首页> 外文期刊>European Journal of Remote Sensing >Evaluation of Landsat TM5 Multispectral Data for Automated Mapping of Surface Soil Texture and Organic Matter in GIS
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Evaluation of Landsat TM5 Multispectral Data for Automated Mapping of Surface Soil Texture and Organic Matter in GIS

机译:GIS中Landsat TM5多光谱数据用于自动绘制表层土壤质地和有机质的评估

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Mapping fine scale spatial variations of soil properties is important for site specific agriculture. The current study explores the potentials of remote sensing (RS) and geographical information system (GIS) techniques in studying the spatial variability of surface soil attributes. Around 170 surface (0?¢????30 cm) soil samples collected from the soils of Shorkot Tehsil, Punjab, Pakistan were analyzed for surface soil texture and organic matter (O.M.). A multivariate linear regression (MLR) analysis technique was employed to relate surface soil variables with the spectral data from Landsat TM5 satellite. The MLR analysis showed significant (p<0.05) relationship of band 4 and band 6 with silt% (R 2 = 0.724) and clay% (R 2 = 0.509) while soil O.M. was best modeled using data from band 1, 6 and 7 (R 2 = 0.545). The resulting MLR equations were then used for the spatial modeling of these attributes for the entire study area. For developing surface soil texture map, the USDA textural triangle limits for clay% and silt% were used to develop a code in Visual Basic Language in ArcGIS environment. The results showed that ?¢????sandy clay loam?¢???? was the most abundant textural class in the area followed by ?¢????sandy loam?¢???? and ?¢????clay loam?¢???? classes. Moreover, the status of O.M. in the entire study area soils was very poor (<1%). The results indicate that RS and GIS techniques could be successfully used for fine scale mapping of soil texture and O.M. of a larger area.
机译:绘制土壤性质的精细尺度空间变化对于特定地点的农业很重要。当前的研究探索了遥感(RS)和地理信息系统(GIS)技术在研究表层土壤属性的空间变异性方面的潜力。分析了从巴基斯坦旁遮普邦的Shorkot Tehsil的土壤中收集的大约170个表层土壤(0×30 cm),分析了其表面土壤质地和有机质(O.M.)。运用多元线性回归(MLR)分析技术将地表土壤变量与Landsat TM5卫星的光谱数据相关联。 MLR分析显示,带4和带6与粉土%(R 2 = 0.724)和黏土%(R 2 = 0.509)之间显着(p <0.05)关系,而土壤O.M。最好使用波段1,波段6和波段7(R 2 = 0.545)的数据进行建模。然后将所得的MLR方程用于整个研究区域的这些属性的空间建模。为了开发表面土壤质地贴图,使用了USDA的粘土%和粉砂%的纹理三角形限制在ArcGIS环境中以Visual Basic语言开发代码。结果表明,“桑迪粘土壤土”是什么?是该地区最丰富的纹理课程,其次是“桑迪壤土”?和?¢ ????粘土壤土?¢ ????类。此外,O.M。的地位在整个研究区域中,土壤非常贫瘠(<1%)。结果表明,RS和GIS技术可以成功地用于土壤质地和土壤的精细比例制图。更大的面积。

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