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首页> 外文期刊>Journal of Climate >Quantile Regression-Based Spatiotemporal Analysis of Extreme Temperature Change in China
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Quantile Regression-Based Spatiotemporal Analysis of Extreme Temperature Change in China

机译:基于Smastile回归的时空分析中国极端温度变化

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In this study, temporal trends and spatial patterns of extreme temperature change are investigated at 352 meteorological stations in China over the period 1956-2013. The temperature series are first examined for evidence of long-range dependence at daily and monthly time scales. At most stations there is evidence of significant long-range dependence. Noncrossing quantile regression has been used for trend analysis of temperature series. For low quantiles of daily mean temperature and monthly minimum value of daily minimum temperature (TNn) in January, there is an increasing trend at most stations. A decrease is also observed in a zone ranging from northeastern China to central China for higher quantiles of daily mean temperature and monthly maximum value of daily maximum temperature (TXx) in July. Changes of the large-scale atmospheric circulation partly explain the trends of temperature extremes. To reveal the spatial pattern of temperature changes, a density-based spatial clustering algorithm is used to cluster the quantile trends of daily temperature series for 19 quantile levels (0.05, 0.1,..., 0.95). Spatial cluster analysis identifies a few large clusters showing different warming patterns in different parts of China. Finally, quantile regression reveals the connections between temperature extremes and two large-scale climate patterns: El Nino-Southern Oscillation (ENSO) and the Arctic Oscillation (AO). The influence of ENSO on cold extremes is significant at most stations, but its influence on warm extremes is only weakly significant. The AO not only affects the cold extremes in northern and eastern China, but also affects warm extremes in northeastern and southern China.
机译:在本研究中,在1956 - 2013年中国的352个气象站在中国的352个气象站研究了极端温度变化的时间趋势和空间模式。首先检查温度系列,以便在日常和每月时间尺度上进行远程依赖的证据。在大多数站点上有证据表明远程依赖性显着。非交叉量子回归已用于温度系列的趋势分析。对于1月份的日常平均温度和每日最低温度(TNN)的每日最低温度(TNN)的低量值,大多数站点都有越来越大的趋势。从中国东北到中部的一个区域也观察到了七月的每日平均温度和每日最高温度(TXX)的最高价值的较高量级的区域中减少。大规模大气循环的变化部分解释了极端温度的趋势。为了揭示温度变化的空间模式,使用基于密度的空间聚类算法用于聚类每日温度串的定位趋势,以进行19分位数(0.05,0.1,...,0.95)。空间聚类分析识别出几个大型集群,显示了中国不同地区的不同变暖模式。最后,量子回归揭示了温度极端和两个大规模气候模式之间的连接:El Nino-Southern振荡(ENSO)和北极振荡(AO)。 ENSO对冷极端的影响在大多数站点上都是显着的,但它对温暖极端的影响只是弱大意义。 AO不仅影响北部和中国东部的寒冷,而且影响东北部和中国南部的温暖极端。

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