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The relationship between soil nutrient properties and remote sensing indices in the Phaeozem region of Northeast China

机译:东北蓬子带地区土壤养分特征与遥感指标的关系。

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This study analyzed the relationships between soil nutrient characters and remote sensing image of the farmland in the Phaeozem region of Northeast China by GIS and canonical correlation analysis. The results showed that the two sets of variables, i.e. remote sensing indices and soil nutrient indices, had significantly correlative relationship (P<0.05) and the first canonical variable of remote sensing indices (W1) was significantly correlated with the first canonical variable of soil nutrient properties (V1) (r=0.72). In other words, it was a feasible and efficient way to estimate soil fertilizer level by analyzing remote sensing indices. SDI ( SWIR Difference Index ) dominated W1 and V1 was directly influenced by SOC, nitrogen, potassium and coarse sand. At the same time, it indicated that SDI had significant relationship with SOC and total N, and SDI was the best index among all the remote sensing indices for evaluating soil nutrient status.
机译:利用GIS和典范的相关性分析方法,分析了中国东北地区博爱地区农田土壤养分特征与遥感影像之间的关系。结果表明,遥感指数和土壤养分指数这两个变量具有显着的相关性(P <0.05),遥感指数的第一个典型变量(W1)与土壤的第一个典型变量显着相关。营养特性(V1)(r = 0.72)。换句话说,这是通过分析遥感指数估算土壤肥料水平的一种可行而有效的方法。 SDI(SWIR差异指数)主导的W1和V1直接受到SOC,氮,钾和粗砂的影响。同时,表明SDI与SOC和总氮有显着关系,在所有遥感指标中,SDI是评价土壤养分状况的最佳指标。

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