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Estimating Vegetation Primary Production in the Heihe River Basin of China with Multi-Source and Multi-Scale Data

机译:利用多源多尺度数据估算中国黑河流域的植被初级生产力

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摘要

Estimating gross primary production (GPP) and net primary production (NPP) are significant important in studying carbon cycles. Using models driven by multi-source and multi-scale data is a promising approach to estimate GPP and NPP at regional and global scales. With a focus on data that are openly accessible, this paper presents a GPP and NPP model driven by remotely sensed data and meteorological data with spatial resolutions varying from 30 m to 0.25 degree and temporal resolutions ranging from 3 hours to 1 month, by integrating remote sensing techniques and eco-physiological process theories. Our model is also designed as part of the Multi-source data Synergized Quantitative (MuSyQ) Remote Sensing Production System. In the presented MuSyQ-NPP algorithm, daily GPP for a 10-day period was calculated as a product of incident photosynthetically active radiation (PAR) and its fraction absorbed by vegetation (FPAR) using a light use efficiency (LUE) model. The autotrophic respiration (Ra) was determined using eco-physiological process theories and the daily NPP was obtained as the balance between GPP and Ra. To test its feasibility at regional scales, our model was performed in an arid and semi-arid region of Heihe River Basin, China to generate daily GPP and NPP during the growing season of 2012. The results indicated that both GPP and NPP exhibit clear spatial and temporal patterns in their distribution over Heihe River Basin during the growing season due to the temperature, water and solar influx conditions. After validated against ground-based measurements, MODIS GPP product (MOD17A2H) and results reported in recent literature, we found the MuSyQ-NPP algorithm could yield an RMSE of 2.973 gC m-2 d-1 and an R of 0.842 when compared with ground-based GPP while an RMSE of 8.010 gC m-2 d-1 and an R of 0.682 can be achieved for MODIS GPP, the estimated NPP values were also well within the range of previous literature, which proved the reliability of our modelling results. This research suggested that the utilization of multi-source data with various scales would help to the establishment of an appropriate model for calculating GPP and NPP at regional scales with relatively high spatial and temporal resolution.
机译:在研究碳循环中,估算初级总产值(GPP)和净初级产值(NPP)至关重要。使用由多源和多尺度数据驱动的模型是一种在区域和全球尺度上估计GPP和NPP的有前途的方法。本文着重于公开可访问的数据,提出了一种GPP和NPP模型,该模型由遥感数据和气象数据驱动,其空间分辨率从30 m到0.25度不等,时间分辨率从3小时到1个月不等。传感技术和生态生理过程理论。我们的模型还被设计为多源数据协同定量(MuSyQ)遥感生产系统的一部分。在提出的MuSyQ-NPP算法中,使用光利用效率(LUE)模型,将入射光合有效辐射(PAR)及其被植被吸收的分数(FPAR)的乘积计算为10天的每日GPP。使用生态生理过程理论确定自养呼吸(Ra),并获得每日NPP作为GPP和Ra之间的平衡。为了在区域规模上检验其可行性,我们的模型在中国黑河流域的干旱和半干旱地区进行,以在2012年的生长季节产生每日GPP和NPP。结果表明GPP和NPP均显示出清晰的空间温度,水和太阳潮的影响,黑河流域在生长期的分布和时空分布。经过针对地面测量,MODIS GPP产品(MOD17A2H)和最近文献报道的结果进行验证后,我们发现MuSyQ-NPP算法可以产生2.973 gC m -2 d -与基于地面的GPP相比为1 和R为0.842,而RMSE为8.010 gC m -2 d -1 和R为0.682为MODIS GPP实现的估计NPP值也处于先前文献的范围之内,这证明了我们建模结果的可靠性。这项研究表明,利用不同规模的多源数据将有助于建立一个合适的模型,以在具有相对较高的时空分辨率的区域尺度上计算GPP和NPP。

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