Urban Rainfall-Runoff Modeling Using HEC-HMS and Artificial Neural Networks: A Case Study

A. Naresh, M. Naik
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引用次数: 1

Abstract

Urban flooding nowadays becomes common throughout the world. The main reason for these floods is rapid urban development and climate change. During the monsoon, the flows in the urban drains will be high and the main reason for these high flows is the existence of a combined network system (i.e. drainage and stormwater). Further, the flow in the city (under study) drainage network was very high and some areas of the network exceeds more than discharge carrying capacity. Hence, this may result in overflow from the manholes and create an overland flood problem. Rainfall-Runoff modeling in these situations in the urban catchment will be essential and required to understand the flow pattern that helps in flood management. Therefore, the current study chose Hydrologic Modeling System (HEC-HMS) and Artificial Neural Network (ANN) for rainfall-runoff modeling at an hourly period for the Kukataplly (zone-12) watershed of Hyderabad city, Telangana State in India. This zone-12 watershed was one of the most affected hydraulic zones of Greater Hyderabad Municipal Corporation (GHMC) during the monsoon period in the past 21 years. The present study focuses on a comparative study between HEC-HMS and ANN has been carried out to comprehend the flood scenario in the study area. Finally, the performance of the model is checked with statistical indices such as Nash-Sutcliff Efficiency (NSE), and Coefficient of Determination (R2). HEC-HMS yielded good results (NSE = 0.74 and R2 = 0.76) when it has taken care of the maximum possible nonlinear complex data to be analysed.
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基于HEC-HMS和人工神经网络的城市降雨径流模型研究
如今,城市洪水在全世界都很普遍。这些洪水的主要原因是城市的快速发展和气候变化。在季风期间,城市排水沟中的流量将很高,而这些高流量的主要原因是存在一个组合的网络系统(即排水和雨水)。此外,城市(研究中)排水管网的流量非常高,管网的某些区域超过了流量承载能力。因此,这可能导致检修孔溢流,并造成陆上洪水问题。城市集水区中这些情况下的降雨径流建模对于理解有助于洪水管理的水流模式至关重要。因此,本研究选择了水文建模系统(HEC-HMS)和人工神经网络(ANN)对印度特伦甘纳州海得拉巴市Kukataplly(12区)流域的每小时降雨径流进行建模。在过去21年的季风期间,该12区流域是大海得拉巴市政公司(GHMC)受影响最严重的水力区之一。本研究的重点是HEC-HMS和ANN之间的比较研究,以了解研究区域的洪水情景。最后,用Nash-Sutcliff效率(NSE)和决定系数(R2)等统计指标对模型的性能进行了检验。HEC-HMS在处理了要分析的最大可能非线性复数数据时产生了良好的结果(NSE=0.74和R2=0.76)。
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来源期刊
CiteScore
3.80
自引率
6.20%
发文量
57
审稿时长
20 weeks
期刊介绍: IJMEMS is a peer reviewed international journal aiming on both the theoretical and practical aspects of mathematical, engineering and management sciences. The original, not-previously published, research manuscripts on topics such as the following (but not limited to) will be considered for publication: *Mathematical Sciences- applied mathematics and allied fields, operations research, mathematical statistics. *Engineering Sciences- computer science engineering, mechanical engineering, information technology engineering, civil engineering, aeronautical engineering, industrial engineering, systems engineering, reliability engineering, production engineering. *Management Sciences- engineering management, risk management, business models, supply chain management.
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