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首页> 外文期刊>Environmental Modelling & Software >Assimilating satellite imagery and visible-near infrared spectroscopy to model and map soil loss by water erosion in Australia
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Assimilating satellite imagery and visible-near infrared spectroscopy to model and map soil loss by water erosion in Australia

机译:吸收卫星图像和近红外光谱,以模拟和绘制澳大利亚水蚀造成的土壤流失

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Soil loss causes environmental degradation and reduces agricultural productivity over large areas of the world. Here, we use the latest earth observation data and soil visible-near infrared (vis-NIR) spectroscopy to estimate the factors of the Revised Universal Soil Loss Equation (RUSLE) and to model soil loss by water erosion in Australia. We estimate rainfall erosivity (R) using the Tropical Rainfall Measuring Mission (TRMM); slope length and steepness (L and S) using a 3-arcsec Shuttle Radar Topography Mission (SRTM) digital elevation model; cover management (C) and control practice (P) using the national dynamic land cover dataset (DLCD) of Australia derived from the moderate-resolution imaging spectroradiometer (MODIS); and soil erodibility (K) using vis-NIR estimates of the contents of sand, silt, clay and organic carbon in Australian soil. We model K using a machine-learning algorithm with environmental predictors selected to best capture the factors that influence erodibility and produced a digital map of K. We use the derived RUSLE factors to estimate soil loss at 1-km resolution across the whole of Australia. We found that the potential gross average soil loss by water erosion in Australian is 1.86 t ha(-1) y(-1) (95% confidence intervals of 1.78 and 1.93 t ha(-1) y(-1)), equivalent to a total of 1242 x 10(6) tonnes of soil lost annually (95% confidence intervals of 1195 and 1293 t x 106 y(-1)). Our estimates of erosion are generally smaller than previous continental estimates using the RUSLE, but particularly in croplands, which might indicate that soil conservation practices effectively reduced erosion in Australia. However we also identify localized regions with large erosion in northern Australia and northeastern Queensland. Erosion in these areas carries sediments laden with nitrogen, phosphorus and pollutants from agricultural production into the sea, negatively affecting marine ecosystems. We used the best available data and our results provide better estimates compared to previous assessments. Our approach will be valuable for other large, sparsely sampled areas of the world where assessments of soil erosion are needed. Crown Copyright (C) 2015 Published by Elsevier Ltd. All rights reserved.
机译:土壤流失会导致环境恶化,并降低世界各地的农业生产力。在这里,我们使用最新的地球观测数据和土壤可见-近红外(vis-NIR)光谱来估算修正的通用土壤流失方程(RUSLE)的因素,并通过澳大利亚的水蚀模型化土壤流失。我们使用热带降雨测量任务(TRMM)估算降雨侵蚀力(R);使用3弧度航天飞机雷达地形任务(SRTM)数字高程模型进行坡度和坡度(L和S);使用来自中分辨率成像光谱仪(MODIS)的澳大利亚国家动态土地覆盖数据集(DLCD)进行覆盖管理(C)和控制实践(P); vis-NIR估算澳大利亚土壤中沙,淤泥,粘土和有机碳的含量,从而得出土壤和土壤的可蚀性(K)。我们使用机器学习算法对K进行建模,并选择环境预测因子以最佳地捕获影响易蚀性的因素,并生成K的数字地图。我们使用导出的RUSLE因子来估算整个澳大利亚1 km分辨率下的土壤流失。我们发现,在澳大利亚,因水蚀造成的潜在平均土壤平均损失为1.86 t ha(-1)y(-1)(95%置信区间为1.78和1.93 t ha(-1)y(-1)),相当每年总共损失1242 x 10(6)吨土壤(95%置信区间1195和1293 tx 106 y(-1))。我们对侵蚀的估算通常比以前使用RUSLE估算的大陆要小,但特别是在农田中,这可能表明土壤保护措施有效地减少了澳大利亚的侵蚀。但是,我们还确定了澳大利亚北部和昆士兰州东北部侵蚀严重的局部地区。这些地区的侵蚀将含有氮,磷和来自农业生产的污染物的沉积物带入海洋,对海洋生态系统产生不利影响。与以前的评估相比,我们使用了最好的可用数据,并且我们的结果提供了更好的估计。我们的方法对于需要评估土壤侵蚀的世界上其他较大的,稀疏采样的区域将是有价值的。 Crown版权所有(C)2015,由Elsevier Ltd.发行。保留所有权利。

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