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全球变暖对高温破纪录事件规律性的影响
引用本文:宗序平,李明辉,熊开国,胡经国.全球变暖对高温破纪录事件规律性的影响[J].物理学报,2010,59(11):8272-8279.
作者姓名:宗序平  李明辉  熊开国  胡经国
作者单位:(1)扬州大学数学科学与技术学院,扬州 225002; (2)扬州大学物理科学与技术学院,扬州 225002
基金项目:科技部支撑项目"极端气候事件的检测和可预测性关键技术研发" (批准号:2007BAC29B01),国家自然科学基金 (批准号:40875040, 40775048),国家重点基础研究发展计划(批准号:2006CB400503),公益性行业科研专项(批准号:GYHY200906014)资助的课题.
摘    要:分别采用高斯分布函数和偏态分布函数分析了厦门市1954—2004年51年日观测温度资料中的高温破纪录事件的统计规律,并以此采用蒙特卡罗方法对厦门市未来高温破纪录事件发展趋势进行了模拟.结果显示:厦门近50年来6月的日温度观测资料更符合偏态函数统计规律性; 但理论研究表明偏态函数与高斯函数有着同样的收敛极限,即Gumbel 分布函数. 模拟结果还显示:在全球增暖背景下的基于偏态函数分布的蒙特卡罗模拟能较好地揭示未来厦门市极端事件发生规律, 并对厦门未来的10年6月份日温度概率分布做了预测.全球增暖背景,一方 关键词: 高温破纪录事件 蒙特卡罗模拟 偏态分布函数

关 键 词:高温破纪录事件  蒙特卡罗模拟  偏态分布函数
收稿时间:2009-12-21
修稿时间:3/8/2010 12:00:00 AM

Effect of global warming on law of record-breaking high temperature
Zong Xu-Ping,Li Ming-Hui,Xiong Kai-Guo,Hu Jing-Guo.Effect of global warming on law of record-breaking high temperature[J].Acta Physica Sinica,2010,59(11):8272-8279.
Authors:Zong Xu-Ping  Li Ming-Hui  Xiong Kai-Guo  Hu Jing-Guo
Institution:College of Mathematical Science,Yangzhou University,Yangzhou 225002,China;College of Mathematical Science,Yangzhou University,Yangzhou 225002,China;College of Physics Science and Technology,Yangzhou University,Yangzhou 225002,China;College of Physics Science and Technology,Yangzhou University,Yangzhou 225002,China
Abstract:Statistical characteristic of daily temperature series (1954—2004) of Xiamen station is analyzed by using Gaussian and skew distribution functions, and then the future probable trend of record temperature events (RBTE) is also simulated by using Monte-Carlo(MC) methods based on the Gaussian and skew distribution functions, respectively. Results show that the statistical property of nearly 50a daily observation temperature data in June of Xiamen station is more consistent with that obtained from the skew function. However, the theoretical study shows that the skew function and Gaussian function have the same limit of convergence, i.e. the Gumbel distribution function. The results also show that the MC simulation based on the skew distribution with global warming background can reveal the future probable extreme events well, and the Xiamen's daily temperature distribution of June in the next 10 a is predicted. The global warming background can lead the occurrence probabilities of high-temperature record-breaking event and the average daily temperature to increase. In addition, based on the observed date in China, the spatial temperature distribution of the occurrence with the max probability over China in coming 10 years is also presented.
Keywords:record-breaking high temperature events  Monte Carlo simulation  skew distribution function
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