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Comparison between remote sensing and a dynamic vegetation model for estimating terrestrial primary production of Africa

机译:遥感和动态植被模型估算非洲陆地初级生产之间的比较

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Background Africa is an important part of the global carbon cycle. It is also a continent facing potential problems due to increasing resource demand in combination with climate change-induced changes in resource supply. Quantifying the pools and fluxes constituting the terrestrial African carbon cycle is a challenge, because of uncertainties in meteorological driver data, lack of validation data, and potentially uncertain representation of important processes in major ecosystems. In this paper, terrestrial primary production estimates derived from remote sensing and a dynamic vegetation model are compared and quantified for major African land cover types. Results Continental gross primary production estimates derived from remote sensing were higher than corresponding estimates derived from a dynamic vegetation model. However, estimates of continental net primary production from remote sensing were lower than corresponding estimates from the dynamic vegetation model. Variation was found among land cover classes, and the largest differences in gross primary production were found in the evergreen broadleaf forest. Average carbon use efficiency (NPP/GPP) was 0.58 for the vegetation model and 0.46 for the remote sensing method. Validation versus in situ data of aboveground net primary production revealed significant positive relationships for both methods. A combination of the remote sensing method with the dynamic vegetation model did not strongly affect this relationship. Conclusion Observed significant differences in estimated vegetation productivity may have several causes, including model design and temperature sensitivity. Differences in carbon use efficiency reflect underlying model assumptions. Integrating the realistic process representation of dynamic vegetation models with the high resolution observational strength of remote sensing may support realistic estimation of components of the carbon cycle and enhance resource monitoring, providing suitable validation data is available.
机译:背景技术非洲是全球碳循环的重要组成部分。由于资源需求增加,加上气候变化引起的资源供应变化,该大陆也面临潜在问题。由于气象驱动因素数据的不确定性,缺乏验证数据以及主要生态系统中重要过程的潜在不确定性,量化构成非洲陆地碳循环的池和通量是一项挑战。在本文中,对来自非洲遥感和动态植被模型的地面初级生产估算进行了比较,并对非洲主要土地覆盖类型进行了量化。结果遥感得出的大陆初级总产值估算值高于动态植被模型得出的相应估算值。然而,遥感对大陆净初级生产力的估计低于动态植被模型的相应估计。土地覆盖类别之间存在差异,而常绿阔叶林的初级生产总值差异最大。植被模型的平均碳使用效率(NPP / GPP)为0.58,遥感方法为0.46。地上净初级生产量的验证与现场数据表明,两种方法均具有显着的正相关关系。遥感方法与动态植被模型的结合并没有强烈影响这种关系。结论观察到的估计植被生产力的显着差异可能有多种原因,包括模型设计和温度敏感性。碳使用效率的差异反映了基础模型的假设。将动态植被模型的真实过程表示与高分辨率的遥感观测强度相结合,可以提供对碳循环各组成部分的真实估算并增强资源监控,前提是可以提供合适的验证数据。

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