Soil and Land Use Survey of India, Department of Agriculture and Farmers Welfare, Government of India, New Delhi, India.
Environ Monit Assess. 2024 Mar 2;196(4):338. doi: 10.1007/s10661-024-12482-9.
Assessing and mapping flood risks are fundamental tools that significantly contribute to the enhancement of flood management strategies. Identifying areas that are susceptible to floods and devising strategies to reduce the risk of waterlogging is of utmost importance. In the present study, an integrated approach, combining advanced remote sensing technologies, Geographic Information Systems (GIS), and analytic hierarchy process (AHP), was adopted in the Patan district of Gujarat, India, with a coastline spanning over 1600 km, to evaluate the numerous variables that contribute to the risk of flooding and waterlogging. After evaluating the flood conditioning factors and their respective weights using the analytic hierarchy process (AHP), the results were processed in GIS to accurately delineate areas that are prone to flooding. The results highlighted exceptional precision in identifying vulnerable areas, allowing for a thorough evaluation of the impact severity. The integrated approach yields valuable insights for multi-criteria assessments. The findings indicate that a significant portion of the district's land, precisely 8.94%, was susceptible to very high- risk of flooding, while 27.76% were classified as high-risk areas. Notably, 35.17% of the region was identified as having a moderate level of risk. Additionally, 20.96% and 7.15% were categorized as low-risk and very low-risk areas, respectively. Overall, the study highlights the need for proactive measures to mitigate the impact of floods on vulnerable communities. The research findings were verified by conducting ground truth and visual assessments using microwave satellite imagery (Sentinel-1). The aim of this validation was to test the accuracy of the study in identifying waterlogged agricultural areas and their extent based on AHP analysis. The ground verification and analysis of satellite images confirmed that the model accurately identified approximately 74% of the area categorized under high and very high flood vulnerability to be waterlogged and flooded. This research can provide valuable assistance to policymakers and authorities responsible for flood management by gathering necessary information about floods, including their intensity and the regions that are most susceptible to their impact. Additionally, it is crucial to implement corrective measures to improve soil drainage in vulnerable areas during heavy rainfall events. Prioritizing the adoption of sustainable agricultural practices and improving land use are also crucial for environmental conservation.
评估和绘制洪水风险是增强洪水管理策略的重要工具。识别易受洪水影响的地区并制定策略以降低水浸风险至关重要。在本研究中,采用了一种综合方法,结合先进的遥感技术、地理信息系统(GIS)和层次分析法(AHP),对印度古吉拉特邦的帕坦区进行了研究,该地区的海岸线长达 1600 多公里,评估了许多导致洪水和水浸风险的变量。在使用层次分析法(AHP)评估洪水条件因素及其各自权重后,将结果在 GIS 中进行处理,以准确划定易受洪水影响的地区。结果突出了识别脆弱地区的极高精度,能够全面评估影响的严重程度。综合方法为多标准评估提供了有价值的见解。研究结果表明,该地区有很大一部分土地(8.94%)极易受到高风险洪水的影响,而 27.76%的土地被归类为高风险地区。值得注意的是,该地区有 35.17%被确定为中度风险地区。此外,20.96%和 7.15%分别被归类为低风险和极低风险地区。总体而言,该研究强调了采取积极措施减轻洪水对脆弱社区影响的必要性。通过使用微波卫星图像(Sentinel-1)进行实地核查和视觉评估,对研究结果进行了验证。验证的目的是测试基于 AHP 分析识别水浸农业区及其范围的研究的准确性。实地核查和卫星图像分析证实,该模型准确地识别了约 74%的高和极高洪水脆弱性地区为水浸和洪水淹没区。这项研究可以为洪水管理的决策者和当局提供有价值的帮助,收集有关洪水的必要信息,包括其强度和最易受其影响的地区。此外,在强降雨事件中,在脆弱地区实施改善土壤排水的纠正措施至关重要。优先采取可持续农业实践和改善土地利用对于环境保护也至关重要。