Machine Learning Classification Strategy to Improve Streamflow Estimates in Diverse River Basins in the Colorado River Basin

IF 2.6 3区 地球科学 Q2 ASTRONOMY & ASTROPHYSICS Earth and Space Science Pub Date : 2024-12-22 DOI:10.1029/2024EA003798
Sarah Maebius, K. E. Bennett, J. Schwenk
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Abstract

Streamflow in the Colorado River Basin (CRB) is significantly altered by human activities including land use/cover alterations, reservoir operation, irrigation, and water exports. Climate is also highly varied across the CRB which contains snowpack-dominated watersheds and arid, precipitation-dominated basins. Recently, machine learning methods have improved the generalizability and accuracy of streamflow models. Previous successes with LSTM modeling have primarily focused on unimpacted basins, and few studies have included human impacted systems in either regional or single-basin modeling. We demonstrate that the diverse hydrological behavior of river basins in the CRB are too difficult to model with a single, regional model. We propose a method to delineate catchments into categories based on the level of predictability, hydrological characteristics, and the level of human influence. Lastly, we model streamflow in each category with climate and anthropogenic proxy data sets and use feature importance methods to assess whether model performance improves with additional relevant data. Overall, land use cover data at a low temporal resolution was not sufficient to capture the irregular patterns of reservoir releases, demonstrating the importance of having high-resolution reservoir release data sets at a global scale. On the other hand, the classification approach reduced the complexity of the data and has the potential to improve streamflow forecasts in human-altered regions.

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机器学习分类策略以改善科罗拉多河流域不同河流流域的流量估计
科罗拉多河流域(CRB)的水流受到人类活动的显著影响,包括土地利用/覆盖改变、水库运行、灌溉和水出口。CRB的气候变化也很大,包括以积雪为主的流域和干旱、降水为主的盆地。近年来,机器学习方法提高了流模型的泛化性和准确性。以前LSTM建模的成功主要集中在未受影响的盆地,很少有研究在区域或单盆地建模中包括人类影响的系统。我们证明了CRB流域的不同水文行为很难用单一的区域模型来模拟。我们提出了一种基于可预测性水平、水文特征和人类影响水平来划分集水区的方法。最后,我们使用气候和人为代理数据集对每个类别的流量进行建模,并使用特征重要性方法来评估模型性能是否随着额外的相关数据而改善。总体而言,低时间分辨率的土地利用覆盖数据不足以捕捉水库释放的不规则模式,这表明在全球范围内拥有高分辨率水库释放数据集的重要性。另一方面,分类方法降低了数据的复杂性,并有可能改善人类改变地区的流量预测。
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来源期刊
Earth and Space Science
Earth and Space Science Earth and Planetary Sciences-General Earth and Planetary Sciences
CiteScore
5.50
自引率
3.20%
发文量
285
审稿时长
19 weeks
期刊介绍: Marking AGU’s second new open access journal in the last 12 months, Earth and Space Science is the only journal that reflects the expansive range of science represented by AGU’s 62,000 members, including all of the Earth, planetary, and space sciences, and related fields in environmental science, geoengineering, space engineering, and biogeochemistry.
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