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Improving flood forecasting capability of physically based distributed hydrological models by parameter optimization

机译:通过参数优化提高基于物理的分布式水文模型的洪水预报能力

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Physically based distributed hydrological models (hereafter referred to as PBDHMs) divide the terrain of the whole catchment into a number of grid cells at fine resolution and assimilate different terrain data and precipitation to different cells. They are regarded to have the potential to improve the catchment hydrological process simulation and prediction capability. In the early stage, physically based distributed hydrological models are assumed to derive model parameters from the terrain properties directly, so there is no need to calibrate model parameters. However, unfortunately the uncertainties associated with this model derivation are very high, which impacted their application in flood forecasting, so parameter optimization may also be necessary. There are two main purposes for this study: the first is to propose a parameter optimization method for physically based distributed hydrological models in catchment flood forecasting by using particle swarm optimization (PSO) algorithm and to test its competence and to improve its performances; the second is to explore the possibility of improving physically based distributed hydrological model capability in catchment flood forecasting by parameter optimization. In this paper, based on the scalar concept, a general framework for parameter optimization of the PBDHMs for catchment flood forecasting is first proposed that could be used for all PBDHMs. Then, with the Liuxihe model as the study model, which is a physically based distributed hydrological model proposed for catchment flood forecasting, the improved PSO algorithm is developed for the parameter optimization of the Liuxihe model in catchment flood forecasting. The improvements include adoption of the linearly decreasing inertia weight strategy to change the inertia weight and the arccosine function strategy to adjust the acceleration coefficients. This method has been tested in two catchments in southern China with different sizes, and the results show that the improved PSO algorithm could be used for the Liuxihe model parameter optimization effectively and could improve the model capability largely in catchment flood forecasting, thus proving that parameter optimization is necessary to improve the flood forecasting capability of physically based distributed hydrological models. It also has been found that the appropriate particle number and the maximum evolution number of PSO algorithm used for the Liuxihe model catchment flood forecasting are 20 and 30 respectively.
机译:基于物理的分布式水文模型(以下称为PBDHM)将整个集水区的地形以高分辨率分解为多个网格单元,并将不同的地形数据和降水同化为不同的单元。他们被认为具有改善流域水文过程模拟和预测能力的潜力。在早期阶段,假定基于物理的分布式水文模型直接从地形属性中导出模型参数,因此无需校准模型参数。但是,不幸的是,与此模型推导相关的不确定性非常高,这影响了它们在洪水预报中的应用,因此参数优化可能也是必要的。本研究的主要目的有两个:一是利用粒子群算法(PSO)为流域洪水预报中的基于物理的分布式水文模型提出一种参数优化方法,以测试其能力并提高其性能。二是探索通过参数优化提高流域洪水预报中基于物理的分布式水文模型能力的可能性。本文基于标量概念,首先提出了用于流域洪水预报的PBDHMs参数优化的通用框架,该框架可用于所有PBDHMs。然后,以流水洪水预报为基础的基于物理的分布式水文模型流水河模型为研究模型,为流水洪水预报中流水河模型的参数优化开发了改进的PSO算法。改进包括采用线性减小惯性权重策略来更改惯性权重,以及采用反余弦函数策略来调整加速度系数。该方法在中国南方两个大小不同的流域进行了测试,结果表明,改进的PSO算法可以有效地用于流溪河模型参数优化,可以大大提高流域洪水预报的模型能力,证明了该方法的有效性。为了提高基于物理的分布式水文模型的洪水预报能力,必须进行优化。还发现用于流溪河模型集水区洪水预报的PSO算法的合适粒子数和最大进化数分别为20和30。

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