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本文引用的文献

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Interannual variations and trends in global land surface phenology derived from enhanced vegetation index during 1982-2010.1982 - 2010年期间基于增强植被指数得出的全球陆地表面物候的年际变化和趋势
Int J Biometeorol. 2014 May;58(4):547-64. doi: 10.1007/s00484-014-0802-z. Epub 2014 Mar 18.
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Increasing crop productivity to meet global needs for feed, food, and fuel.提高作物生产力以满足全球对饲料、食物和燃料的需求。
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Global food security: challenges and policies.全球粮食安全:挑战与政策
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Feeding the world in the twenty-first century.21世纪的全球粮食供应
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利用长期的高级甚高分辨率辐射计(AVHRR)和中分辨率成像光谱仪(MODIS)观测数据监测全球作物产量的年际变化

Monitoring interannual variation in global crop yield using long-term AVHRR and MODIS observations.

作者信息

Zhang Xiaoyang, Zhang Qingyuan

机构信息

Geospatial Sciences Center of Excellence (GSCE), Department of Geography, South Dakota State University, 1021 Medary Ave., Wecota Hall 506B, Brookings, SD 57007-3510, USA.

Universities Space Research Association, Columbia, MD 21044, USA.

出版信息

ISPRS J Photogramm Remote Sens. 2016 Apr;114:191-205. doi: 10.1016/j.isprsjprs.2016.02.010. Epub 2016 Mar 3.

DOI:10.1016/j.isprsjprs.2016.02.010
PMID:32713992
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC7380100/
Abstract

Advanced Very High Resolution Radiometer (AVHRR) and Moderate Resolution Imaging Spectroradiometer (MODIS) data have been extensively applied for crop yield prediction because of their daily temporal resolution and a global coverage. This study investigated global crop yield using daily two band Enhanced Vegetation Index (EVI2) derived from AVHRR (1981-1999) and MODIS (2000-2013) observations at a spatial resolution of 0.05° (~5 km). Specifically, EVI2 temporal trajectory of crop growth was simulated using a hybrid piecewise logistic model (HPLM) for individual pixels, which was used to detect crop phenological metrics. The derived crop phenology was then applied to calculate crop greenness defined as EVI2 amplitude and EVI2 integration during annual crop growing seasons, which was further aggregated for croplands in each country, respectively. The interannual variations in EVI2 amplitude and EVI2 integration were combined to correlate to the variation in cereal yield from 1982-2012 for individual countries using a stepwise regression model, respectively. The results show that the confidence level of the established regression models was higher than 90% ( value < 0.1) in most countries in the northern hemisphere although it was relatively poor in the southern hemisphere (mainly in Africa). The error in the yield predication was relatively smaller in America, Europe and East Asia than that in Africa. In the 10 countries with largest cereal production across the world, the prediction error was less than 9% during past three decades. This suggests that crop phenology-controlled greenness from coarse resolution satellite data has the capability of predicting national crop yield across the world, which could provide timely and reliable crop information for global agricultural trade and policymakers.

摘要

先进甚高分辨率辐射计(AVHRR)和中分辨率成像光谱仪(MODIS)数据因其每日时间分辨率和全球覆盖范围而被广泛应用于作物产量预测。本研究利用从AVHRR(1981 - 1999年)和MODIS(2000 - 2013年)观测数据中导出的每日双波段增强植被指数(EVI2),以0.05°(约5千米)的空间分辨率对全球作物产量进行了调查。具体而言,使用混合分段逻辑模型(HPLM)对单个像素的作物生长EVI2时间轨迹进行了模拟,该模型用于检测作物物候指标。然后,将导出的作物物候应用于计算作物绿度,作物绿度定义为年度作物生长季节期间的EVI2振幅和EVI2积分,分别进一步汇总每个国家的农田数据。利用逐步回归模型,将EVI2振幅和EVI2积分的年际变化分别与1982 - 2012年各国谷物产量的变化进行关联。结果表明,北半球大多数国家建立的回归模型置信水平高于90%( 值<0.1),尽管南半球(主要是非洲)相对较差。美洲、欧洲和东亚的产量预测误差比非洲相对较小。在全球谷物产量最大的10个国家中,过去三十年的预测误差小于9%。这表明,来自粗分辨率卫星数据的受作物物候控制的绿度有能力预测全球各国的作物产量,可为全球农产品贸易和政策制定者提供及时可靠的作物信息。