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A Climate Prediction Method Based on EMD and Ensemble Prediction Technique

机译:基于EMD和集合预测技术的气候预测方法

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Observed climate data are processed under the assumption that their time series are stationary, as in multi-step temperature and precipitation prediction, which usually leads to low prediction accuracy. If a climate system model is based on a single prediction model, the prediction results contain significant uncertainty. In order to overcome this drawback, this study uses a method that integrates ensemble prediction and a stepwise regression model based on a mean-valued generation function. In addition, it utilizes empirical mode decomposition (EMD), which is a new method of handling time series. First, a non-stationary time series is decomposed into a series of intrinsic mode functions (IMFs), which are stationary and multi-scale. Then, a different prediction model is constructed for each component of the IMF using numerical ensemble prediction combined with stepwise regression analysis. Finally, the results are fit to a linear regression model, and a short-term climate prediction system is established using the Visual Studio development platform. The model is validated using temperature data from February 1957 to 2005 from 88 weather stations in Guangxi, China. The results show that compared to single-model prediction methods, the EMD and ensemble prediction model is more effective for forecasting climate change and abrupt climate shifts when using historical data for multi-step prediction.
机译:像在多步温度和降水预测中一样,在观测的气候数据假设其时间序列稳定的情况下对其进行处理,这通常会导致较低的预测精度。如果气候系统模型基于单个预测模型,则预测结果将包含很大的不确定性。为了克服此缺点,本研究使用了一种方法,该方法集成了集成预测和基于均值生成函数的逐步回归模型。此外,它利用经验模式分解(EMD),这是一种处理时间序列的新方法。首先,将非平稳时间序列分解为一系列固有模式函数(IMF),它们是平稳的和多尺度的。然后,结合数值集成预测和逐步回归分析,为IMF的每个组件构建不同的预测模型。最后,将结果拟合到线性回归模型,并使用Visual Studio开发平台建立了短期气候预测系统。该模型已使用1957年2月至2005年中国广西88个气象站的温度数据进行了验证。结果表明,与单模型预测方法相比,EMD和整体预测模型在使用历史数据进行多步预测时,更有效地预测气候变化和突然的气候变化。

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