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Automated cropland mapping of continental Africa using Google Earth Engine cloud computing

机译:使用Google Earth Engine云计算自动绘制非洲大陆的农田

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The automation of agricultural mapping using satellite-derived remotely sensed data remains a challenge in Africa because of the heterogeneous and fragmental landscape, complex crop cycles, and limited access to local knowledge. Currently, consistent, continent-wide routine cropland mapping of Africa does not exist, with most studies focused either on certain portions of the continent or at most a one-time effort at mapping the continent at coarse resolution remote sensing. In this research, we addressed these limitations by applying an automated cropland mapping algorithm (ACMA) that captures extensive knowledge on the croplands of Africa available through: (a) ground-based training samples, (b) very high (sub meter to five-meter) resolution imagery (VHRI), and (c) local knowledge captured during field visits and/or sourced from country reports and literature. The study used 16-day time-series of Moderate Resolution Imaging Spectroradiometer (MODIS) normalized difference vegetation index (NDVI) composited data at 250-m resolution for the entire African continent. Based on these data, the study first produced accurate reference cropland layers or RCLs (cropland extent/areas, irrigation versus rainfed, cropping intensities, crop dominance, and croplands versus cropland fallows) for the year 2014 that provided an overall accuracy of around 90% for crop extent in different agro-ecological zones (AEZs). The RCLs for the year 2014 (RCL2014) were then used in the development of the ACMA algorithm to create ACMA-derived cropland layers for 2014 (ACL2014). ACL2014 when compared pixel-by-pixel with the RCL2014 had an overall similarity greater than 95%. Based on the ACL2014, the African continent had 296 Mha of net cropland areas (260 Mha cultivated plus 36 Mha fallows) and 330 Mha of gross cropland areas. Of the 260 Mha of net cropland areas cultivated during 2014, 90.6% (236 Mha) was rainfed and just 9.4% (24 Mha) was irrigated. Africa has about 15% of the world's population, but only about 6% of world's irrigation. Net cropland area distribution was 95 Mha during season 1, 117 Mha during season 2, and 84 Mha continuous. About 58% of the rainfed and 39% of the irrigated were single crops (net cropland area without cropland fallows) cropped during either season 1 (January-May) or season 2 (June September). The ACMA algorithm was deployed on Google Earth Engine (GEE) cloud computing platform and applied on MODIS time-series data from 2003 through 2014 to obtain ACMA-derived cropland layers for these years (ACL2003 to ACL2014). The results indicated that over these twelve years, on average: (a) croplands increased by 1 Mha/yr, and (b) cropland fallows decreased by 1 Mha/year. Cropland areas computed from ACL2014 for the 55 African countries were largely underestimated when compared with an independent source of census-based cropland data, with a root-mean-square error (RMSE) of 3.5 Mha. ACMA demonstrated the ability to hind-cast (past years), now-cast (present year), and forecast (future years) cropland products using MODIS 250-m time-series data rapidly, but currently, insufficient reference data exist to rigorously report trends from these results. (C) 2017 The Authors. Published by Elsevier B.V. on behalf of International Society for Photogrammetry and Remote Sensing, Inc. (ISPRS).
机译:在非洲,使用卫星遥感数据进行农业制图的自动化仍然是一个挑战,这是因为景观的异质性和零散性,复杂的农作周期以及对本地知识的获取有限。目前,非洲尚无一致的,遍及整个非洲大陆的常规农田地图,大多数研究都集中在该大陆的某些地区,或至多一次以粗分辨率遥感对非洲进行地图绘制。在这项研究中,我们通过应用自动耕地制图算法(ACMA)来解决这些局限性,该算法可通过以下方式获取有关非洲耕地的广泛知识:(a)地面训练样本,(b)很高(亚米至五米)分辨率图像(VHRI),以及(c)实地访问期间捕获的和/或来自国家报告和文献的本地知识。该研究使用了整个非洲大陆中分辨率为250 m的中等分辨率成像光谱仪(MODIS)归一化植被指数(NDVI)复合数据的16天时间序列。根据这些数据,该研究首先得出了2014年的准确参考耕地层数或RCL(耕地范围/面积,灌溉与雨养,耕种强度,作物优势以及耕地与耕地休耕地),其总体准确度约为90%不同农业生态区(AEZ)中的作物范围。然后将2014年的RCL(RCL2014)用于ACMA算法的开发,以创建2014年ACMA衍生的农田层(ACL2014)。将ACL2014与RCL2014逐像素进行比较时,总体相似度大于95%。根据ACL2014,非洲大陆的净耕地面积为296 Mha(耕种为260 Mha,休耕地为36 Mha),耕地总面积为330 Mha。 2014年耕种的260兆公顷净农田中,有90.6%(236兆公顷)是通过雨水灌溉的,仅有9.4%(24兆公顷)是灌溉的。非洲约占世界人口的15%,但仅占世界灌溉量的6%。净耕地面积分布在第一季为95 Mha,第二季为117 Mha,连续为84 Mha。在第1季(1月至5月)或第2季(9月)期间,大约58%的雨养和39%的灌溉是单种作物(没有耕地休耕的净耕地面积)。 ACMA算法已部署在Google Earth Engine(GEE)云计算平台上,并应用于2003年至2014年的MODIS时间序列数据,以获取这些年(ACL2003至ACL2014)的ACMA衍生耕地层。结果表明,在这十二年中,平均而言:(a)耕地增加了1 Mha /年,(b)耕地休闲减少了1 Mha /年。与基于普查的耕地数据的独立来源相比,根据ACL2014计算得出的55个非洲国家的耕地面积被大大低估了,均方根误差(RMSE)为3.5 Mha。 ACMA使用MODIS 250-m时间序列数据展示了快速预测(过去的年份),现在预测的(当前年份)和预报(未来的年份)农田产品的能力,但是目前,尚无足够的参考数据来严格报告这些结果的趋势。 (C)2017作者。由Elsevier B.V.代表国际摄影测量与遥感学会(ISPRS)发布。

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