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Data-driven modeling of surface temperature anomaly and solar activity trends

机译:数据驱动的表面温度异常和太阳活动趋势建模

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摘要

A novel two-step modeling scheme is used to reconstruct and analyze surface temperature and solar activity data at global, hemispheric, and regional scales. First, the self-organizing map (SOM) technique is used to extend annual modern climate data from the century to millennial scale. The SOM component planes are used to identify and quantify strength of nonlinear relations among modern surface temperature anomalies (<150 years), tropical and extratropical teleconnections, and Palmer Drought Severity Indices (0—2000 years). Cross-validation of global sea and land surface temperature anomalies verifies that the SOM is an unbiased estimator with less uncertainty than the magnitude of anomalies. Second, the quantile modeling of SOM reconstructions reveal trends and periods in surface temperature anomaly and solar activity whose timing agrees with published studies. Temporal features in surface temperature anomalies, such as the Medieval Warm Period, Little Ice Age, and Modern Warming Period, appear at all spatial scales but whose magnitudes increase when moving from ocean to land, from global to regional scales, and from southern to northern regions. Some caveats that apply when interpreting these data are the high-frequency filtering of climate signals based on quantile model selection and increased uncertainty when paleoclimatic data are limited. Even so, all models find the rate and magnitude of Modern Warming Period anomalies to be greater than those during the Medieval Warm Period. Lastly, quantile trends among reconstructed equatorial Pacific temperature profiles support the recent assertion of two primary El Niflo Southern Oscillation types. These results demonstrate the efficacy of this alternative modeling approach for reconstructing and interpreting scale-dependent climate variables.
机译:一种新颖的两步建模方案用于在全球,半球和区域范围内重建和分析地表温度和太阳活动数据。首先,使用自组织图(SOM)技术将年度现代气候数据从本世纪扩展到千禧年。 SOM分量平面用于识别和量化现代表面温度异常(<150年),热带和温带遥相关以及帕尔默干旱严重度指数(0-2000年)之间的非线性关系强度。对全球海洋和陆地表面温度异常的交叉验证可以验证,SOM是一个无偏估计量,其不确定性小于异常的大小。其次,SOM重建的分位数模型揭示了表面温度异常和太阳活动的趋势和周期,其时间与已发表的研究一致。地表温度异常的时间特征(例如中世纪暖期,小冰期和现代变暖期)在所有空间尺度上都出现,但是当从海洋到陆地,从全球到区域尺度以及从南部到北部移动时,其幅度会增加地区。解释这些数据时需要注意的一些注意事项是基于分位数模型选择对气候信号进行高频滤波,而在限制古气候数据时增加不确定性。即便如此,所有模型都发现现代变暖期的异常率和强度要大于中世纪暖化期的异常率和强度。最后,在重建的赤道太平洋温度剖面中的分位数趋势支持最近对两种主要的厄尔尼诺现象的南方涛动类型的断言。这些结果证明了这种替代建模方法在重建和解释与比例有关的气候变量方面的功效。

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