利用高频传感器数据和美国国家水模型输出来预测饮用水供应盆地的浊度

IF 2.6 4区 环境科学与生态学 Q3 ENGINEERING, ENVIRONMENTAL
John T. Kemper, Kristen L. Underwood, Scott D. Hamshaw, Dany Davis, Jason Siemion, James B. Shanley, Andrew W. Schroth
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引用次数: 0

摘要

随着高频传感器网络日益增强数据驱动的水质模型,基于过程的模型(如美国国家水模型(NWM))正在生成越来越密集尺度的流量预测。现在有机会结合这些产品来构建可操作的水质预测。为此,我们将NWM的流量预测与经过5年以上高频监测数据训练的梯度增强决策树算法(LightGBM)相结合,以预测美国纽约州卡茨基尔山脉的流内浊度水平。结果表明,LightGBM模型能够进行相对熟练的预测,能够对1-3天的提前期进行稳健的预测。LightGBM模型在整个预测范围内对简化的线性模型进行了改进,并且空间更复杂的模型在更短的提前期(1-3天)内对错误的适应能力更强。此外,对模式特征的解释强调高流量是该地区浊度的驱动因素。结果表明,可解释的、灵活的、高效的机器学习算法可以从流量预测中产生有能力的水质预测,并扩大对过程动力学的理解。据我们所知,这里展示的用例是第一个基于NWM的水质预测,它强调了利用NWM扩大国家水质预测能力的潜力,并可以作为全国流域类似工作的指导。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Leveraging High-Frequency Sensor Data and U.S. National Water Model Output to Forecast Turbidity in a Drinking Water Supply Basin

Leveraging High-Frequency Sensor Data and U.S. National Water Model Output to Forecast Turbidity in a Drinking Water Supply Basin

As high-frequency sensor networks increasingly enhance data-driven models of water quality, process-based models like the U.S. National Water Model (NWM) are generating accessible forecasts of streamflow at increasingly dense scales. There is now an opportunity to combine these products to construct actionable water quality forecasts. To that end, we couple streamflow forecasts from the NWM to a gradient-boosted decision tree algorithm (LightGBM) trained on 5+ years of high-frequency monitoring data to forecast in-stream turbidity levels in the Catskill Mountains, NY, USA. Results indicate LightGBM models are capable of relatively skillful predictions, which enable robust forecasts for 1–3 days lead times. LightGBM models offer improvements over a simplified linear model across the entire forecast horizon, and more spatially complex models are more resilient to error at shorter lead times (1–3 days). Moreover, interpretation of model features emphasizes high flows as a driver of turbidity in the region. Results suggest that interpretable, flexible, and efficient machine learning algorithms can produce capable water quality forecasts from streamflow forecasts and expand understanding of process dynamics. The use case illustrated here—to our knowledge the first NWM-based water quality forecast—underscores the potential to employ the NWM to expand national water quality forecasting capacity and can overall serve as a guide for similar efforts in basins across the country.

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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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