Machine Learning for a Heterogeneous Water Modeling Framework

IF 2.6 4区 环境科学与生态学 Q3 ENGINEERING, ENVIRONMENTAL
Jonathan M. Frame, Ryoko Araki, Soelem Aafnan Bhuiyan, Tadd Bindas, Jeremy Rapp, Lauren Bolotin, Emily Deardorff, Qiyue Liu, Francisco Haces-Garcia, Mochi Liao, Nels Frazier, Fred L. Ogden
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Abstract

This technical note describes recent efforts to integrate machine learning (ML) models, specifically long short-term memory (LSTM) networks and differentiable parameter learning conceptual hydrological models (δ conceptual models), into the next-generation water resources modeling framework (Nextgen) to enhance future versions of the U.S. National Water Model (NWM). We address three specific methodology gaps of this new modeling framework: (1) assess model performance across many ungauged catchments, (2) diagnostic-based model selection, and (3) regionalization based on catchment attributes. We demonstrate that an LSTM trained on CAMELS catchments can make large-scale predictions with Nextgen across the New England region and match the average flow duration curve observed by stream gauges for streamflow with low exceedance probability (high flows), but diverges from the mean in high exceedance probability (low flows). We demonstrate improvements in peak flow predictions when using δ conceptual model, but results also suggest that performance increases may come at a cost of accurately representing hydrologic states within the conceptual model. We propose a novel approach using ML to predict the most performant mosaic modeling approach and demonstrate improved distributions of efficiency scores throughout the large sample of basins. Our findings advocate for the future development of ML capabilities within Nextgen for advancing operational hydrological modeling.

Abstract Image

异构水建模框架的机器学习
本技术说明描述了最近将机器学习(ML)模型,特别是长短期记忆(LSTM)网络和可微分参数学习概念水文模型(δ概念模型)集成到下一代水资源建模框架(Nextgen)中的努力,以增强美国国家水模型(NWM)的未来版本。我们解决了这个新建模框架的三个具体方法差距:(1)评估许多未测量的流域的模型性能,(2)基于诊断的模型选择,以及(3)基于流域属性的区域化。我们证明了在camel集水区上训练的LSTM可以与Nextgen一起在新英格兰地区进行大规模预测,并且在低超越概率(高流量)的流流量中与流计观测到的平均流量持续时间曲线相匹配,但在高超越概率(低流量)的流流量中偏离平均值。当使用δ概念模型时,我们证明了峰值流量预测的改进,但结果也表明,性能的提高可能是以准确地表示概念模型内的水文状态为代价的。我们提出了一种新的方法,使用ML来预测最高效的马赛克建模方法,并在整个盆地的大样本中证明了效率分数的改进分布。我们的研究结果提倡在Nextgen内开发机器学习功能,以推进业务水文建模。
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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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