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Improving event-based rainfall-runoff simulation using an ensemble artificial neural network based hybrid data-driven model

机译:使用基于集成人工神经网络的混合数据驱动模型改进基于事件的降雨径流模拟

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An ensemble artificial neural network (ENN) based hybrid function approximator (named PEK), integrating the partial mutual information (PMI) based separate input variable selection (IVS) scheme, ENN-based output estimation, and K-nearest neighbor regression based output error estimation, has been proposed to improve event-based rainfall-runoff (RR) simulation. A hybrid data-driven RR model, named non-updating PEK (NU-PEK), is also developed on the basis of the PEK approximator. The rainfall and simulated antecedent discharges input variables for the NU-PEK model are selected separately by using a PMI-based IVS algorithm. A newly proposed candidate rainfall input set, sliding window cumulative rainfall is also proposed. These two methods are integrated to make a good compromise between the adequacy and parsimony of the input information and make contribution to the understandings of the hydrologic responses to the regional precipitation. The number of component networks and the topology and parameter settings of each component network are optimized simultaneously by using the multi-objective NSGA-II optimization algorithm and the early stopping Levenberg-Marquardt algorithm. The optimal combination weights of the ENN are obtained according to the Akaike information criterions of component networks. By combining all these methods, the simulation accuracy and generalization property of the PEK approximator are much better than traditional artificial neural network. The NU-PEK model is constructed by combining the PEK approximator with a newly proposed non-updating modeling approach to improve event-based RR simulation. The NU-PEK model was applied to three Chinese catchments for RR simulation and compared with two popular RR models, including the conceptual Xinanjiang model and the conceptual-data-driven IHACRES model. The results of simulation and sensitivity analysis indicate that the developed model generally outperforms the other two models. The NU-PEK model is capable of producing high accuracy non-updating RR simulation without the use of the real-time information, e.g. the observed discharges at previous time steps.
机译:基于集成人工神经网络(ENN)的混合函数逼近器(PEK),集成了基于部分互信息(PMI)的单独输入变量选择(IVS)方案,基于ENN的输出估计和基于K近邻回归的输出误差估计已经提出以改善基于事件的降雨径流(RR)模拟。还基于PEK逼近器开发了一种混合数据驱动的RR模型,称为非更新PEK(NU-PEK)。使用基于PMI的IVS算法分别选择NU-PEK模型的降雨和模拟前期排放输入变量。还提出了新提出的候选降雨输入集,滑动窗口累积降雨。整合了这两种方法,可以在输入信息的充分性和简约性之间做出良好的折衷,并有助于理解水文对区域降水的响应。通过使用多目标NSGA-II优化算法和提前停止的Levenberg-Marquardt算法,可以同时优化组件网络的数量以及每个组件网络的拓扑和参数设置。根据组成网络的Akaike信息准则获得ENN的最佳组合权重。通过结合所有这些方法,PEK逼近器的仿真精度和泛化性能比传统的人工神经网络要好得多。 NU-PEK模型是通过将PEK逼近器与新提出的非更新建模方法相结合来构建的,以改进基于事件的RR仿真。 NU-PEK模型应用于三个中国流域的RR模拟,并与两个流行的RR模型进行了比较,包括概念性的新安江模型和概念性数据驱动的IHACRES模型。仿真和敏感性分析的结果表明,所开发的模型总体上优于其他两个模型。 NU-PEK模型能够在不使用实时信息的情况下产生高精度的非更新RR模拟。在先前的时间步长观察到的放电。

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