利用非平稳深度-频率曲线表征局地降水趋势

IF 0.8 4区 农林科学 Q4 AGRICULTURAL ENGINEERING Applied Engineering in Agriculture Pub Date : 2023-01-01 DOI:10.13031/aea.15247
Kalra Marali, R. Cibin
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引用次数: 0

摘要

设计风暴应考虑气候变化情景下的非平稳性。拟合了三个广义极值分布来表示局地降水分析的非平稳性。本研究提出的非平稳模型在降水趋势强的地区表现良好。摘要随着气候变化的推进,支配传统降水分析的平稳性假设正变得站不住脚。纳入非平稳性的研究通常使用全球环流模式(GCM)预估来确定预期降水变化的幅度和方向。然而,该方法计算成本高,空间分辨率不高,不适合局部降水分析。在本研究中,非平稳性用参数随时间变化的降水概率分布来表示。本文拟合了三种广义极值(GEV)分布:(1)移位模型,其中GEV位置参数随时间线性变化;(2)拉伸模型,其中GEV位置和尺度参数均随时间线性变化;(3)平稳模型,为比较提供时不变分布。该方法应用于宾夕法尼亚州5个长期测量点90年来(1900-1989)的24小时年最大降水记录。结果表明,局地气候效应可以在小空间尺度上引起降水差异。在五个位置中的两个没有检测到显著的非平稳性。然而,在三个地区,GEV的位置和规模的增加共同造成了极端降水频率的大幅上升,尽管并不总是显著上升。这些趋势被外推了30年(1990-2019年),并与当年的观测分布进行了比较。非平稳模型似乎在降水趋势较强的地点表现较好,这表明选择最需要非平稳分析的地点的程序很简单。关键词:气候变化,设计风暴,广义极值,非平稳性
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Using Nonstationary Depth-Frequency Curves to Characterize Local Precipitation Trends
Highlights Design storms should incorporate nonstationarity under changing climate scenarios. Three generalized extreme value distributions were fitted to represent nonstationarity for local precipitation analysis. The nonstationary models proposed in this study perform well at sites with strong precipitation trends. Abstract. As climate change advances, the stationarity assumption that governs traditional precipitation analysis is becoming untenable. Studies that incorporate nonstationarity typically use global circulation model (GCM) projections to determine the magnitude and direction of expected precipitation changes. However, the high computational costs and the coarse spatial resolution of GCMs make this method unsuitable for local precipitation analysis. In this study, nonstationarity is represented by a precipitation probability distribution with time-varying parameters. Three generalized extreme value (GEV) distributions are fitted: (1) the shift model, where the GEV location parameter varies linearly with time, (2) the stretch model, where the GEV location and scale parameters both vary linearly with time, and (3) the stationary model, a time-invariant distribution provided for the purpose of comparison. This procedure is applied to 24-h annual maximum precipitation records for ninety years (1900-1989) at five long-term measuring sites in Pennsylvania. Results varied among the five sites, suggesting that localized climate effects can cause precipitation differences at a small spatial scale. No significant nonstationarity was detected in two of the five locations. In three locations, however, increases in GEV location and scale combined to create a substantial, though not always significant, rise in the frequency of extreme precipitation. These trends were extrapolated forward over 30 years (1990-2019) and compared with an observed distribution for that year. The nonstationary models appeared to perform better at sites with stronger precipitation trends, which suggests a simple procedure for selecting sites where nonstationary analysis is most needed. Keywords: Climate change, Design storm, Generalized extreme value, Nonstationarity.
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来源期刊
Applied Engineering in Agriculture
Applied Engineering in Agriculture 农林科学-农业工程
CiteScore
1.80
自引率
11.10%
发文量
69
审稿时长
6 months
期刊介绍: This peer-reviewed journal publishes applications of engineering and technology research that address agricultural, food, and biological systems problems. Submissions must include results of practical experiences, tests, or trials presented in a manner and style that will allow easy adaptation by others; results of reviews or studies of installations or applications with substantially new or significant information not readily available in other refereed publications; or a description of successful methods of techniques of education, outreach, or technology transfer.
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