首页> 外文期刊>Journal of Geophysical Research, D. Atmospheres: JGR >Bayesian dynamic modeling for monthly Indian summer monsoon rainfall using El Ni?o–Southern Oscillation (ENSO) and Equatorial Indian Ocean Oscillation (EQUINOO)
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Bayesian dynamic modeling for monthly Indian summer monsoon rainfall using El Ni?o–Southern Oscillation (ENSO) and Equatorial Indian Ocean Oscillation (EQUINOO)

机译:贝叶斯动态建模为每月的印度夏季季风降水使用El倪?振荡(ENSO),赤道印度洋振荡(EQUINOO)

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摘要

There is an established evidence of climatic teleconnection between El Ni?o–Southern Oscillation (ENSO) and Indian summer monsoon rainfall (ISMR) during June through September. Against the long-recognized negative correlation between ISMR and ENSO, unusual experiences of some recent years motivate the search for some other causal climatic variable, influencing the rainfall over the Indian subcontinent. Influence of recently identified Equatorial Indian Ocean Oscillation (EQUINOO, atmospheric part of Indian Ocean Dipole mode) is being investigated in this regard. However, the dynamic nature of cause-effect relationship burdens a robust and consistent prediction. In this study, (1) a Bayesian dynamic linear model (BDLM) is proposed to capture the dynamic relationship between large-scale circulation indices and monthly variation of ISMR and (2) EQUINOO is used along with ENSO information to establish their concurrent effect on monthly variation of ISMR. This large-scale circulation information is used in the form of corresponding indices as exogenous input to BDLM, to predict the monthly ISMR. It is shown that the Indian monthly rainfall can be modeled in a better way using these two climatic variables concurrently (correlation coefficient between observed and predicted rainfall is 0.82), especially in those years when negative correlation between ENSO and ISMR is not well reflected (i.e., 1997, 2002, etc.). Apart from the efficacy of capturing the dynamic relationship by BDLM, this study further establishes that monthly variation of ISMR is influenced by the concurrent effects of ENSO and EQUINOO.
机译:有一个建立气候的证据El倪之间远距离联系?振荡(ENSO)和印度夏季风6月到9月期间降雨量(ISMR)。一直广受认可的负相关ISMR和ENSO之间不寻常的经历一些近年来寻找一些激励其他因果气候变量影响降雨在印度次大陆。最近发现的赤道印度洋振荡(EQUINOO大气印度的一部分海洋偶极子模式)正在调查把。负担一个健壮的和因果关系一致的预测。提出了贝叶斯动态线性模型(BDLM)捕获之间的动态关系大型环流指数和月度ISMR变化,(2)EQUINOO一起使用与ENSO信息来建立他们的并发影响每月ISMR的变异。这种大规模的使用流通信息相应指标的形式作为外生BDLM的输入,预测每月ISMR。表明,印度每月降雨使用这两个气候建模一个更好的方法同时变量(相关系数观察和预测降雨之间0.82),特别是在那些年当负面的ENSO与ISMR之间的相关性不是很好反映(如1997、2002等)。捕捉动态的功效BDLM关系的进一步研究建立月度ISMR变化影响ENSO和并发的影响EQUINOO。

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