2017年佐治亚州、南卡罗来纳州和北卡罗来纳州农村河流洪水的规模和频率

Toby D. Feaster, Anthony J. Gotvald, Jonathan W. Musser, J. Curtis Weaver, Katharine R. Kolb, Andrea G. Veilleux, Daniel M. Wagner
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引用次数: 2

摘要

欲了解更多信息,请联系:南大西洋水科学中心主任。地质调查局1770 Corporate Drive, Suite 500Norcross, GA 30093Contact Pubs Warehouse对洪水的震级和频率的可靠估计是乔治亚、南卡罗来纳和北卡罗来纳水工结构设计和洪泛平原管理框架的重要组成部分。美国地质调查局(U.S. Geological Survey)河道测量的年峰值流量用于计算这些河道的洪水频率。然而,还需要对未开发的河流位置进行洪水频率估计。一个被称为区域化的过程被用来建立回归方程,以估计未受灾地区洪水的规模和频率。采用了一种多州方法来更新对佐治亚州、南卡罗来纳州和北卡罗来纳州农村、未开发盆地洪水的震级和频率的估计。研究人员分析了截至2017年9月的965条河流的年度峰值流量数据,其中包括佐治亚州、南卡罗来纳州、北卡罗来纳州以及阿拉巴马州、佛罗里达州、田纳西州和弗吉尼亚州邻近地区的农村河流10年或更长时间的数据。根据国家指导方针,对965条河流分别计算了50%、20%、10%、4%、2%、1%、0.5%和0.2%的年超过概率流量的洪水频率估计值,分别对应于2、5、10、25、50、100、200和500年的洪水复发间隔。作为河道洪水频率估算计算的一部分,利用贝叶斯广义最小二乘回归模型得到了区域偏度系数(0.048)的更新值。新的区域偏态预测的均方误差或平均方差为0.092。此外,利用地理信息系统计算了这些站点的流域特征。对965条河流的探索性分析证实了在之前的农村洪水频率研究中定义的乔治亚州、南卡罗来纳州和北卡罗来纳州的五个水文区域。从965个流图中,使用有30年或以上记录的流图来完成峰值流量趋势分析。在965个流量表中,有164个流量表被发现是冗余的,被排除在区域回归分析之外。来自其余801条河流的数据(乔治亚州292条,南卡罗来纳州75条,北卡罗来纳州303条,阿拉巴马州15条,佛罗里达州12条,田纳西州39条,弗吉尼亚州65条)用于将流域特征与洪水频率估算相关联的区域回归分析。该分析基于广义最小二乘回归,用于开发一组预测方程,以估计佐治亚州、南卡罗来纳州和北卡罗来纳州农村、未开发盆地的年流量超过概率为50%、20%、10%、4%、2%、1%、0.5%和0.2%。最后一组预测方程均为五个水文区内流域面积和流域百分比的函数。这些回归方程的平均预测误差在35.8%到44.4%之间。还计算了佐治亚州、南卡罗来纳州和北卡罗来纳州72条受管制的河流(例如,流量被水坝或堰改变的河流)的洪水频率估计,这些河流使用截至2019年水年的数据进行了20年或更长时间的管制后记录。水年是从每年的10月1日到9月30日,以水年结束的年份来指定。在72个受监管的流量中,18个有预监管期的记录,也作为本研究的一部分进行了分析。流量调整应用于历史峰值和大洪水,如果有的话,在调整后的频率分析中使用。大洪水的估计为频率分析提供了有价值的信息,因此列入了管制后的频率分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Magnitude and frequency of floods for rural streams in Georgia, South Carolina, and North Carolina, 2017—Results
First posted April 28, 2023 For additional information, contact: Director, South Atlantic Water Science CenterU.S. Geological Survey1770 Corporate Drive, Suite 500Norcross, GA 30093Contact Pubs Warehouse Reliable estimates of the magnitude and frequency of floods are an important part of the framework for hydraulic-structure design and flood-plain management in Georgia, South Carolina, and North Carolina. Annual peak flows measured at U.S. Geological Survey streamgages are used to compute flood‑frequency estimates at those streamgages. However, flood‑frequency estimates also are needed at ungaged stream locations. A process known as regionalization was used to develop regression equations to estimate the magnitude and frequency of floods at ungaged locations.A multistate approach was used to update estimates of the magnitude and frequency of floods in rural, ungaged basins in Georgia, South Carolina, and North Carolina. Annual peak-flow data through September 2017 were analyzed for 965 streamgages with 10 or more years of data on rural streams in Georgia, South Carolina, North Carolina, and adjacent parts of Alabama, Florida, Tennessee, and Virginia. Flood‑frequency estimates of the 50‑, 20‑, 10‑, 4‑, 2‑, 1‑, 0.5‑, and 0.2‑percent annual exceedance probability streamflows, which correspond to flood-recurrence intervals of 2, 5, 10, 25, 50, 100, 200, and 500 years, respectively, were computed for the 965 streamgages following national guidelines. As part of the computation of flood‑frequency estimates for the streamgages, an updated value for the regional skew coefficient (0.048) was developed using a Bayesian generalized least squares regression model. The new regional skew has a mean square error or average variance of prediction of 0.092. Additionally, basin characteristics for these stations were computed using a geographical information system.Exploratory analyses on the 965 streamgages confirmed the five hydrologic regions for Georgia, South Carolina, and North Carolina defined in a previous rural flood‑frequency study. From the 965 streamgages, streamgages with 30 or more years of record were used to complete a peak-flow trend analysis. Of the 965 streamgages, 164 streamgages were found to be redundant and were excluded from the regional regression analyses. Data from the remaining 801 streamgages (292 in Georgia, 75 in South Carolina, 303 in North Carolina, 15 in Alabama, 12 in Florida, 39 in Tennessee, and 65 in Virginia) were used in a regional regression analysis relating basin characteristics to flood‑frequency estimates. This analysis, based on generalized least squares regression, was used to develop a set of predictive equations to estimate the 50‑, 20‑, 10‑, 4‑, 2‑, 1‑, 0.5‑, and 0.2‑percent annual exceedance probability streamflows for rural, ungaged basins in Georgia, South Carolina, and North Carolina. The final set of predictive equations are all functions of drainage area and percentage of the drainage basin within each of the five hydrologic regions. Average errors of prediction for these regression equations range from 35.8 to 44.4 percent.Flood‑frequency estimates also were computed for 72 regulated (for example, a streamgage where flow is altered by a dam or weir) streamgages in Georgia, South Carolina, and North Carolina with 20 or more years of post-regulation record using data through water year 2019. The water year is the annual period from October 1 through September 30 and is designated by the year in which the period ends. Of the 72 regulated streamgages, 18 had pre-regulated periods of record that also were analyzed as part of this study. Flow adjustments were applied to historic peaks and large floods from the pre-regulated period, if available, for use in the post-regulation frequency analysis. Estimates of large floods provide valuable information in frequency analysis and, thus, were included in the post-regulation frequency analysis.
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