这些技术可以对F天和R-n进行时间映射,并可以评估鼠尾草-草原生态系统中的NEE。由移动通量塔提供的定期F天测量的模拟表明,此类测量可以与iNDVI结合使用,以准确地预测Fday。这些定期测量可以最大程度地利用昂贵的通量塔来评估各种碳管理策略,碳认证以及碳通量模型的验证和校准。 (C)2003 Elsevier Science Inc.保留所有权利。 [参考:111]

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