Predictions and drivers of sub-reach-scale annual streamflow permanence for the upper Missouri River basin: 1989–2018

IF 3.1 Q2 GEOSCIENCES, MULTIDISCIPLINARY Journal of Hydrology X Pub Date : 2022-12-01 DOI:10.1016/j.hydroa.2022.100138
Roy Sando , Kristin L. Jaeger , William H. Farmer , Theodore B. Barnhart , Ryan R. McShane , Toby L. Welborn , Kendra E. Kaiser , Konrad C. Hafen , Kyle Blasch , Benjamin York , Alden Shallcross
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引用次数: 1

Abstract

The presence of year-round surface water in streams (i.e., streamflow permanence) is an important factor for identifying aquatic habitat availability, determining the regulatory status of streams, managing land use change, allocating water resources, and designing scientific studies. However, accurate, high resolution, and dynamic prediction of streamflow permanence that accounts for year-to-year variability at a regional extent is a major gap in modeling capability. Herein, we expand and adapt the U.S. Geological Survey (USGS) PRObability of Streamflow PERmanence (PROSPER) model from its original implementation in the Pacific Northwest (PROSPERPNW) to the upper Missouri River basin (PROSPERUM), a geographical region that includes mountain and prairie ecosystems of the northern United States. PROSPERUM is an empirical model used to estimate the probability that a stream channel has year-round flow in response to climatic conditions (monthly and annual) and static physiographic predictor variables of the upstream basin. The structure and approach of PROSPERUM are generally consistent with the PROSPERPNW model but include improved spatial resolution (10 m) and a longer modeling period. Average model accuracy was 81 %. Drainage area, upstream proportion as wetlands, and upstream proportion as developed land cover were the most important predictor variables. The PROSPERUM model identifies decreases in streamflow permanence during climatically drier years, although there is variability in the magnitude across basins highlighting geographically varying sensitivity to drought. Variability in the response of perennial streams to drought conditions among basins in the study area was also observed.

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密苏里河上游流域子河段尺度年径流持久性的预测和驱动因素:1989-2018
河流中全年地表水的存在(即河流的持久性)是确定水生栖息地可用性、确定河流的调节状态、管理土地利用变化、分配水资源和设计科学研究的重要因素。然而,准确、高分辨率和动态预测在区域范围内的年-年变化是模拟能力的主要差距。在此,我们将美国地质调查局(USGS)溪流持久性概率(PROSPER)模型从其最初在太平洋西北地区(PROSPERPNW)的实施扩展并调整到密苏里河上游流域(PROSPERUM),这是一个包括美国北部山区和草原生态系统的地理区域。PROSPERUM是一个经验模型,用于估计河道有响应气候条件(月和年)的全年流量的概率和上游盆地的静态地理预测变量。PROSPERUM的结构和方法与PROSPERPNW模型基本一致,但空间分辨率提高了(10 m),建模周期更长。平均模型准确率为81%。流域面积、上游湿地比例和上游发达土地覆盖比例是最重要的预测变量。PROSPERUM模型确定,在气候干燥的年份,河流的持久性会减少,尽管不同流域的幅度存在差异,突出了对干旱的地理敏感性不同。研究区流域间多年生河流对干旱条件的响应也存在变异性。
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来源期刊
Journal of Hydrology X
Journal of Hydrology X Environmental Science-Water Science and Technology
CiteScore
7.00
自引率
2.50%
发文量
20
审稿时长
25 weeks
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