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Rainfall Forecasting Based on Ensemble Empirical Mode Decomposition and Neural Networks

机译:基于集合经验模式分解和神经网络的降雨预报

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In this paper a methodology for rainfall forecasting is presented, using the principle of decomposition and ensemble. In the proposed framework, the employed decomposition technique is the Ensemble Empirical Mode Decomposition (EEMD), which divides the original data into a set of simple components. Each component is modeled with a Feed Forward Neural Network (FNN) as a forecasting tool. Finally, the individual forecasting results for all components are combined to obtain the prediction result of the input signal. Experiments were performed on a real-observed rainfall data, and the attained results were compared against a single FNN model for the raw data, showing an improvement on the system performance.
机译:本文采用分解和集成的原理,提出了一种降雨预报方法。在提出的框架中,采用的分解技术是“集成经验模式分解”(EEMD),它将原始数据分为一组简单的组件。每个组件都以前馈神经网络(FNN)作为预测工具建模。最后,将所有分量的单独预测结果组合起来,以获得输入信号的预测结果。对实际观察到的降雨数据进行了实验,并将获得的结果与原始数据的单个FNN模型进行了比较,显示了系统性能的提高。

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