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The synergistic impact of ENSO and IOD on Indian summer monsoon rainfall in observations and climate simulations – an information theory perspective

机译:ENSO和IOD对观测和气候模拟中印度夏季季风降雨的协同影响 - 信息理论观点

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The El Ni?o–Southern Oscillation?(ENSO) and Indian Ocean Dipole?(IOD) are two well-known temporal oscillations in sea surface temperature?(SST), which are both thought to influence the interannual variability of Indian summer monsoon rainfall?(ISMR). Until now, there has been no measure to assess the simultaneous information exchange?(IE) from both ENSO and IOD to ISMR. This study explores the information exchange from two source variables (ENSO and IOD) to one target?(ISMR). First, in order to illustrate the concepts and quantification of two-source?IE to a target, we use idealized test cases consisting of linear and nonlinear dynamical systems. Our results show that these systems exhibit net synergy (i.e., the combined influence of two sources on a target is greater than the sum of their individual contributions), even with uncorrelated sources in both the linear and nonlinear systems. We test IE?quantification with various estimators (linear, kernel, and Kraskov estimators) for robustness. Next, the two-source IE from ENSO and IOD to ISMR is investigated in observations, reanalysis, three global climate model?(GCM) simulations, and three nested higher-resolution simulations using a regional climate model?(RCM). This (1)?quantifies?IE from ENSO and IOD to ISMR in the natural system and (2)?applies?IE in the evaluation of the GCM and RCM simulations. The results show that both ENSO and IOD contribute to ISMR interannual variability. Interestingly, significant net synergy is noted in the central parts of the Indian subcontinent, which is India's monsoon core region. This indicates that both ENSO and IOD are synergistic predictors in the monsoon core region. But, they share significant net redundant information in the southern part of the Indian subcontinent. The IE patterns in the GCM simulations differ substantially from the patterns derived from observations and reanalyses. Only one nested RCM simulation IE pattern adds value to the corresponding GCM simulation pattern. Only in this case does the GCM simulation show realistic SST patterns and moisture transport during the various ENSO and IOD phases. This confirms, once again, the importance of the choice of GCM in driving a higher-resolution RCM. This study shows that two-source IE is a useful metric that helps in better understanding the climate system and in process-oriented climate model evaluation.
机译:el ni?o-southern振荡?(enso)和印度洋偶极子?(iod)是海面温度的两个众所周知的时间振荡?(SST),这既认为影响印度夏季季风降雨的际变量?(ISMR)。到目前为止,没有措施来评估同时信息交换?(即)将ENSO和IOD两者与ISMR。本研究探讨了从两个源变量(ENSO和IOD)到一个目标的信息交换?(ISMR)。首先,为了说明双源的概念和量化吗?IE到目标,我们使用由线性和非线性动力系统组成的理想测试用例。我们的结果表明,这些系统展示了净协同(即,两个来源对目标的综合影响大于其各个贡献的总和),即使线性和非线性系统中的不相关来源也是如此。我们测试IE?用各种估计器(线性,内核和Kraskov估计器)进行鲁棒性。接下来,在观察,重新分析,三个全球气候模型?(GCM)模拟中,研究了从ENSO和IOD到ISMR的两个来源IE,以及使用区域气候模型的三个嵌套的更高分辨率模拟?(RCM)。这个(1)?量化?IE从ENSO和IOD到自然系统中的ISMR和(2)?适用?即在评估GCM和RCM模拟中。结果表明,ENSO和IOD都有助于ISMR际变化。有趣的是,印度次大陆中部地区指出的显着净协同作用,是印度的季风核心地区。这表明ENSO和IOD都是季风核心区域中的协同预测因子。但是,他们在印度次大陆的南部分享了显着的净冗余信息。 GCM仿真中的IE模式基本上不同于来自观察和Reanalyses的模式。只有一个嵌套RCM仿真IE模式为相应的GCM仿真模式添加了值。仅在这种情况下,GCM仿真只有在各种ENSO和IOD阶段期间都显示了现实的SST模式和湿气运输。这再次证实了GCM在驾驶更高分辨率RCM时选择GCM的重要性。本研究表明,两个来源IE是一种有用的指标,有助于更好地理解气候系统和以过程为导向的气候模型评估。

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