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Retrieval and Mapping of Soil Texture Based on Land Surface Diurnal Temperature Range Data from MODIS

机译:基于MODIS的地表昼夜温度范围数据反演土壤质地

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摘要

Numerous studies have investigated the direct retrieval of soil properties, including soil texture, using remotely sensed images. However, few have considered how soil properties influence dynamic changes in remote images or how soil processes affect the characteristics of the spectrum. This study investigated a new method for mapping regional soil texture based on the hypothesis that the rate of change of land surface temperature is related to soil texture, given the assumption of similar starting soil moisture conditions. The study area was a typical flat area in the Yangtze-Huai River Plain, East China. We used the widely available land surface temperature product of MODIS as the main data source. We analyzed the relationships between the content of different particle soil size fractions at the soil surface and land surface day temperature, night temperature and diurnal temperature range (DTR) during three selected time periods. These periods occurred after rainfalls and between the previous harvest and the subsequent autumn sowing in 2004, 2007 and 2008. Then, linear regression models were developed between the land surface DTR and sand (> 0.05 mm), clay (< 0.001 mm) and physical clay (< 0.01 mm) contents. The models for each day were used to estimate soil texture. The spatial distribution of soil texture from the studied area was mapped based on the model with the minimum RMSE. A validation dataset produced error estimates for the predicted maps of sand, clay and physical clay, expressed as RMSE of 10.69%, 4.57%, and 12.99%, respectively. The absolute error of the predictions is largely influenced by variations in land cover. Additionally, the maps produced by the models illustrate the natural spatial continuity of soil texture. This study demonstrates the potential for digitally mapping regional soil texture variations in flat areas using readily available MODIS data.
机译:许多研究已经使用遥感图像研究了直接检索土壤特性(包括土壤质地)的方法。但是,很少有人考虑土壤特性如何影响远程图像的动态变化或土壤过程如何影响光谱特征。这项研究基于一种假设,即假设相似的起始土壤湿度条件,地表温度变化速率与土壤质地有关,从而研究了一种绘制区域土壤质地的新方法。研究区域是华东长江淮平原的典型平坦区域。我们使用MODIS广泛可用的地表温度产品作为主要数据源。我们分析了三个选定时间段内土壤表面不同粒径土壤颗粒含量与地表白天温度,夜间温度和昼夜温度范围(DTR)之间的关系。这些时期发生在降雨之后,在2004、2007和2008年的先前收获和随后的秋季播种之间。然后,在土地表面DTR和沙子(> 0.05 mm),黏土(<0.001 mm)和实物之间建立了线性回归模型。粘土(<0.01 mm)的含量。每天的模型用于估计土壤质地。基于最小均方根误差模型,绘制了研究区域土壤质地的空间分布。验证数据集对沙子,黏土和物理黏土的预测地图产生了误差估计,分别表示为RMSE的10.69%,4.57%和12.99%。预测的绝对误差在很大程度上受土地覆盖率变化的影响。此外,由模型生成的地图说明了土壤质地的自然空间连续性。这项研究证明了使用易于获得的MODIS数据对平坦地区的区域土壤质地变化进行数字地图绘制的潜力。

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