利用Ndvi多传感器数据分析大豆净初级生产力和干物质

G. Rodigheri, D. Fontana, L. P. Schaparini, G. A. Dalmago, J. Schirmbeck
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引用次数: 1

摘要

净初级生产力(NPP)是反映植被生长状况和生态系统健康状况的重要指标。NPP可以通过遥感数据,利用植被指数如NDVI来估算。然而,当使用多个轨道传感器时,该指数可能显示出系统差异。因此,本文的目的是比较不同传感器获得的NDVI数据,并评估其对大豆生物量和NPP估算的影响。NDVI数据由4个传感器记录,其中1个在野外,另外3个轨道传感器(Landsat 8/OLI、Sentine12/MSI和TerryMODIS)。利用田间实测资料,光合有效辐射(PAR)和干物质(DM),模拟了总DM和NPP。不同传感器的NDVI数据在整个周期内存在差异,但与参考数据相比,相关性大于0.84。DM与田间实测MS数据的相关系数为0.91,NPP与参考数据的差异高达$240~\ mathm {g}\ mathm {C}/\ mathm {m}^{2}/$月。因此,从多个传感器获得的NDVI可以用来估计NPP进行表面分析。然而,为了获得更一致的评价,需要在NDVI传感器数据和NDVI参考数据之间建立一个平差函数,从而使NPP估计与实际数据更好地相关。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Net Primary Productivity and Dry Matter in Soybean Cultivation Utilizing Datas of Ndvi Multi-Sensors
Net Primary Productivity (NPP) is an important indicator of vegetation growth status and ecosystems health. NPP can be estimated through remote sensing data, using vegetation indices such as NDVI. However, this index may show systematic differences when using several orbital sensors. Therefore, the objective of this paper was to compare the NDVI data obtained from different sensors and evaluate the impact over the soybean biomass and NPP estimates. NDVI data were recorded from 4 sensors, one on the field and others 3 orbitals sensors (Landsat 8/OLI, Sentine12/MSI and TerryMODIS). Measured data on the field, Photosynthetically Active Radiation (PAR) and Dry Matter (DM), were used to modeling the total DM and also NPP. The NDVI data from different sensors showed differences throughout the cycle, but compared to the reference data there was a correlation greater than 0.84. The DM presented a correlation of 0.91 with the field measured MS data while the NPP presented differences of up to $240~\mathrm {g}\mathrm {C}/\mathrm {m}^{2}/$month from in relation to the reference data. Therefore, NDVI obtained from multiple sensors can be used to estimate NPP for surface analysis. However, for more consistent evaluations, a function of adjustment between the NDVI sensor data and NDVI reference data is required, so that the NPP estimation be better correlated to the actual data.
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