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Improved Predictability of the Indian Ocean Dipole Using a Stochastic Dynamical Model Compared to the North American Multimodel Ensemble Forecast

机译:与北美多模型集合预测相比,使用随机动力模型改善了印度洋偶极子的可预测性

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This study assesses the predictive skill of eight North American Multimodel Ensemble (NMME) models in predicting the Indian Ocean dipole (IOD). We find that the forecasted ensemble-mean IOD-El Nino-Southern Oscillation (ENSO) relationship deteriorates away from the observed relationship with increasing lead time, which might be one reason that limits the IOD predictive skill in coupled models. We are able to improve the IOD predictive skill using a recently developed stochastic dynamical model (SDM) forced by forecasted ENSO conditions. The results are consistent with the previous result that operational IOD predictability beyond persistence at lead times beyond one season is mostly controlled by ENSO predictability and the signal-to-noise ratio of the Indo-Pacific climate system. The multimodel ensemble (MME) investigated here is found to be of superior skill compared to each individual model at most lead times. Importantly, the skill of the SDM IOD predictions forced with forecasted ENSO conditions were either similar or better than those of the MME IOD forecasts. Moreover, the SDM forced with observed ENSO conditions exhibits significantly higher IOD prediction skill than the MME at longer lead times, suggesting the large potential skill increase that could be achieved by improving operational ENSO forecasts. We find that both cold and warm biases of the predicted Nino-3.4 index may cause false alarms of negative and positive IOD events, respectively, in NMME models. Many false alarms for IOD forecasts at lead times longer than one season in the original forecasts disappear or are significantly reduced in the SDM forced by forecasted ENSO conditions.
机译:本研究评估了八个北美多模型集合(NMME)模型预测印度洋偶极子(IOD)的预测技能。我们发现预测的集合式意味着IOD-EL Nino-Southern振荡(ENSO)关系与观察到的关系劣化,与增加的交付时间可能是限制耦合模型中IOD预测技能的一个原因。我们能够通过预测的ENSO条件强制使用最近开发的随机动态模型(SDM)来改善IOD预测技能。结果与先前的结果一致,即超越在一个季节超出一个季度的持续性的运营IOD可预测性大多由ENSO可预测性和印度 - 太平洋气候系统的信噪比控制。此处研究的多模型集合(MME)与每个型号最多的型号相比,尤其是优异的技能。重要的是,使用预测的ENSO条件强制的SDM IOD预测的技能比MME IOD预报的方法相似或更好。此外,通过观察到的ENSO条件强制的SDM表现出比MME更长的碘预测技能显着更高,而是通过改善操作ENSO预测可以实现的大势能增加。我们发现,预测的NINO-3.4索引的寒冷和温暖的偏差可能分别在NMME模型中分别导致负极和正面事件的误报。在原始预测中超过一个季节的碘预报的IOD预报的许多误报都消失或在被预测的ENSO条件下迫使SDM显着降低。

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