Xu Yiming, Smith Scot E, Grunwald Sabine, Abd-Elrahman Amr, Wani Suhas P, Nair Vimala D
Department of Environmental Science and Engineering, Beijing Technology and Business University, Beijing, 100048, China.
School of Natural Resource and Environment, University of Florida, 103 Black Hall, PO Box 116455, Gainesville, FL, 32611, USA.
Environ Monit Assess. 2017 Sep 11;189(10):502. doi: 10.1007/s10661-017-6212-z.
Digital soil mapping (DSM) is gaining momentum as a technique to help smallholder farmers secure soil security and food security in developing regions. However, communications of the digital soil mapping information between diverse audiences become problematic due to the inconsistent scale of DSM information. Spatial downscaling can make use of accessible soil information at relatively coarse spatial resolution to provide valuable soil information at relatively fine spatial resolution. The objective of this research was to disaggregate the coarse spatial resolution soil exchangeable potassium (K) and soil total nitrogen (TN) base map into fine spatial resolution soil downscaled map using weighted generalized additive models (GAMs) in two smallholder villages in South India. By incorporating fine spatial resolution spectral indices in the downscaling process, the soil downscaled maps not only conserve the spatial information of coarse spatial resolution soil maps but also depict the spatial details of soil properties at fine spatial resolution. The results of this study demonstrated difference between the fine spatial resolution downscaled maps and fine spatial resolution base maps is smaller than the difference between coarse spatial resolution base maps and fine spatial resolution base maps. The appropriate and economical strategy to promote the DSM technique in smallholder farms is to develop the relatively coarse spatial resolution soil prediction maps or utilize available coarse spatial resolution soil maps at the regional scale and to disaggregate these maps to the fine spatial resolution downscaled soil maps at farm scale.
数字土壤制图(DSM)作为一种帮助发展中地区小农户保障土壤安全和粮食安全的技术,正日益受到关注。然而,由于DSM信息尺度不一致,不同受众之间的数字土壤制图信息交流变得困难。空间降尺度可以利用相对粗略空间分辨率下可获取的土壤信息,来提供相对精细空间分辨率下有价值的土壤信息。本研究的目的是在印度南部的两个小农户村庄,使用加权广义相加模型(GAMs),将粗略空间分辨率的土壤交换性钾(K)和土壤全氮(TN)底图分解为精细空间分辨率的土壤降尺度图。通过在降尺度过程中纳入精细空间分辨率的光谱指数,土壤降尺度图不仅保留了粗略空间分辨率土壤图的空间信息,还描绘了精细空间分辨率下土壤属性的空间细节。本研究结果表明,精细空间分辨率降尺度图与精细空间分辨率底图之间的差异小于粗略空间分辨率底图与精细空间分辨率底图之间的差异。在小农户农场推广DSM技术的合适且经济的策略是,开发相对粗略空间分辨率的土壤预测图,或利用区域尺度上现有的粗略空间分辨率土壤图,并将这些图分解为农场尺度上精细空间分辨率的土壤降尺度图。