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首页> 外文期刊>Agricultural and Forest Meteorology >Modeling gross primary production of irrigated and rain-fed maize using MODIS imagery and CO2 flux tower data.
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Modeling gross primary production of irrigated and rain-fed maize using MODIS imagery and CO2 flux tower data.

机译:利用MODIS影像和CO 2 流量塔数据对灌溉和雨养玉米的总初级生产进行建模。

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摘要

Information on gross primary production (GPP) of maize croplands is needed for assessing and monitoring maize crop conditions and the carbon cycle. A number of studies have used the eddy covariance technique to measure net ecosystem exchange (NEE) of CO2 between maize cropland fields and the atmosphere and partitioned NEE data to estimate seasonal dynamics and interannual variation of GPP in maize fields having various crop rotation systems and different water management practices. How to scale up in situ observations from flux tower sites to regional and global scales is a challenging task. In this study, the Vegetation Photosynthesis Model (VPM) and satellite images from the Moderate Resolution Imaging Spectroradiometer (MODIS) are used to estimate seasonal dynamics and interannual variation of GPP during 2001-2005 at five maize cropland sites located in Nebraska and Minnesota of the U.S.A. These sites have different crop rotation systems (continuously maize vs. maize and soybean rotated annually) and different water management practices (irrigation vs. rain-fed). The VPM is based on the concept of light absorption by chlorophyll and is driven by the Enhanced Vegetation Index (EVI) and the Land Surface Water Index (LSWI), photosynthetically active radiation (PAR), and air temperature. The seasonal dynamics of GPP predicted by the VPM agreed well with GPP estimates from eddy covariance flux tower data over the period of 2001-2005. These simulation results clearly demonstrate the potential of the VPM to scale-up GPP estimation of maize cropland, which is relevant to food, biofuel, and feedstock production, as well as food and energy security.
机译:评估和监测玉米的作物状况和碳循环需要有关玉米农田的初级生产总值(GPP)的信息。许多研究已经使用涡度协方差技术来测量玉米农田和大气之间的CO 2 的净生态系统交换(NEE),并划分了NEE数据来估计玉米GPP的季节动态和年际变化。各种作物轮作系统和不同水管理实践的领域。如何将通量塔站点的原地观测扩大到区域和全球范围是一项艰巨的任务。在这项研究中,植被光合作用模型(VPM)和中分辨率成像光谱仪(MODIS)的卫星图像被用于估计2001-2005年内布拉斯加州和明尼苏达州的五个玉米农田的GPP动态和年际变化。美国这些地点的作物轮作制度不同(每年玉米与玉米和大豆轮作),水管理方式也不同(灌溉与雨水灌溉)。 VPM基于叶绿素吸收光的概念,并由增强植被指数(EVI)和地表水指数(LSWI),光合有效辐射(PAR)和气温驱动。由VPM预测的GPP的季节动态与GPP从2001-2005年期间的涡度协方差通量塔数据得出的估计非常吻合。这些模拟结果清楚地表明了VPM潜在地扩大了GPP对玉米农田的估计,这与粮食,生物燃料和原料生产以及粮食和能源安全有关。

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