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首页> 外文期刊>Journal of Climate >Changes in Internal Variability due to Anthropogenic Forcing: A New Field Significance Test
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Changes in Internal Variability due to Anthropogenic Forcing: A New Field Significance Test

机译:人为强迫引起的内部变异性变化:新的田间意义检验

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摘要

Changes in internal variability of seasonal and annual mean 2-m temperature in response to anthropogenic forcing are quantified for a global domain using climate models driven by a twenty-first-century high-emissions scenario. While changes in variance have been quantified previously in a univariate sense, the field significance of such changes has remained unclear. This paper proposes a new field significance test for changes in variance that accounts for spatial and temporal relationships within the domain. The test proposed here uses an optimization technique based on discriminant analysis, yielding results that are invariant to linear transformations of the data and therefore independent of normalization procedures. Multiple significance tests are employed because spatial fields can differ in many ways in a multivariate space. All climate models investigated here predict significant changes in internal variability of temperature in response to anthropogenic forcing. The models consistently predict decreases to temperature variance in regions of seasonal sea ice formation and across the Southern Ocean by the end of the twenty-first century. While more than half the models also predict significant changes in variance over ENSO regions and the North Atlantic Ocean, the direction of this change is model dependent. Seasonal mean changes are remarkably similar to annual mean changes, but there are model-dependent exceptions. Some models predict future variability that is more than double their preindustrial control variability, raising questions about the adequacy of doubling uncertainty estimates to test robustness in detection and attribution studies.
机译:在全球范围内,使用二十一世纪高排放情景驱动的气候模型,对人为强迫造成的季节性和年度平均2 m温度内部变化的变化进行了量化。尽管方差变化以前已经以单变量的方式进行了量化,但这种变化的现场意义仍然不清楚。本文提出了一种针对方差变化的新的现场重要性检验,该检验说明了域内的时空关系。此处提出的测试使用基于判别分析的优化技术,得出的结果对于数据的线性变换是不变的,因此与归一化过程无关。由于多变量空间中的空间字段可能在许多方面有所不同,因此采用了多显着性检验。在此调查的所有气候模型都预测,由于人为强迫,温度内部变化的显着变化。这些模型一致地预测到二十一世纪末,季节性海冰形成区域和整个南大洋的温度变化将减小。尽管超过一半的模型还预测了ENSO地区和北大西洋的方差会发生显着变化,但这种变化的方向取决于模型。季节性均值变化与年度均值变化非常相似,但存在模型相关的例外情况。一些模型预测未来的可变性是其工业化前控制可变性的两倍以上,这引发了关于不确定性估计值加倍是否足以测试检测和归因研究的鲁棒性的问题。

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