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COMPARISON AND UNCERTAINTY ANALYSIS IN REMOTE SENSING BASED PRODUCTION EFFICIENCY MODELS

机译:基于遥感的生产效率模型的比较与不确定性分析

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The remote sensing based Production Efficiency Models (PEMs), springs from the concept of "Light Use Efficiency" and has been applied more and more in estimating terrestrial Net Primary Productivity (NPP) regionally and globally. However, global NPP estimats vary greatly among different models in different data sources and handling methods. Because direct observation or measurement of NPP is unavailable at global scale, the precision and reliability of the models cannot be guaranteed. Though, there are ways to improve the accuracy of the models from input parameters. In this study, five remote sensing based PEMs have been compared: CASA, GLO-PEM, TURC, SDBM and VPM. We divided input parameters into three categories, and analyzed the uncertainty of (1) vegetation distribution, (2) fraction of photosynthetically active radiation absorbed by the canopy (fPAR), (3) light use efficiency (ε), and (4) spatial interpolation of meteorology measurements. Ground measurements of Hulunbeier typical grassland and meteorology measurements were introduced for accuracy evaluation. Results show that a real-time, more accurate vegetation distribution could significantly affect the accuracy of the models, since it's applied directly or indirectly in all models and affects other parameters simultaneously. Higher spatial and spectral resolution remote sensing data may reduce uncertainty of fPAR up to 51.3%, which is essential to improve model accuracy. We also figured out a vegetation distribution based on Maximum value of light use efficiency (ε~*) and ANUSPLIN method for spatial interpolation of meteorology measurement is also an effective way to improve the accuracy of remote sensing based PEMs.
机译:基于遥感的基于生产效率模型(PEMS),从“轻盈使用效率”的概念中弹簧,并且越来越多地应用了区域和全球估算地面净初级生产率(NPP)。然而,全球NPP估计在不同的数据源和处理方法中的不同模型中变化很大。因为NPP的直接观察或测量在全球范围内不可用,因此无法保证模型的精度和可靠性。虽然,有方法可以从输入参数提高模型的准确性。在这项研究中,比较了五种基于遥感的PEM:Casa,Glo-Pem,Turc,SDBM和VPM。我们将输入参数分为三类,分析了(1)植被分布的不确定性,(2)由冠层(FPAR)吸收的光合作用辐射的分数,(3)光使用效率(ε)和(4)空间气象测量的插值。引入了呼伦贝尔典型草地和气象测量的地面测量,以获得准确性评估。结果表明,实时,更准确的植被分布可能会显着影响模型的准确性,因为它在所有模型中直接或间接应用,并同时影响其他参数。较高的空间和光谱分辨率遥感数据可能会降低FPAS的不确定性高达51.3%,这对于提高模型精度至关重要。我们还弄清了基于光利用效率(ε〜*)的最大值(ε〜*)的植被分布,气象学空间内插的Anusplin方法也是提高基于遥感的PEM精度的有效方法。

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