Gil-Alana Luis A, Gupta Rangan, Sauci Laura, Carmona-González Nieves
University of Navarra (Faculty of Economics, ICS and DATAI), 31080 Pamplona, Spain.
Universidad Francisco de Vitoria, Madrid, Spain.
Theor Appl Climatol. 2022;150(3-4):1731-1744. doi: 10.1007/s00704-022-04232-z. Epub 2022 Oct 29.
This paper investigates the time series properties of the temperature and precipitation anomalies in the contiguous USA by using fractional differentiation. This methodology allows to capture time trend components along with properties such as long-range dependence and the degree of persistence. For aggregated data, we find out that long memory is present in both precipitation and temperature since the integration order is significantly positive in the two cases. The time trend is also positive, being higher for the temperature. In addition, observing disaggregated data by states, for the temperature, there are only seven states where the time trend is not significant, with most of them located in Southeast areas, while for the rest of cases, the time trend is significantly positive. All cases exhibit long-range dependence, though the differencing parameter substantially changes from one state to another, ranging from 0.09 in Nebraska and Kansas to 0.18 in Florida and Michigan. For precipitation, the time trend is insignificant in a large number of cases, and the integration order is smaller than for the temperature. In fact, short memory cannot be rejected in fourteen states, and the highest orders of differencing are obtained in Arizona ( = 0.11) and Texas (0.12). In general, we highlight that one cannot draw conclusions about persistence and trends in these two climate-related variables based on aggregate information of the overall USA, given widespread heterogeneity across the states. Tentatively, the degree of dependence across the states seems to be negatively correlated with their level of climate-related risks and the associated preparedness in terms of handling climate change, but this conclusion requires more elaborate research in the future.
本文运用分数阶差分研究了美国本土温度和降水异常的时间序列特征。该方法能够捕捉时间趋势成分以及诸如长程相关性和持续性程度等特征。对于汇总数据,我们发现降水和温度均存在长记忆性,因为在这两种情况下积分阶数均显著为正。时间趋势也为正,温度的时间趋势更高。此外,按州观察分解后的数据,对于温度而言,只有七个州的时间趋势不显著,其中大部分位于东南部地区,而在其他情况下,时间趋势显著为正。所有情况均呈现长程相关性,不过差分参数在不同州之间变化很大,从内布拉斯加州和堪萨斯州的0.09到佛罗里达州和密歇根州的0.18不等。对于降水,在大量情况下时间趋势不显著,且积分阶数小于温度的积分阶数。事实上,在14个州不能拒绝短记忆性,差分最高阶数出现在亚利桑那州(=0.11)和得克萨斯州(0.12)。总体而言,我们强调鉴于各州存在广泛的异质性,不能基于美国整体的汇总信息得出关于这两个与气候相关变量的持续性和趋势的结论。初步来看,各州之间的依赖程度似乎与其气候相关风险水平以及应对气候变化的相关准备情况呈负相关,但这一结论未来需要更详尽的研究。