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首页> 外文期刊>Journal of Hydrology >Application of the non-stationary peak-over-threshold methods for deriving rainfall extremes from temperature projections
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Application of the non-stationary peak-over-threshold methods for deriving rainfall extremes from temperature projections

机译:非静止峰值过度阈值方法从温度投影获得降雨极端的衍生降雨

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Concerns about climate change are amplifying interest in future rainfall extremes. However, there are big differences between the statistics of rainfall extremes obtained using future rainfall time series produced from various climate models. Such large uncertainties create a la of confusion in establishing climate change adaptation measures. Looking at future rainfall extremes at a particular site yields increasing trends in some climate models and decreasing trends in others. The spatial patterns of rate of change in rainfall extremes also vary widely, depending on the climate model. As a result, they often do not gain the public's trust. We believe that this difficulty in obtaining credibility does not come from a lack of theory or technique, but from an approach that persuades the public of uncertain future rainfall extremes. In this study, we employed a novel approach to integrate a co-variate of the not-stationary Peak-Over-Threshold (POT) - Generalized Pareto distribution (GPD) model identified at each site with its future projection information for obtaining future rainfall extreme ensembles. Rainfall extremes are obtained from the observed rainfall time series using the POT method, and the scale parameter among GPD parameters are applied as a function of surface air temperature (SAT) or dew-point temperature (DPT). M this time, the threshold of the POT series is set to match the results of frequency analysis of the annual maximum series and the POT series for each site as much as possible. The behavior of future rainfall extremes is analyzed by inputting the future SAT or DAT produced from various climate models into the non-stationary frequency model using the co-variate. As a result of comparing the rainfall extremes obtained using the future rainfall time series directly with the future rainfall extremes obtained indirectly using the proposed method, it was found that the proposed approach projected future design rainfall depths with much less variation between climate models. The spatial pattern of rate of change was also consistent regardless of climate model. The proposed method is expected to contribute to the public's confidence in future rainfall extremes under climate change scenarios and to be of practical help in formulating reasonable climate change adaptation policies.
机译:对气候变化的担忧正在扩大对未来降雨的影响。然而,使用各种气候模型产生的未来降雨时间序列获得的降雨极端统计数据之间存在巨大差异。这种庞大的不确定性在建立气候变化适应措施时创造了混乱的乐趣。在某个特定网站上观看未来的降雨极端在一些气候模型中产生了越来越多的趋势,并降低了其他趋势。根据气候模型,降雨量的变化变化率的空间模式也有所不同。结果,他们经常不会获得公众的信任。我们认为,这种难以获得信誉的困难并不来自理论或技术,而是从一种说服未来降雨的不确定降雨的方法。在这项研究中,我们采用了一种新的方法来整合在每个站点上识别的非静止峰值过度阈值(POT)的共变量的共变量,其具有未来的降雨极端的未来投影信息合奏。降雨极端从观察到的降雨时间序列获得使用POT方法获得,并且GPD参数中的比例参数被应用于表面空气温度(SAT)或露点温度(DPT)的函数。这次MIS,罐系列的阈值设置为尽可能匹配每个站点的年度最大系列和罐系列的频率分析结果。通过将各种气候模型生产的未来SAT或DAT进入非静止频率模型,通过共变化来分析未来降雨极端的行为。由于使用未来降雨时间序列直接使用未来的降雨极端,因此使用该方法间接获得的降雨极值获得的降雨极值,发现建议的方法预计未来设计降雨深度,气候模型之间的变化越来越小。无论气候模型如何,变化率的空间模式也是一致的。预计拟议的方法将有助于公众对气候变化情景下的未来降雨极端的信心,并在制定合理的气候变化适应政策方面具有实际帮助。

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