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SAX-quantile based multiresolution approach for finding heatwave events in summer temperature time series

机译:基于SAX分位数的多分辨率方法,用于查找夏季温度时间序列中的热浪事件

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Time series pattern discovery is of great importance in a large variety of environmental and engineering applications, from supporting predictive models to helping to understand hidden underlying processes. This work develops a multiresolution time series method for extracting patterns in weather records, particular temperature data. The topic is important, as, given a warming climate, morbidity andmortality are expected to rise as heatwave frequency and intensity increase. By analysing summer temperature quantiles at different levels of coarseness, it was found that compounding models can contain a complete description of severe weather events. This new multiresolution quantile approach is developed as an extension of the symbolic aggregate approximation of the temperature time series in which quantiles are computed at every stretch of the piecewise partition. The process is iterated at different scales of the partition, and it was found to be a very useful approach for finding patterns related to both heatwave periods and intensities. The method is successfully tested using real weather records from Brazil (Recife) and the UK (London), and it was found that in both locations heatwave intensity and frequency are increasing at a substantial rate. In addition, it was found that the rate of increase in intensity of the heatwaves is far outstripping the rate of increase in mean summer temperature: by a factor of 2 in Recife and a factor of 6 in London. The approach will be of use to those looking at the impact of future climates on civil engineering, water resources, energy use, agriculture and health care, or those looking for sustained extreme events in any time series.
机译:从支持预测模型到帮助理解隐藏的潜在过程,时间序列模式发现在各种环境和工程应用中都非常重要。这项工作开发了一种多分辨率时间序列方法,用于提取天气记录(特定温度数据)中的模式。这个话题很重要,因为鉴于气候变暖,预计发病率和死亡率会随着热波频率和强度的增加而增加。通过分析不同粗度水平下的夏季温度分位数,发现复合模型可以包含对严重天气事件的完整描述。这种新的多分辨率分位数方法是对温度时间序列的符号集合近似的扩展,其中在分段分区的每个范围内都计算分位数。该过程在分区的不同尺度上进行迭代,并且发现这是查找与热浪周期和强度有关的模式的非常有用的方法。该方法已使用来自巴西(累西腓)和英国(伦敦)的真实天气记录成功进行了测试,并且发现在两个位置,热波强度和频率均以相当大的速率增加。此外,还发现热浪强度的增加率远远超过了夏季平均温度的增加率:累西腓的系数为2,伦敦的系数为6。该方法将适用于那些关注未来气候对土木工程,水资源,能源使用,农业和卫生保健的影响的人,或者那些希望在任何时间序列中持续发生极端事件的人。

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