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Research on Short-range Climatic Forecast Method Based on EMD and SVM

机译:基于EMD和SVM的短期气候预报方法研究

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Climate is a nonlinear system, and the BP neural network algorithm or the Support Vector Machine (SVM) algorithm which is superior in dealing with nonlinear problems is usually used in the climate forecast. Meanwhile, the climatic time series also include nonstationary feature, so this paper introduces a new method of signal processingȁ4;the Empirical Mode Decomposition (EMD) algorithm for making climatic time series placidly, and combines with the SVM algorithm for short-range climate forecast. At first, the nonstationary time series are decomposed into a series of IMFs with features of stationarity and multiple time scale, then for each IMF component, constructing different models of SVM to forecast, and finally would be straight line fit to final forecast result. This paper uses the anomaly percentage of accumulated precipitation in summer in Guangxi Zhuang Autonomous Region for reality testing, and the result shows that comparing to the direct forecast methods, method of EMD with SVM algorithm has the higher precision and better generalization ability.
机译:气候是一个非线性系统,通常在气候预测中使用的是BP神经网络算法或支持向量机(SVM)算法,该算法在处理非线性问题方面表现优异。同时,气候时间序列还具有非平稳特征,因此,本文介绍了一种信号处理的新方法[4];用经验模态分解(EMD)算法使气候时间序列变得平稳,并与SVM算法相结合,可用于短期气候预测。首先,将非平稳时间序列分解为一系列具有平稳性和多个时间尺度特征的IMF,然后针对每个IMF组件,构建不同的支持向量机模型进行预测,最后将其线性拟合至最终预测结果。本文利用广西壮族自治区夏季夏季降水的异常百分比进行真实性检验,结果表明,与直接预测方法相比,采用SVM算法的EMD方法具有较高的精度和较好的泛化能力。

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