Flood forecasting scheme of Nanshui reservoir based on Liuxihe model

IF 2.4 4区 地球科学 Q3 METEOROLOGY & ATMOSPHERIC SCIENCES
Feng Zhou , Yangbo Chen , Liyang Wang , Sheng Wu , Guangzhe Shao
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引用次数: 5

Abstract

China experiences one of the most frequent flood disasters in the world. Establishing accurate and reliable flood prediction program is the key to deal with flood disasters. Nanshui Reservoir Basin, in southern China, belongs to subtropical monsoon climate, with more rain in spring, concentrated rainstorm in summer and typhoon storm in autumn. Floods at dam site are mostly small and medium-sized floods with steep rise and slow fall as typical mountain flood. In order to explore the applicability of Liuxihe model in flood prediction of Nanshui Reservoir, this paper builds up Liuxihe model for Nanshui Reservoir based on DEM, land use and soil type data, and selects a typical flood event to optimize the parameters using particle swarm optimization (PSO) algorithm and verifies the accuracy of the model by simulating the other floods. Liuxihe model established in this paper indicates a satisfactory performance for flood prediction for Nanshui Reservoir, which can meet the accuracy requirement of flood prediction. Finally, the effects of different river grading and PSO algorithm on flood prediction are discussed. The results show that the PSO algorithm can obviously improve the accuracy of the Liuxihe model for flood forecast in Nanshui Reservoir. The simulation based on four-level channel grading has better results than that based on three-level channel, which indicates increased peak flood value, delayed peak time and closer simulation to the measured value.

基于流溪河模型的南水水库洪水预报方案
中国是世界上洪水灾害最频繁的国家之一。建立准确、可靠的洪水预报程序是应对洪水灾害的关键。南水水库盆地位于中国南方,属亚热带季风气候,春季多雨,夏季暴雨集中,秋季有台风。坝址洪水多为中小洪水,呈急升缓降的典型山洪。为探索流溪河模型在南水水库洪水预测中的适用性,基于DEM、土地利用和土壤类型数据,建立了南水水库流溪河模型,选取一个典型洪水事件,采用粒子群算法对模型参数进行优化,并通过模拟其他洪水验证模型的准确性。本文所建立的流溪河模型对南水水库的洪水预报具有较好的效果,能够满足洪水预报的精度要求。最后,讨论了不同河流等级和粒子群算法对洪水预测的影响。结果表明,粒子群算法能明显提高流溪河模型对南水水库洪水预报的精度。基于四级通道分级的模拟结果优于基于三级通道的模拟结果,表明洪峰值增大,洪峰时间延迟,模拟结果更接近实测值。
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来源期刊
Tropical Cyclone Research and Review
Tropical Cyclone Research and Review METEOROLOGY & ATMOSPHERIC SCIENCES-
CiteScore
4.60
自引率
3.40%
发文量
184
审稿时长
30 weeks
期刊介绍: Tropical Cyclone Research and Review is an international journal focusing on tropical cyclone monitoring, forecasting, and research as well as associated hydrological effects and disaster risk reduction. This journal is edited and published by the ESCAP/WMO Typhoon Committee (TC) and the Shanghai Typhoon Institute of the China Meteorology Administration (STI/CMA). Contributions from all tropical cyclone basins are welcome. Scope of the journal includes: • Reviews of tropical cyclones exhibiting unusual characteristics or behavior or resulting in disastrous impacts on Typhoon Committee Members and other regional WMO bodies • Advances in applied and basic tropical cyclone research or technology to improve tropical cyclone forecasts and warnings • Basic theoretical studies of tropical cyclones • Event reports, compelling images, and topic review reports of tropical cyclones • Impacts, risk assessments, and risk management techniques related to tropical cyclones
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