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Future Trend in Seasonal Lengths and Extreme Temperature Distributions Over South Korea

机译:韩国季节长度和极端温度分布的未来趋势

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摘要

CSEOF analysis is conducted on the daily mean, maximum, and minimum temperatures measured at 60 Korea Meteorological Administration stations in the period of 1979-2014. Each PC time series is detrended and fitted to an autoregressive (AR) model. The resulting AR models are used to generate 100 sets of synthetic PC time series for the period of 1979-2064, and the linear trends are added back to the resulting PC time series. Then, 100 sets of synthetic daily temperatures are produced by using the synthetic PC time series together with the The cyclostationary EOF (CSEOF) loading vectors. The statistics of the synthetic daily temperatures are similar to those of the original data during the observational period (1979-2064). Based on the synthetic datasets, future statistics including distribution of extreme temperatures and the length of four seasons have been analyzed. Average daily temperature in spring is expected to decrease by a small amount, whereas average temperatures in summer, fall and winter are expected to increase. Standard deviation of daily temperatures is expected to increase in all four seasons. The Generalized Extreme Value and Generalized Pareto distributions of extreme temperatures indicate that both warm and cold extremes are likely to increase in summer, while only warm extremes are predicted to increase significantly in winter. Thus, heat waves will increase and cold waves will decrease in number in future. Spring and fall will be shorter, whereas summer and winter will be longer. A statistical prediction carried out in the present study may serve as a baseline solution for numerical predictions using complex models.
机译:CSEOF分析是根据1979-2014年在60个韩国气象局的日平均,最高和最低温度进行的。每个PC时间序列都经过去趋势处理,并适合于自回归(AR)模型。所得的AR模型用于生成1979-2064年期间的100组合成PC时间序列,并将线性趋势加回到所得的PC时间序列中。然后,通过使用合成PC时间序列和循环平稳EOF(CSEOF)加载向量,可以生成100组合成日温度。合成日温度的统计数据与观测期(1979年至2064年)的原始数据相似。在综合数据集的基础上,分析了包括极端温度分布和四个季节长度在内的未来统计数据。预计春季的日平均温度会少量下降,而夏季,秋季和冬季的日平均温度预计会上升。预计在所有四个季节中,每日温度的标准偏差都会增加。极端温度的广义极值和广义帕累托分布表明,夏季的暖极端和冷极端都可能增加,而冬季预计只有暖极端显着增加。因此,将来热浪将增加而冷浪将减少。春季和秋季将更短,而夏季和冬季将更长。在本研究中进行的统计预测可以用作使用复杂模型进行数值预测的基准解决方案。

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