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Long-lead Prediction of ENSO Modoki Index using Machine Learning algorithms

机译:使用机器学习算法的ENSO Modoki索引的长线预测

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The focus of this study is to evaluate the efficacy of Machine Learning (ML) algorithms in the long-lead prediction of El Ni?o (La Ni?a) Modoki (ENSO Modoki) index (EMI). We evaluated two widely used non-linear ML algorithms namely Support Vector Regression (SVR) and Random Forest (RF) to forecast the EMI at various lead times, viz. 6, 12, 18 and 24 months. The predictors for the EMI are identified using Kendall's tau correlation coefficient between the monthly EMI index and the monthly anomalies of the slowly varying climate variables such as sea surface temperature (SST), sea surface height (SSH) and soil moisture content (SMC). The importance of each of the predictors is evaluated using the Supervised Principal Component Analysis (SPCA). The results indicate both SVR and RF to be capable of forecasting the phase of the EMI realistically at both 6-months and 12-months lead times though the amplitude of the EMI is underestimated for the strong events. The analysis also indicates the SVR to perform better than the RF method in forecasting the EMI.
机译:本研究的重点是评估机器学习(ML)算法在EL NI的长引线预测中的功效(LA NI?a)Modoki(Enso Modoki)索引(EMI)。我们评估了两种广泛使用的非线性ML算法,即支持向量回归(SVR)和随机森林(RF),以预测各种交货时间VIZ的EMI。 6,12,18和24个月。使用KENDALL的TAU相关系数与月度EMI指数与海表面温度(SST),海表面高度(SSH)和土壤水分含量(SMC)之间的缓慢变化的气候变量之间的月度异常识别EMI的预测因子。使用监督主成分分析(SPCA)评估每个预测器的重要性。结果表明,SVR和RF能够在6个月和12个月的交货时间内现实地预测EMI的阶段,尽管EMI的幅度被低估了强烈的事件。分析还表示SVR比预测EMI的RF方法更好。

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