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Soil erosion modeling using erosion pins and artificial neural networks

机译:利用腐蚀引脚和人工神经网络进行土壤侵蚀建模

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摘要

Assessment of soil erosion is crucial for any long-term soil conservation plan. Traditional in-situ measurements provide a precise amount of erosion rate; however, the procedure is costly and time-consuming when applied over an extensive area. This study aimed to investigate the use of erosion pins and artificial neural networks (ANNs) to assess the spatial distribution of annual soil erosion rates in the mountainous areas of the north of Iran. First, annual surface erosion and splash erosion were measured using two types of erosion pins. Next, the variables affecting soil erosion (vegetation canopy, the shape of slope, slope gradient, slope length, and soil properties) were identified and estimated through field studies and analysis of a digital elevation model (DEM) and the data set were divided into three subsets of training, cross-validation, and testing. Seven artificial neural network algorithms were used and evaluated to estimate the annual soil erosion rates for the areas without recorded erosion data. Finally, the modeled values were mapped in GIS, and the longitudinal profiles of soil erosion were extracted. Findings showed that (1) Consideration should be given to the generalized feed forward (GFF) network, given the high accuracy rate (NMSE:0.1; R-sqr:0.9) compared to other tested ANN algorithms. (2) Vegetation canopy was found to be the most significant variable in annual soil erosion rate (R: -0.75 to -0.85) compared to other input variables. And (3) Annual measurements of erosion pins revealed that the splash erosion is higher (contributing 62 percent to total erosion) compared to surface runoff erosion (contributing 38 percent to total erosion).
机译:土壤侵蚀评估对于任何长期土壤保护计划都至关重要。传统的现场测量提供了精确的侵蚀率;然而,当应用于广泛的领域时,该程序既昂贵又耗时。本研究旨在调查使用侵蚀针和人工神经网络(ANN)评估伊朗北部山区年度土壤侵蚀率的空间分布。首先,使用两种类型的侵蚀针测量年度表面侵蚀和飞溅侵蚀。接下来,通过实地研究和数字高程模型(DEM)分析,确定并估计了影响土壤侵蚀的变量(植被冠层、坡形、坡度、坡长和土壤性质),并将数据集分为训练、交叉验证和测试三个子集。使用七种人工神经网络算法,并对其进行了评估,以估算未记录侵蚀数据地区的年土壤侵蚀率。最后,将模型值映射到GIS中,提取土壤侵蚀的纵向剖面。研究结果表明:(1)与其他已测试的人工神经网络算法相比,考虑到较高的准确率(NMSE:0.1;R-sqr:0.9),应考虑广义前馈(GFF)网络。(2) 与其他输入变量相比,植被冠层是年土壤侵蚀率的最显著变量(R:-0.75至-0.85)。(3)侵蚀针的年度测量表明,与地表径流侵蚀(占总侵蚀量的38%)相比,飞溅侵蚀更高(占总侵蚀量的62%)。

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