极端降雨数据的非平稳性建模及其对气候适应的影响:坦桑尼亚南部高原地区的案例研究

IF 2.7 Q2 MULTIDISCIPLINARY SCIENCES Scientific African Pub Date : 2024-07-16 DOI:10.1016/j.sciaf.2024.e02321
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引用次数: 0

摘要

坦桑尼亚南部高原地区发生严重山洪的频率越来越高。本研究考察了四个站点(伊林加、姆贝亚、鲁克瓦和鲁武马)跨越 30 年(1991-2020 年)的降雨数据,以研究极端降雨的驱动因素和非稳态行为。水文研究中常用的广义极值(GEV)模型假定分布参数恒定不变,但由于气候的多变性,这一假定可能并不成立,从而可能导致极端量值估计出现偏差。最近的研究引入了一种构建非稳态降雨强度-持续时间-频率(IDF)曲线的技术。该方法仅使用时间作为协变量,将趋势纳入 GEV 分布参数中。然而,时间是否是最合适的协变量还存在不确定性,这凸显了探索非平稳性建模所有潜在协变量的必要性。本研究旨在考虑降雨数据的季节性和气候变化,评估其他时变协变量对极端日降雨事件的影响。具体来说,研究了五个过程(即当地气温变化(LTC)、城市化、年度全球温度异常(GTA)、印度洋偶极子(IOD)和厄尔尼诺-南方涛动(ENSO)周期)作为极端降雨事件的驱动因素。根据这些协变量及其组合,建立了 62 个非稳态 GEV 模型,以及两个利用时间协变量捕捉该地区单峰降雨季节性的非稳态 GEV 模型和一个稳态 GEV 模型(S0)。利用修正的 Akaike 信息准则(AICc),为每个持续时间(即 1 天、3 天和 5 天)的降雨序列选择最佳模型。结果表明,本地过程(即 LTC 和城市化)是 1 天降雨量的最佳协变量,而全球过程(即 IOD、厄尔尼诺/南方涛动周期和 GTA)被认为是所有站点 3 天和 5 天降雨量的最合适协变量。然后,利用确定的最佳非稳态模型(及其最佳协变量)来绘制所有站点的非稳态降雨量 IDF 曲线。根据对非稳态极端值的分析,与稳态方法相比,极端降雨事件的回归期明显缩短。研究还揭示了全球气候指数(厄尔尼诺/南方涛动、IOD、GTA)与坦桑尼亚南部高地长期极端降雨之间的密切联系。城市化和气温变化等当地因素也与 1 天持续时间的降雨事件有显著关联。这些发现强调了综合气候预测的必要性,以便为有效的适应战略提供信息。最后,该研究通过严谨的分析,解决了我们对即将发生的极端降雨事件预测中的相关不确定性问题。研究表明,随着回归期的增加,极端降雨事件的回归水平呈上升趋势,这表明在更长的时间跨度内降雨强度会增加;而相对不确定性分析表明,随着回归期的增加,不确定性也在增加,这强调了长期预测所面临的挑战。
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Modeling non-stationarity in extreme rainfall data and implications for climate adaptation: A case study from southern highlands region of Tanzania

The Southern Highlands region of Tanzania has witnessed an increased frequency of severe flash floods. This study examines rainfall data of four stations (Iringa, Mbeya, Rukwa, and Ruvuma) spanning 30 years (1991–2020) to investigate drivers of extreme rainfall and non-stationarity behavior. The Generalized Extreme Value (GEV) model, commonly used in hydrological studies, assumes constant distribution parameters, which may not be true due to climate variability, potentially leading to bias in extreme quantile estimation. Recent studies have introduced a technique for constructing non-stationary Intensity-Duration-Frequency (IDF) rainfall curves. The method incorporates trends in the parameters of the GEV distribution, only using time as a covariate. However, uncertainty exists about whether time is the most suitable covariate, highlighting the need to explore all potential covariates for modeling non-stationarity. The aim of this study is to assess the influence of other time-varying covariates on extreme daily rainfall events, considering seasonality and climate change in the rainfall data. Specifically, five processes (i.e., local temperature changes (LTC), urbanization, annual Global Temperature Anomaly (GTA), the Indian Ocean Dipole (IOD), and the El Niño-Southern Oscillation (ENSO) cycle) were studied as drivers of extreme rainfall events. Sixty two non-stationary GEV models are developed based on these covariates and their combinations, alongside two non-stationary GEV models using the time covariate to capture the seasonality of the unimodal rainfall in the region, and one stationary GEV model (S0). With the use of corrected Akaike Information Criterion (AICc), the best model for each duration (i.e., 1-, 3-, and 5-days) of rainfall series is chosen. Results indicate that local processes (i.e., LTC and urbanization) are the optimal covariates for 1 day-duration rainfall, while global processes (i.e, IOD, ENSO cycle, and GTA) are identified as the most suitable covariates for 3, and 5 day-duration rainfall across all stations. The identified best non-stationary model (with their best covariates) are then used to develop non-stationary rainfall IDF curves for all stations. According to the analysis of non-stationary extreme values, the return periods of extreme rainfall events concluded a notable decrease in comparison to the stationary approach. The study also revealed strong correlations between global climate indices (ENSO, IOD, GTA) and long-duration extreme rainfall in Tanzania’s Southern Highlands. Local factors like Urbanization and temperature changes also show significant associations with 1-day duration events. These findings emphasize the need for integrated climate forecasting to inform effective adaptation strategies. Finally, the study addresses associated uncertainties in our predictions of forthcoming extreme rainfall events through rigorous analysis. The study demonstrated that return levels for extreme rainfall events exhibit a rising trend with increasing return period, indicating heightened intensity over longer time spans, whereas, a relative uncertainty analysis illustrate escalating uncertainty with increasing return periods, emphasizing challenges in long-term prediction.

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来源期刊
Scientific African
Scientific African Multidisciplinary-Multidisciplinary
CiteScore
5.60
自引率
3.40%
发文量
332
审稿时长
10 weeks
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