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首页> 外文期刊>Journal of Climate >Distinct Patterns of Tropical Pacific SST Anomaly and Their Impacts on North American Climate
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Distinct Patterns of Tropical Pacific SST Anomaly and Their Impacts on North American Climate

机译:热带太平洋SST异常的鲜明模式及其对北美气候的影响

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摘要

A neural-network-based cluster technique, the so-called self-organizing map (SOM), was performed to extract distinct sea surface temperature (SST) anomaly patterns during boreal winter. The SOM technique has advantages in nonlinear feature extraction compared to the commonly used empirical orthogonal function analysis and is widely used in meteorology. The eight distinguishable SOM patterns so identified represent three La Nina-like patterns, two near-normal patterns, and three El Nino-like patterns. These patterns show the varied amplitude and location of the SST anomalies associated with El Nino and La Nina, such as the central Pacific (CP) and eastern Pacific (EP) El Nino. The impact of each distinctive SOM pattern on winter-mean surface temperature and precipitation changes over North America was examined. Based on composite maps with observational data, each SOM pattern corresponds to a distinguishable spatial structure of temperature and precipitation anomaly over North America, which seems to result from differing wave train patterns, extending from the tropics to mid-high latitudes induced by longitudinally shifted tropical heating. The corresponding teleconnection as represented by the National Center for Atmospheric Research Community Atmospheric Model, version 4 (CAM4), was compared with the observational results. It was found that the 16-member ensemble average of the CAM4 experiments with prescribed SST can reproduce the observed atmospheric circulation responses to the different SST SOM patterns, which suggests that the circulation differences are largely SST driven rather than due to internal atmospheric variability.
机译:基于神经网络的聚类技术,所谓的自组织地图(SOM),以在北冬提取不同的海表面温度(SST)异常模式。与常用的经验正交函数分析相比,SOM技术在非线性特征提取中具有优点,并且广泛用于气象学。如此识别的八个可区分的SOM模式代表了三种LA NINA样图案,两个近常正常图案,以及三个EL NINO的图案。这些模式显示了与El Nino和La Nino相关的SST异常的变化和位置,例如中央太平洋(CP)和东太平洋(EP)El Nino。检查了各种SOM模式对北美冬季平均表面温度和降水变化的影响。基于具有观察数据的复合地图,每个SOM模式对应于北美的温度和降水异常的可区分空间结构,这似乎是由于不同波动模式,从热带地区延伸到纵向移位热带诱导的中高纬度地区加热。与国家大气研究群落大气模型,版本4(CAM4)表示的相应遥联连接与观察结果进行了比较。结果发现,具有规定SST的CAM4实验的16构件集合平均可以再现观察到的大气循环应对不同SST SOM模式,这表明循环差异在很大程度上是SST驱动而不是由于内部大气变异性。

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    《Journal of Climate》 |2017年第14期|共21页
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  • 正文语种 eng
  • 中图分类 气候学;
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