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Spatial modeling of soil salinity using remote sensing, GIS, and field data.

机译:使用遥感,GIS和现场数据对土壤盐分进行空间建模。

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摘要

In this study a new methodology was developed to generate accurate predicted soil salinity maps using remote sensing data. The techniques used include integrating field data, geographic information systems (GIS), remote sensing, and spatial modelling techniques. Corn and alfalfa crops were selected as indicators of soil salinity during 2001 and 2004 respectively. Five images were acquired from Aster, Ikonos, and Landsat to check the correlation between measured soil salinity and remote sensing data. Observed data from four corn fields during 2001 and four alfalfa fields during 2004 were used in conjunction with the Aster, Ikonos, and Landsat images. Three subsets of 75%, 50%, and 25% were randomly selected from each main set of observed data to be used in conjunction with the Ikonos and Landsat images.; Three models were applied to predict soil salinity from remote sensing: the ordinary least squares model (OLS), spatial autoregressive model (SAR), and modified kriging model. The combination of satellite imagery bands that had the best correlation with measured soil salinity was used to predict soil salinity. A number of criteria were used to select the best model. The results show that the modified kriging model provides the best results over the OLS and the SAR models. The OLS model meets the model selection criteria, but, in most cases, it involves some autocorrelation among the residuals. The SAR model was able to remove some of the autocorrelation among the residuals, but the R2 was reduced. The R 2 values of the OLS model were 0.34, 0.47, 0.52, 0.26, and 0.37 for the 2001 Aster, Landsat, Ikonos images for corn, the 2004 Landsat and Ikonos image for alfalfa respectively. The R2 values of the SAR model were 0.05, 0.18, 0.25. 0.03, and 0.15 for the same images. The R2 values of the modified kriging model were 0.81, 0.83, 0.91, 0.60 and 0.68 for the same images. Also, the mean absolute error (MAE) improved significantly when using modified kriging over the OLS and SAR models for all data sets. When the modified kriging model was applied to the subsets of data it showed encouraging results as well.
机译:在这项研究中,开发了一种使用遥感数据生成准确的预测土壤盐度图的新方法。使用的技术包括集成现场数据,地理信息系统(GIS),遥感和空间建模技术。 2001年和2004年分别选择了玉米和苜蓿作物作为土壤盐分的指标。从Aster,Ikonos和Landsat获得了五张图像,以检查测得的土壤盐度与遥感数据之间的相关性。将2001年的四个玉米田和2004年的四个苜蓿田的观测数据与Aster,Ikonos和Landsat影像结合使用。从每个主要的观测数据集中随机选择75%,50%和25%的三个子集,以与Ikonos和Landsat图像结合使用。应用了三种模型通过遥感预测土壤盐分:普通最小二乘模型(OLS),空间自回归模型(SAR)和改进的克里格模型。与测得的土壤盐度具有最佳相关性的卫星图像波段组合被用来预测土壤盐度。许多标准用于选择最佳模型。结果表明,改进的克里金模型比OLS和SAR模型提供了最佳结果。 OLS模型满足模型选择标准,但是在大多数情况下,它涉及残差之间的一些自相关。 SAR模型能够消除残差之间的一些自相关,但是R2降低了。对于玉米的2001 Aster,Landsat,Ikonos图像,对于苜蓿的2004 Landsat和Ikonos图像,OLS模型的R 2值分别为0.34、0.47、0.52、0.26和0.37。 SAR模型的R2值为0.05、0.18、0.25。 0.03,对于相同的图像为0.15。对于相同的图像,修改后的克里金模型的R2值分别为0.81、0.83、0.91、0.60和0.68。同样,在所有数据集上对OLS和SAR模型使用修正的克里金法时,平均绝对误差(MAE)也会显着提高。当将修改的克里金模型应用于数据子集时,它也显示出令人鼓舞的结果。

著录项

  • 作者

    Eldeiry, Ahmed Aly Mohamed.;

  • 作者单位

    Colorado State University.;

  • 授予单位 Colorado State University.;
  • 学科 Engineering Agricultural.; Remote Sensing.
  • 学位 Ph.D.
  • 年度 2006
  • 页码 141 p.
  • 总页数 141
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 农业工程;遥感技术;
  • 关键词

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