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A nonlinear perturbation model based on artificial neural network

机译:基于人工神经网络的非线性摄动模型

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The objective of this study is to develop a nonlinear perturbation model (NLPM) based on artificial neural network (ANN), defined as NLPM-ANN, for the purpose of improving the rainfatt-runoff forecasting efficiency and accuracy. The NLPM-ANN model structure is similar to that of the linear perturbation model. (LPM). The deference is that ANN, instead of the linear response function, was used to simulate the unknown relationship between the input perturbations and the output perturbations. Eight watersheds, across of a range of climatic conditions and watershed area magnitudes located in China, were selected for testing the daily rainfall-runoff forecasting ability of this model. The proposed model was also compared with the LPM, a nonlinear perturbation model. considering catchment wetness (NLPM-API), and two different ANN models. It is shown that the model. efficiency of NLPM-ANN model is significantly higher than that of the LPM. The results demonstrate that the relationship between the perturbations is high nonlinear though subtracting the seasonal means, and ANN is capable to simulate this relationship. Comparing with the NLPM-API, the NLPM-ANN also shows advantages in simulating the nonlinear relationship between the rainfall and runoff. The results also indicate that consideration of the seasonal information can improve the model. efficiency of not only the linear models but also the ANN models. Subtracting the seasonal means, which is adopted in the LPM, is also a feasible way to reduce the system complexity and improve the model. efficiency of ANN models. (c) 2006 Elsevier B.V. All rights reserved.
机译:这项研究的目的是开发一个基于人工神经网络(ANN)的非线性扰动模型(NLPM),定义为NLPM-ANN,目的是提高雨量径流的预报效率和准确性。 NLPM-ANN模型的结构类似于线性摄动模型的结构。 (LPM)。不同之处在于,使用ANN(而不是线性响应函数)来模拟输入扰动和输出扰动之间的未知关系。选择了中国境内一系列气候条件和流域面积大小范围内的八个流域,以测试该模型的日降雨径流预报能力。所提出的模型还与非线性扰动模型LPM进行了比较。考虑集水区湿度(NLPM-API)和两个不同的人工神经网络模型。如图所示。 NLPM-ANN模型的效率显着高于LPM。结果表明,通过减去季节均值,扰动之间的关系是高度非线性的,并且ANN能够模拟这种关系。与NLPM-API相比,NLPM-ANN在模拟降雨与径流之间的非线性关系方面也显示出优势。结果还表明,考虑季节性信息可以改善模型。线性模型和ANN模型的效率。减去LPM中采用的季节性均值也是降低系统复杂性和改进模型的可行方法。人工神经网络模型的效率。 (c)2006 Elsevier B.V.保留所有权利。

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