| Literature DB >> 31831747 |
Jiabo Yin1,2, Pierre Gentine3,4, Shenglian Guo5, Sha Zhou2,6,7, Sylvia C Sullivan2, Yao Zhang2, Lei Gu1, Pan Liu8.
Abstract
Entities:
Year: 2019 PMID: 31831747 PMCID: PMC6908579 DOI: 10.1038/s41467-019-13613-4
Source DB: PubMed Journal: Nat Commun ISSN: 2041-1723 Impact factor: 14.919
Fig. 1Scaling rates and change in peak point temperature of 99th percentile storm runoff extremes with local temperature.
a Scaling rate results published in ref. [2]. b Change of peak point temperature from 1961–1990 to 1991–2017. c–h Scaling curve of example station in different regions. Green scatters in c–h are 99th percentile extremes in temperature bins, and red curves are the fitted hook structures using a LOWESS method; vertical red dashed line indicates the peak point temperature, and blue (or orange) lines and p-value is obtained by our method (or method in ref. [15]). The shading shows the temperature range used in ref. [15]. The Clausius–Clapeyron (C–C) scaling is shown in light grey dashed lines, and 2CC in light grey solid lines.
Fig. 2Scaling rates of simulated runoff extremes over the US and China.
Scaling rates of 99th percentile simulated rain-induced runoff extremes by hydrological models with same-day (or previous-day) temperatures at the catchment scale over US and China. a, b Scaling rates for XAJ model in the US; c, d Scaling rates for GR4J model in the US; e, f Scaling rates for XAJ model over China; g, h Scaling rates for GR4J model over China.