Flood inundation mapping of upper Krishna basin using hydrodynamic model

Q4 Engineering Disaster Advances Pub Date : 2023-03-15 DOI:10.25303/1604da08015
Rutuja Balgude, Anant Patel
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Abstract

Floodplain management and mapping are new and applied methods in river engineering and for the prediction of flood hazards. Krishna river basin is the second largest river basin in Peninsular India. This basin is one of the flood prone basins in India. The purpose of this study is to focus on the analysis of HEC-RAS to assess and predict the flood depth and spatial extent of flood in the upper Krishna River basin which is drained by Krishna River. To determine extent of inundation, the hydrodynamic model HEC-RAS with ArcGIS was used. For this, discharge data of two months from August and September 2012 has been processed in the study. A methodology was applied to combine hydraulic simulation model, HEC-RAS and GIS analysis for delineation of flood extents and depths for upper Krishna basin in India. Results obtained by using HEC-RAS Model were used by integrating with Arc-GIS to floodplain maps. Through this floodplain maps, the areas that are vulnerable to hazards, have been identified. The results of this research will benefit in future of flood forecasts on a regional scale, also they will be beneficial for water resources management and planning.
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基于水动力模型的上克里希纳流域洪水淹没制图
洪泛区管理和测绘是河流工程和洪水灾害预测中新的应用方法。克里希纳河流域是印度半岛第二大河流流域。该流域是印度洪水多发的流域之一。本研究的目的是重点分析HEC-RAS,以评估和预测克里希纳河流域上游的洪水深度和洪水空间范围。为了确定淹没程度,使用了ArcGIS的水动力学模型HEC-RAS。为此,研究中处理了2012年8月和9月两个月的排放数据。采用水力学模拟模型、HEC-RAS和GIS分析相结合的方法,划定了印度克里希纳上游流域的洪水范围和深度。将HEC-RAS模型的结果与Arc GIS集成到泛滥平原地图中。通过这些泛滥平原地图,已经确定了易受危害的地区。这项研究的结果将有利于未来区域范围内的洪水预报,也有利于水资源管理和规划。
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来源期刊
Disaster Advances
Disaster Advances 地学-地球科学综合
CiteScore
0.70
自引率
0.00%
发文量
57
审稿时长
3.5 months
期刊介绍: Information not localized
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