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Remote and local influences in forecasting Pacific SST: a linear inverse model and a multimodel ensemble study

机译:太平洋SST预报中的远程和本地影响:线性逆模型和多模型集成研究

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摘要

A suite of statistical linear inverse models (LIMs) are used to understand the remote and local SST variability that influences SST predictions over the North Pacific region. Observed monthly SST anomalies in the Pacific are used to construct different regional LIMs for seasonal to decadal predictions. The seasonal forecast skills of the LIMs are compared to that from three operational forecast systems in the North American Multi-Model Ensemble (NMME), revealing that the LIM has better skill in the Northeastern Pacific than NMME models. The LIM is also found to have comparable forecast skill for SST in the Tropical Pacific with NMME models. This skill, however, is highly dependent on the initialization month, with forecasts initialized during the summer having better skill than those initialized during the winter. The data are also bandpass filtered into seasonal, interannual and decadal time scales to identify the relationships between time scales using the structure of the propagator matrix. Moreover, we investigate the influence of the tropics and extra-tropics in the predictability of the SST over the region. The Extratropical North Pacific seems to be a source of predictability for the tropics on seasonal to interannual time scales, while the tropics enhance the forecast skill for the decadal component. These results indicate the importance of temporal scale interactions in improving the predictions on decadal timescales. Hence, we show that LIMs are not only useful as benchmarks for estimates of statistical skill, but also to isolate contributions to the forecast skills from different timescales, spatial scales or even model components.
机译:一套统计线性逆模型(LIM)用于了解影响北太平洋地区SST预测的远程和本地SST变异性。太平洋地区每月观测到的SST异常被用于构造不同的区域LIM,以进行季节到年代际的预测。将LIM的季节预报技能与北美多模式合奏团(NMME)的三个运行预报系统的季节性预报技能进行了比较,表明LIM在东北太平洋的技能要比NMME模型更好。还发现LIM具有与NMME模型相当的热带太平洋海表温度预报技能。但是,此技能高度依赖于初始化月份,夏季初始化的预测要比冬季初始化的预测要好。数据也经过带通滤波,分为季节性,年际和年代际时标,以使用传播矩阵的结构来识别时标之间的关系。此外,我们调查了热带和温带热带对该地区SST可预测性的影响。热带外北太平洋似乎是热带在季节到年际尺度上可预测性的来源,而热带则增强了年代际分量的预测能力。这些结果表明时间尺度相互作用对改进年代际尺度的预测的重要性。因此,我们表明,LIM不仅可用作统计技能估计的基准,而且还可以从不同的时间尺度,空间尺度甚至模型组件中分离出对预测技能的贡献。

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