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DOI10.1038/s41467-020-14342-9
Learning algorithms allow for improved reliability and accuracy of global mean surface temperature projections
Ehud Strobach; Golan Bel
2020-01-23
发表期刊Nature
出版年2020
英文摘要

Climate predictions are only meaningful if the associated uncertainty is reliably estimated. A standard practice is to use an ensemble of climate model projections. The main drawbacks of this approach are the fact that there is no guarantee that the ensemble projections adequately sample the possible future climate conditions. Here, we suggest using simulations and measurements of past conditions in order to study both the performance of the ensemble members and the relation between the ensemble spread and the uncertainties associated with their predictions. Using an ensemble of CMIP5 long-term climate projections that was weighted according to a sequential learning algorithm and whose spread was linked to the range of past measurements, we find considerably reduced uncertainty ranges for the projected global mean surface temperature. The results suggest that by employing advanced ensemble methods and using past information, it is possible to provide more reliable and accurate climate projections.

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文献类型期刊论文
条目标识符http://119.78.100.173/C666/handle/2XK7JSWQ/249901
专题资源环境科学
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Ehud Strobach,Golan Bel. Learning algorithms allow for improved reliability and accuracy of global mean surface temperature projections[J]. Nature,2020.
APA Ehud Strobach,&Golan Bel.(2020).Learning algorithms allow for improved reliability and accuracy of global mean surface temperature projections.Nature.
MLA Ehud Strobach,et al."Learning algorithms allow for improved reliability and accuracy of global mean surface temperature projections".Nature (2020).
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