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首页> 外文期刊>Journal of Climate >Real-Time Extraction of the Madden-Julian Oscillation Using Empirical Mode Decomposition and Statistical Forecasting with a VARMA Model
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Real-Time Extraction of the Madden-Julian Oscillation Using Empirical Mode Decomposition and Statistical Forecasting with a VARMA Model

机译:经验模态分解和VARMA模型的统计预测实时提取Madden-Julian振荡

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摘要

A simple guide to the new technique of empirical mode decomposition (EMD) in a meteorological-climate forecasting context is presented. A single application of EMD to a time series essentially acts as a local high-pass filter. Hence, successive applications can be used to produce a bandpass filter that is highly efficient at extracting a broadband signal such as the Madden-Julian oscillation (MJO). The basic EMD method is adapted to minimize end effects, such that it is suitable for use in real time. The EMD process is then used to efficiently extract the MJO signal from gridded time series of outgoing longwave radiation (OLR) data. A range of statistical models from the general class of vector autoregressive moving average (VARMA) models was then tested for their suitability in forecasting the MJO signal, as isolated by the EMD. A VARMA (5, 1) model was selected and its parameters determined by a maximum likelihood method using 17 yr of OLR data from 1980 to 1996. Forecasts were then made on the remaining independent data from 1998 to 2004. These were made in real time, as only data up to the date the forecast was made were used. The median skill of forecasts was accurate (defined as an anomaly correlation above 0.6) at lead times up to 25 days.
机译:给出了在气象-气候预测环境下经验模式分解(EMD)新技术的简单指南。 EMD对时间序列的单个应用本质上充当本地高通滤波器。因此,可以使用连续的应用来产生一种带通滤波器,该带通滤波器在提取宽带信号(例如Madden-Julian振荡(MJO))方面非常高效。基本的EMD方法适用于最大程度地减少最终影响,因此适合实时使用。然后,使用EMD过程从输出的长波辐射(OLR)数据的网格化时间序列中有效提取MJO信号。然后测试了一般矢量自回归移动平均(VARMA)模型中的一系列统计模型在预测MJO信号方面的适用性(如EMD所隔离)。选择了VARMA(5,1)模型,并通过最大似然法使用1980年至1996年的17年OLR数据确定了其参数。然后对1998年至2004年的其余独立数据进行了预测。这些都是实时进行的,因为仅使用了做出预测日期之前的数据。预测的中位数技能在长达25天的交付时间内是准确的(定义为高于0.6的异常相关性)。

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