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Estimation of soil loss using remote sensing and GIS-based universal soil loss equation in northern catchment of Lake Tana Sub-basin, Upper Blue Nile Basin, Northwest Ethiopia

机译:塔纳湖河河河北部北集水遥感和基于GIS通用土壤损失方程的土壤损失估算

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Background Soil erosion is one of the major environmental?challenges and has a significant impact on potential land productivity and food security in many highland regions of Ethiopia. Quantifying and identifying the spatial patterns of soil erosion is important for management. The present study aims to estimate soil erosion by water in the Northern catchment of Lake Tana basin in the NW highlands of Ethiopia. The estimations are based on available data through the application of the Universal Soil Loss Equation integrated with Geographic Information System and remote sensing technologies. The study further explored the effects of land use and land cover, topography, soil erodibility, and drainage density on soil erosion rate in the catchment. Results The total estimated soil loss in the catchment was 1,705,370 tons per year and the mean erosion rate was 37.89 t ha~(?1)?year~(?1), with a standard deviation of 59.2 t ha~(?1)year~(?1). The average annual soil erosion rare for the sub-catchments Derma, Megech, Gumara, Garno, and Gabi Kura were estimated at 46.8, 40.9, 30.9, 30.0, and 29.7 t ha~(?1)year~(?1), respectively. Based on estimated erosion rates in the catchment, the grid cells were divided into five different erosion severity classes: very low, low, moderate, high and extreme. The soil erosion severity map showed about 58.9% of the area was in very low erosion potential (0–1 t ha~(?1)year~(?1)) that contributes only 1.1% of the total soil loss, while 12.4% of the areas (36,617?ha) were in high and extreme erosion potential with erosion rates of 10 t ha~(?1)year~(?1)or more that contributed about 82.1% of the total soil loss in the catchment which should be a high priority. Areas with high to extreme erosion severity classes were mostly found in Megech, Gumero and Garno sub-catchments. Results of Multiple linear regression analysis showed a relationship between soil erosion rate (A) and USLE factors that soil erosion rate was most sensitive to the topographic factor (LS) followed by the support practice (P), soil erodibility (K), crop management (C) and rainfall erosivity factor (R). Barenland showed the most severe erosion, followed by croplands and plantation forests in the catchment. Conclusions Use of the erosion severity classes coupled with various individual factors can help to understand the primary processes affecting erosion and spatial patterns in the catchment. This could be used for the site-specific implementation of effective soil conservation practices and land use plans targeted in erosion-prone locations to control soil erosion.
机译:背景技术土壤侵蚀是主要的环境之一?挑战,对埃塞俄比亚许多高地地区的潜在土地生产力和粮食安全产生重大影响。量化和识别土壤侵蚀的空间模式对管理是重要的。本研究旨在估算埃塞俄比亚NW高地北塔纳盆地北区水域土壤侵蚀。通过应用与地理信息系统和遥感技术集成的通用土壤损耗方程,估计基于可用数据。该研究进一步探讨了土地利用和陆地覆盖,地形,土壤易用和排水密度对集水区土壤侵蚀率的影响。结果集水区的总估计土壤损失为每年1,705,370吨,平均侵蚀率为37.89 t ha〜(?1)?一年〜(?1),标准偏差为59.2 t ha〜(?1)年〜(?1)。 Sub-Campa,Megech,Gumara,Garno和Gabi Kura难以为46.8,40.9,30.9,30.0和29.7 t ha〜(?1)年的平均年度土壤侵蚀稀有。基于集水区中估计的腐蚀速率,将网格细胞分为五种不同的侵蚀严重等级:非常低,低,中等,高和极端。土壤侵蚀严重程度图显示了约58.9%的区域处于极低的侵蚀电位(0-1 T HA〜(?1)年〜(?1)),其占总土壤损失的1.1%,而12.4%在地区(36,617?HA)处于高度和极端的侵蚀潜力,侵蚀率为10 t ha〜(?1)年〜(?1)或更多,其中包括应该的流域总体损失的约82.1%是一个高度的优先事项。高至尊侵蚀严重课程的地区大多是在梅尔科,噱头和加诺子集中区中发现的。多元线性回归分析的结果显示土壤侵蚀率(A)与辅助因素对地形因子(LS)最敏感的影响,其次是支持实践(P),土壤易用(K),作物管理(c)和降雨侵蚀因子(R)。巴伦兰展示了最严重的侵蚀,其次是该集水区的农田和种植园森林。结论使用与各种各个因素相结合的侵蚀严重程度可以有助于了解影响集水区中侵蚀和空间模式的主要过程。这可以用于特定于现场的实施有效的土壤保护实践和土地利用计划,该计划侵蚀地点以控制土壤侵蚀。

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