Exploiting the signal-to-noise ratio in multi-system predictions of boreal summer precipitation and temperature

Juan Camilo Acosta Navarro, Andrea Toreti
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引用次数: 0

Abstract

Abstract. Droughts and heatwaves are among the most impactful climate extremes. Their co-occurrence can have adverse consequences on natural and human systems. Early information on their possible occurrence on seasonal timescales is beneficial for many stakeholders. Seasonal climate forecasts have become openly available to the community, but a wider use is currently hindered by limited skill in certain regions and seasons. Here we show that a simple forecast metric from a multi-system ensemble, the signal-to-noise ratio, can help overcome some limitations. Forecasts of mean daily near-surface air temperature and precipitation in boreal summers with a high signal-to-noise ratio tend to coincide with observed larger deviations from the mean than summers with a low signal-to-noise ratio. The signal-to-noise ratio of the ensemble predictions may serve as a complementary measure of forecast reliability that could benefit users of climate predictions.
利用多系统预测北方夏季降水和温度的信噪比
摘要干旱和热浪是影响最大的极端气候。它们的共存可能对自然系统和人类系统产生不利后果。关于它们在季节时间尺度上可能发生的早期信息对许多利益相关者是有益的。季节性气候预报已经向社会公开,但目前由于某些地区和季节的技术有限,阻碍了其更广泛的使用。在这里,我们展示了一个简单的预测指标,从一个多系统集合,信噪比,可以帮助克服一些限制。信噪比高的北方夏季的日平均近地面气温和降水预报与观测到的平均值的偏差比信噪比低的夏季更大。集合预测的信噪比可以作为预测可靠性的补充度量,这可以使气候预测的用户受益。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
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