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Application of digital soil mapping methods for identifying salinity management classes based on a study on coastal central China.

机译:基于对中国中部沿海地区的研究,数字土壤测绘方法在识别盐分管理类别中的应用。

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摘要

In coastal China, there is an urgent need to increase land for agriculture. One solution is land reclamation from coastal tidelands, but soil salinization poses a problem. Thus, there is need to map saline areas and identify appropriate management strategies. One approach is the use of digital soil mapping. At the first stage, auxiliary data such as remotely sensed multispectral imagery can be used to identify areas of low agricultural productivity due to salinity. Similarly, proximal sensing instruments can provide data on the distribution of soil salinity. In this study, we first used multispectral QuickBird imagery (Bands 1-4) to provide information about crop growth and then EM38 data to indicate relative salt content using measurements of apparent soil electrical conductivity (ECa) in the horizontal (ECh) and vertical (ECv) modes of operation. Second, we used a fuzzy k-means (FKM) algorithm to identify three salinity management zones using the normalized difference vegetation index (NDVI), ECh and ECv/ECh. The three identified classes were statistically different in terms of auxiliary and topsoil properties (e.g. soil organic matter) and more importantly in terms of the distribution of soil salinity (ECe) with depth. The resultant three classes were mapped to demonstrate that remote and proximally sensed auxiliary data can be used as surrogates for identifying soil salinity management zones.
机译:在中国沿海,迫切需要增加农业用地。一种解决方案是从沿海潮滩开垦土地,但土壤盐碱化会带来问题。因此,需要绘制食盐区域图并确定适当的管理策略。一种方法是使用数字土壤制图。在第一阶段,可以使用诸如遥感多光谱图像之类的辅助数据来识别由于盐分造成的农业生产力低下的地区。同样,近端传感仪器可以提供有关土壤盐分分布的数据。在这项研究中,我们首先使用多光谱QuickBird影像(波段1-4)提供有关作物生长的信息,然后使用EM38数据通过测量表观土壤电导率(EC a )来指示相对盐含量。水平(EC h )和垂直(EC v )操作模式。其次,我们使用模糊k均值(FKM)算法使用归一化植被指数(NDVI),EC h 和EC v / EC识别三个盐度管理区 h 。三种确定的类别在辅助和表土特性(例如土壤有机质)方面在统计上是不同的,更重要的是在土壤盐分(EC e )随深度的分布方面。对由此产生的三个类别进行了映射,以证明远程和近端感测到的辅助数据可以用作识别土壤盐分管理区的替代物。

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