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Development of record-breaking statistics for climatological time-series analysis.

机译:开发用于气候时间序列分析的破纪录统计数据。

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摘要

The number of record-breaking events expected to occur in a strictly stationary time-series depends only on the number of values in the time-series, regardless of distribution. This holds whether the events are record-breaking highs or lows and whether we count from past to present or present to past. However, these symmetries are broken in distinct ways by trends in the mean and variance. We define indices that capture this information and use them to detect weak trends from multiple time-series. Here, we use these methods to answer the following questions: (1) Is there a variability trend among globally distributed surface temperature time-series? We find a significant decreasing variability over the past century for the Global Historical Climatology Network (GHCN). This corresponds to about a 10% change in the standard deviation of inter-annual monthly mean temperature distributions. (2) How are record-breaking high and low surface temperatures in the United States affected by time period? We investigate the United States Historical Climatology Network (USHCN) and find that the ratio of record-breaking highs to lows in 2006 increases as the time-series extend further into the past. When we consider the ratio as it evolves with respect to a fixed start year, we find it is strongly correlated with the ensemble mean. We also compare the ratios for USHCN and GHCN (minus USHCN stations). We find the ratios grow monotonically in the GHCN data set, but not in the USHCN data set. (3) Do we detect either mean or variance trends in annual precipitation within the United States? We find that the total annual and monthly precipitation in the United States (USHCN) has increased over the past century. Evidence for a trend in variance is inconclusive.
机译:预期在严格固定的时间序列中发生的打破记录事件的数量仅取决于时间序列中的值的数量,而与分布无关。无论事件是创纪录的高点还是低点,以及我们是从过去到现在还是从现在到过去,这都可以成立。但是,均值和方差趋势以不同的方式打破了这些对称性。我们定义了捕获此信息的索引,并使用它们来检测多个时间序列的弱趋势。在这里,我们使用这些方法来回答以下问题:(1)全球分布的表面温度时间序列之间是否存在变化趋势?在过去的一个世纪中,我们发现全球历史气候学网络(GHCN)的变异性显着下降。这对应于年际月平均温度分布的标准偏差约10%的变化。 (2)时间段对美国破纪录的高低地表温度有何影响?我们调查了美国历史气候学网络(USHCN),发现随着时间序列进一步延伸到过去,2006年创纪录的高点与低点之比增加。当我们考虑到相对于固定起始年的比率变化时,我们发现该比率与总体平均值紧密相关。我们还比较了USHCN和GHCN(减去USHCN站)的比率。我们发现比例在GHCN数据集中单调增长,但在USHCN数据集中却没有。 (3)我们是否检测到美国年降水量的均值或方差趋势?我们发现,过去一个世纪以来,美国(USHCN)的年降水总量和月降水总量都有所增加。方差趋势的证据尚无定论。

著录项

  • 作者

    Anderson, Amalia.;

  • 作者单位

    Michigan Technological University.;

  • 授予单位 Michigan Technological University.;
  • 学科 Applied Mathematics.;Climate Change.
  • 学位 Ph.D.
  • 年度 2011
  • 页码 158 p.
  • 总页数 158
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-17 11:44:25

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