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首页> 外文期刊>Advances in civil engineering >Test of the RUSLE and Key Influencing Factors Using GIS and Probability Methods: A Case Study in Nanling National Nature Reserve, South China
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Test of the RUSLE and Key Influencing Factors Using GIS and Probability Methods: A Case Study in Nanling National Nature Reserve, South China

机译:使用GIS和概率方法测试风险和关键影响因素:南林南岭国家自然保护区案例研究

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摘要

The main purposes of the study were to test the performance of the Revised Universal Soil Loss Equation (RUSLE) and to understand the key factors responsible for generating soil erosion in the Nanling National Nature Reserve (NNNR), South China, where soil erosion has become a very serious ecological and environmental problem. By combining the RUSLE and geographic information system (GIS) data, we first produced a map of soil erosion risk at 30?m-resolution pixel level with predicted factors. We then used consecutive Landsat 8 satellite images to obtain the spatial distribution of four types of soil erosion and carried out ground truth checking of the RUSLE. On this basis, we innovatively developed a probability model to explore the relationship between four types of soil erosion and the key influencing factors, identify high erosion area, and analyze the reason for the differences derived from the RUSLE. The results showed that the overall accuracy of image interpretation was acceptable, which could be used to represent the currently actual spatial distribution of soil erosion. Ground truth checking indicated some differences between the spatial distribution and class of soil erosion derived from the RUSLE and the actual situation. The performance of the RUSLE was unsatisfactory, producing differences and even some errors when used to estimate the ecological risks posed by soil erosion within the NNNR. We finally produced a probability table revealing the degree of influence of each factor on different types of soil erosion and quantitatively elucidated the reason for generating these differences. We suggested that soil erosion type and the key influencing factors should be identified prior to soil erosion risk assessment in a region.
机译:该研究的主要目的是测试修订后的通用土壤损失方程(风格)的性能,并了解负责在南林国家自然保护区(NNNR)的土壤侵蚀的关键因素,土壤侵蚀已成为一个非常严重的生态和环境问题。通过组合风险和地理信息系统(GIS)数据,我们首先在具有预测因素的情况下在30架分辨率的像素级别产生土壤侵蚀风险的地图。然后我们使用连续的Landsat 8卫星图像,以获得四种类型的土壤侵蚀的空间分布,并进行了对列的实践检查。在此基础上,我们创新开发了一种探索概率模型,探讨了四种土壤侵蚀和关键影响因素之间的关系,识别高侵蚀区域,并分析了来自风险的差异的原因。结果表明,图像解释的总体准确性是可以接受的,这可用于代表土壤侵蚀的目前实际的空间分布。地面真理检查表明,空间分布与来自风险的土壤侵蚀等阶级之间的一些差异。当用于估计NNNR内土壤侵蚀构成的生态风险时,风险的性能不令人满意,产生差异,甚至一些错误。我们终于产生了一种概率表,揭示了每个因素对不同类型的土壤侵蚀的影响程度,并定量阐明了产生这些差异的原因。我们建议在区域土壤侵蚀风险评估之前确定土壤侵蚀类型和关键的影响因素。

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