Department of Civil Engineering, National Institute of Technology Tiruchirappalli, Tiruchirappalli, Tamil Nadu, India.
Environ Monit Assess. 2023 Dec 19;196(1):56. doi: 10.1007/s10661-023-12166-w.
Soil erosion is a significant problem in the agriculture sector and the environment globally. Susceptible soil erosion zones must be identified and erosion rates evaluated to decrease land degradation problems and increase crop productivity by protecting soil fertility. Therefore, a research study has been carried out in the Ponnaniyar River basin, an ungauged tributary of the Cauvery basin in India, primarily used for agriculture. The main purpose of this study is to assess soil erosion (SE) and sediment yield (SY) for the future in an ungauged basin by utilizing the projected land use/land cover (LULC) map of the study area. Additionally, Landsat 8 satellite dataset was only used for the classification and prediction of LULC to eliminate the variation between the resolution, bands and its wavelength of different satellites datasets. To achieve the goals of this study, three phases were followed. First, the LULC of the study area was classified using a Random Trees Classifier (RTC), a machine learning technique, followed by the projection of land cover using a Cellular Automata-based Artificial Neural Network (CA-ANN) model. The driving factors for this model include digital elevation model (DEM), slope, distance to roads, settlements, and water bodies. The accuracy level of the projected LULC map was determined by comparing it with the classified LULC map of the study area, and the results showed an overall accuracy (OA) of 85.35 percentage and a kappa coefficient (K) of 0.74, respectively. Second, the projected LULC map was used in the land management factor (C) and conversation practice factor (P) of the Revised Universal Soil Loss Equation (RUSLE) model to assess soil erosion. The model was integrated with the sediment delivery ratio (SDR) to estimate sediment yield within the study area. The accuracy of the generated erosion map based on the classified and projected LULC for the year 2022 was determined using the receiver operating characteristic curve (ROC) curve, and it was found to be in satisfactory agreement. Finally, for effective soil and water conservation measures, the basin was divided into 13 sub-watersheds (SWs) using terrain analysis in geographical information system (GIS). The SWs were prioritized based on the mean soil loss in the 4-year interval from 2014 to 2030 and integrated using the weighted average method to determine the final prioritization. From these findings, SW 11, SW 9, SW 12, and SW 1 are extremely affected by soil erosion, and immediate implementation of water harvesting structures is required for soil conservation. Also, this research might be useful for decision-makers and policymakers in land management.
土壤侵蚀是全球农业部门和环境面临的一个重大问题。必须识别易受侵蚀的土壤侵蚀区,并评估侵蚀速率,以减少土地退化问题,通过保护土壤肥力来提高作物生产力。因此,在印度高韦里河流域的一条未测量的支流蓬纳亚尔河流域进行了一项研究,该流域主要用于农业。本研究的主要目的是通过利用研究区域的预测土地利用/土地覆盖(LULC)图,评估未来未测量流域的土壤侵蚀(SE)和泥沙产量(SY)。此外,仅使用 Landsat 8 卫星数据集对 LULC 进行分类和预测,以消除不同卫星数据集之间分辨率、波段及其波长的差异。为了实现本研究的目标,分三个阶段进行。首先,使用随机树分类器(RTC)对研究区域的土地利用/土地覆盖进行分类,这是一种机器学习技术,然后使用基于元胞自动机的人工神经网络(CA-ANN)模型对土地覆盖进行预测。该模型的驱动因素包括数字高程模型(DEM)、坡度、到道路、定居点和水体的距离。通过将预测的土地利用/土地覆盖图与研究区域的分类土地利用/土地覆盖图进行比较,确定了预测的土地利用/土地覆盖图的精度水平,结果分别为 85.35%的总体精度(OA)和 0.74 的kappa 系数(K)。其次,将预测的土地利用/土地覆盖图应用于修订后的通用土壤流失方程(RUSLE)模型的土地管理因子(C)和保护实践因子(P),以评估土壤侵蚀。该模型与泥沙输送比(SDR)相结合,估算研究区域内的泥沙产量。基于分类和预测的土地利用/土地覆盖图生成的侵蚀图的精度是使用接收器操作特性曲线(ROC)曲线确定的,结果令人满意。最后,为了采取有效的水土保持措施,利用地理信息系统(GIS)中的地形分析将流域分为 13 个子流域(SW)。根据 2014 年至 2030 年的 4 年间隔内的平均土壤流失量对 SW 进行优先级排序,并使用加权平均法对其进行整合,以确定最终的优先级排序。根据这些发现,SW11、SW9、SW12 和 SW1 受到土壤侵蚀的严重影响,需要立即实施集水结构以保护土壤。此外,本研究可能对决策者和土地管理者有用。