Assessing and Enhancing National Water Model Streamflow Predictions for Montane Catchments in the Northeastern United States

IF 2.2 4区 环境科学与生态学 Q3 ENGINEERING, ENVIRONMENTAL
Mirce Morales-Velazquez, Beverley Wemple, James B. Shanley, Scott D. Hamshaw, John T. Kemper, Donna M. Rizzo, Kristen L. Underwood, Patrick J. Clemins, Andrew W. Schroth
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Abstract

This study evaluates National Water Model (NWM) performance in low-order montane catchments across the northeastern United States by comparing retrospective simulations to measured observations. To address deficiencies, we develop a machine learning (ML) correction model for selected sites using LightGBM, a different approach from conventional bias correction methods. Montane, low-order streams play a crucial role in water quality and flood generation but pose challenges for streamflow prediction and are under-represented in the national streamgaging network. NWM provides streamflow forecasts across the United States; yet a focused assessment of its performance in these settings has not been comprehensively undertaken. Results indicate NWM performance varied seasonally, with the best performance during the fall and particularly poor performance during snowmelt, spring runoff, and high flow events, with a tendency towards flow underestimation. The ML correction model markedly improved hourly streamflow prediction accuracy based on continuous time series and runoff event-based metrics. Including antecedent water level measurements as input, even from distant sites, greatly improved model performance, demonstrating the potential to improve predictions by deploying supplemental low-cost water level sensors. We demonstrate that NWM performance can be improved in these complex watersheds using ML tools. This approach could be implemented elsewhere to improve NWM streamflow predictions.

Abstract Image

评估和加强美国东北部山区集水区的国家水模型流量预测
本研究通过比较回顾性模拟与实测观测,评估了美国东北部低阶山区集水区国家水模型(NWM)的性能。为了解决不足之处,我们使用LightGBM为选定的站点开发了一种机器学习(ML)校正模型,这是一种不同于传统偏差校正方法的方法。山地低阶河流在水质和洪水产生中发挥着至关重要的作用,但对河流流量预测构成挑战,并且在国家河流监测网络中代表性不足。NWM提供美国各地的流量预报;然而,尚未对其在这些情况下的表现进行有重点的全面评估。结果表明,NWM在秋季表现最佳,在融雪、春季径流和大流量事件期间表现较差,且有流量低估的趋势。ML校正模型显著提高了基于连续时间序列和径流事件的每小时流量预测精度。包括预先的水位测量作为输入,即使来自遥远的地点,也大大提高了模型的性能,证明了通过部署补充的低成本水位传感器来改进预测的潜力。我们证明,在这些复杂的流域中,使用ML工具可以提高NWM的性能。这种方法可以在其他地方实施,以改善西北水系的流量预测。
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来源期刊
Journal of The American Water Resources Association
Journal of The American Water Resources Association 环境科学-地球科学综合
CiteScore
4.10
自引率
12.50%
发文量
100
审稿时长
3 months
期刊介绍: JAWRA seeks to be the preeminent scholarly publication on multidisciplinary water resources issues. JAWRA papers present ideas derived from multiple disciplines woven together to give insight into a critical water issue, or are based primarily upon a single discipline with important applications to other disciplines. Papers often cover the topics of recent AWRA conferences such as riparian ecology, geographic information systems, adaptive management, and water policy. JAWRA authors present work within their disciplinary fields to a broader audience. Our Associate Editors and reviewers reflect this diversity to ensure a knowledgeable and fair review of a broad range of topics. We particularly encourage submissions of papers which impart a ''take home message'' our readers can use.
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