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Mapping paddy rice planting areas through time series analysis of MODIS land surface temperature and vegetation index data

机译:通过MODIS地表温度和植被指数数据的时间序列分析绘制水稻种植区图

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摘要

Knowledge of the area and spatial distribution of paddy rice is important for assessment of food security, management of water resources, and estimation of greenhouse gas (methane) emissions. Paddy rice agriculture has expanded rapidly in northeastern China in the last decade, but there are no updated maps of paddy rice fields in the region. Existing algorithms for identifying paddy rice fields are based on the unique physical features of paddy rice during the flooding and transplanting phases and use vegetation indices that are sensitive to the dynamics of the canopy and surface water content. However, the flooding phenomena in high latitude area could also be from spring snowmelt flooding. We used land surface temperature (LST) data from the Moderate Resolution Imaging Spectroradiometer (MODIS) sensor to determine the temporal window of flooding and rice transplantation over a year to improve the existing phenology-based approach. Other land cover types (e.g., evergreen vegetation, permanent water bodies, and sparse vegetation) with potential influences on paddy rice identification were removed (masked out) due to their different temporal profiles. The accuracy assessment using high-resolution images showed that the resultant MODIS-derived paddy rice map of northeastern China in 2010 had a high accuracy (producer and user accuracies of 92% and 96%, respectively). The MODIS-based map also had a comparable accuracy to the 2010 Landsat-based National Land Cover Dataset (NLCD) of China in terms of both area and spatial pattern. This study demonstrated that our improved algorithm by using both thermal and optical MODIS data, provides a robust, simple and automated approach to identify and map paddy rice fields in temperate and cold temperate zones, the northern frontier of rice planting.
机译:了解水稻的面积和空间分布对于评估粮食安全,水资源管理以及估算温室气体(甲烷)排放量非常重要。在过去十年中,东北中国的水稻农业发展迅速,但该地区没有更新的水稻田图。现有的识别稻田的算法是基于水稻在洪水和移栽阶段的独特物理特征,并使用对冠层动态和地表水分敏感的植被指数。但是,高纬度地区的洪水现象也可能来自春季融雪洪水。我们使用中等分辨率成像光谱仪(MODIS)传感器提供的地表温度(LST)数据来确定一年中洪水和水稻移植的时间窗,以改进现有的基于物候学的方法。由于其时空分布不同,其他可能对水稻识别产生影响的土地覆被类型(例如常绿植被,永久水体和稀疏植被)被去除(被掩盖)。使用高分辨率图像进行的准确性评估表明,由此得出的2010年中国东北部MODIS衍生的水稻地图具有较高的准确性(生产者和用户的准确度分别为92%和96%)。基于MODIS的地图在面积和空间格局方面的准确性也与2010年基于Landsat的中国国家土地覆盖数据集(NLCD)相当。这项研究表明,我们通过同时使用热和光学MODIS数据改进了算法,为在水稻种植的北部边境的温带和冷温带地区识别和绘制水稻田提供了一种鲁棒,简单和自动化的方法。

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