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首页> 外文期刊>Arid Land Research and Management >Remote Sensing of Soil Organic Carbon in Semi-Arid Region of Iran
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Remote Sensing of Soil Organic Carbon in Semi-Arid Region of Iran

机译:伊朗半干旱地区土壤有机碳的遥感

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摘要

The soil organic carbon (SOC) concentration is a crucial soil property to guide agricultural applications. Researchers have used remotely sensed data to estimate and quantify the SOC content. Our objective is to compare the performance of the existing techniques of simple regression models (SRM), principal component analysis (PCA), and the soil line approach in SOC estimation in a semi-arid environment. Models were developed between dependent variables of SOC and independent variables of digital value of soil reflectance in satellite bands, Euclidian distance from soil line (D), and first principal component (PC1). The SRM technique provided the most accurate SOC predictions (R2Â =Â 0.75) but the accuracy for PCA and soil line techniques were R2Â <Â 0.44. Our result reveals the SRM technique can be used in management decision making when the cost and rate of mapping procedure is more important than SOC measurement accuracy.
机译:土壤有机碳(SOC)浓度是指导农业应用的重要土壤特性。研究人员已使用遥感数据估算和量化SOC含量。我们的目标是在半干旱环境中比较简单回归模型(SRM),主成分分析(PCA)和土壤线方法在SOC估计中的现有技术的性能。建立了SOC因变量和卫星波段土壤反射率数字值的自变量,距土壤线的欧几里得距离(D)和第一主成分(PC1)之间的模型。 SRM技术提供了最准确的SOC预测(R 2 = 0.75),但PCA和土壤线技术的精度为R 2 <0.44。我们的结果表明,当映射过程的成本和速率比SOC测量精度更重要时,SRM技术可用于管理决策。

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