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RBF Prediction Model Based on EMD for Forecasting GPS Precipitable Water Vapor and Annual Precipitation

机译:基于EMD预测GPS可降水水蒸气和年降水的RBF预测模型

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The forecast of precipitations is important in meteorology and atmospheric sciences. A new model is proposed based on empirical mode decomposition and the RBF neural network. Firstly, GPS PWV time series is broken down into series of different scales intrinsic mode function. Secondly, the phase-space reconstruction is done. Thirdly, each component is predicted by RBF. Finally, the final prediction value is reconstructed. Next, the model is tested on annual precipitation sequence from 2001 to 2010 in northeast China. The result shows that predictive value is close to the actual precipitation, which can better reflect the actual precipitation change. From 2001 to 2010, the maximum deviation of the predicted values never exceeds 4%. The testing results show that the proposed model can increase precipitation forecasting accuracies not only in GPS PWV but also in annual precipitation.
机译:沉淀的预测在气象和大气科学中都很重要。基于经验模式分解和RBF神经网络的提出了一种新模型。首先,GPS PWV时间序列被分解为一系列不同的尺度内在模式功能。其次,完成相位空间重建。第三,每个组件都是通过RBF预测的。最后,重建最终预测值。接下来,该模型于2001年至2010年在东北2001年降水序列进行了测试。结果表明,预测值接近实际降水,这可以更好地反映实际降水变化。从2001年到2010年,预测值的最大偏差永远不会超过4%。测试结果表明,该拟议模型不仅可以在GPS PWV中提高降水预测精度,也可以在年降水中增加。

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