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首页> 外文期刊>Bulletin of engineering geology and the environment >SUSLE: a slope and seasonal rainfall-based RUSLE model for regional quantitative prediction of soil erosion
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SUSLE: a slope and seasonal rainfall-based RUSLE model for regional quantitative prediction of soil erosion

机译:Susle:基于斜坡和季节性降雨的区域定量预测土壤侵蚀的坡度

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摘要

The Revised Universal Soil Loss Equation (RUSLE) models are most widely used for quantitative prediction of soil erosion. However, these models have many shortcomings. For example, the annual total rainfall is often adopted, ignoring the inhomogeneity of seasonal rainfall. The adopted vegetation coverage indexes (VCIs) are usually the annual average vegetation coverage or VCIs obtained by monitoring on a specific day, ignoring the seasonal changes in VCIs during the year. In addition, the impact of slope on the conservation practices factor is not considered. To overcome these problem, this study aims to propose a seasonal and slope factor-based RUSLE (SUSLE) model that considers the seasonal changes in rainfall and VCIs and the effect of slope on the conservation practices factor. Based on GIS and remote sensing, the quantitative prediction of soil erosion in Ningdu County, Jiangxi Province, in 2017 is taken as a case study. The traditional RUSLE model and the proposed SUSLE model are analyzed and compared. Results show that the overall distribution characteristics of soil erosion in the two models are similar that the SUSLE model is more consistent than the RUSLE model in all erosion levels and that the prediction performances of the SUSLE model in the very low, moderate, and high erosion levels are better than those of the RUSLE model. The distribution characteristics of soil erosion in different periods and the relationships between soil erosion and environmental factors (e.g., slope and land use) under the SUSLE model are discussed. The results show that the maximum erosion area occurred in spring and the minimum area in autumn; the soil erosion amount on slopes of 8 similar to 25 degrees reached 65.14% of the total amount; bare grassland and cultivated land are the main land cover types impacted by soil erosion in Ningdu County.
机译:修订后的通用土壤损失方程(风格)模型最广泛地用于土壤侵蚀的定量预测。但是,这些模型有很多缺点。例如,经常采用年度降雨,忽略季节降雨的不均匀性。采用的植被覆盖率指数(VCIS)通常是通过在特定日期监测获得的年度平均植被覆盖范围或VCI,忽略了该年度VCIS的季节性变化。此外,不考虑坡度对保护实践因子的影响。为了克服这些问题,本研究旨在提出季节性和斜坡基于因子的风格(Susle)模型,其考虑降雨和VCIS的季节变化以及坡度对保护实践因子的影响。基于GIS和遥感,2017年江西省宁杜县土壤侵蚀的定量预测作为案例研究。分析和比较传统的风险模型和所提出的Susle模型。结果表明,两种型号的土壤侵蚀的总分布特征与苏尔德模型比所有侵蚀水平的风险模型更加一致,并且苏尔模型在非常低,中等和高侵蚀中的预测性能水平优于列出模型的水平。探讨了不同时期土壤侵蚀的分布特征及苏尔模型下土壤侵蚀与环境因素(例如,坡度和土地使用的关系。结果表明,秋季春季和最小面积发生了最大侵蚀区域; 8个与25度相似的土壤侵蚀量达到总量的65.14%;赤草地和耕地是宁都县土壤侵蚀影响的主要土地覆盖类型。

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