Machine learning-enabled calibration of river routing model parameters

IF 2.2 3区 工程技术 Q3 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Ying Zhao, Mayank Chadha, Nicholas Olsen, Elissa Yeates, Josh Turner, Guga Gugaratshan, Gu Qian, Michael D. Todd, Zhen Hu
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引用次数: 0

Abstract

Streamflow prediction of rivers is crucial for making decisions in watershed and inland waterways management. The US Army Corps of Engineers (USACE) uses a river routing model called RAPID to predict water discharges for thousands of rivers in the network for watershed and inland waterways management. However, the calibration of hydrological streamflow parameters in RAPID is time-consuming and requires streamflow measurement data which may not be available for some ungauged locations. In this study, we aim to address the calibration aspect of the RAPID model by exploring machine learning (ML)-based methods to facilitate efficient calibration of hydrological model parameters without the need for streamflow measurements. Various ML models are constructed and compared to learn a relationship between hydrological model parameters and various river parameters, such as length, slope, catchment size, percentage of vegetation, and elevation contours. The studied ML models include Gaussian process regression, Gaussian mixture copula, Random Forest, and XGBoost. This study has shown that ML models that are carefully constructed by considering causal and sensitive input features offer a potential approach that not only obtains calibrated hydrological model parameters with reasonable accuracy but also bypasses the current calibration challenges.
机器学习实现了河道模型参数的校准
河流流量预测对于流域和内陆水道管理决策至关重要。美国陆军工程兵团(USACE)使用一种名为RAPID的河流路径模型来预测流域和内陆水道管理网络中数千条河流的排水量。然而,RAPID中水文流量参数的校准是耗时的,并且需要流量测量数据,而这些数据可能无法用于某些未测量的位置。在这项研究中,我们旨在通过探索基于机器学习(ML)的方法来解决RAPID模型的校准方面,以促进水文模型参数的有效校准,而无需进行流量测量。构建并比较了各种ML模型,以了解水文模型参数与各种河流参数之间的关系,如长度、坡度、集水区大小、植被百分比和高程等值线。所研究的ML模型包括高斯过程回归、高斯混合copula、随机森林和XGBoost。这项研究表明,通过考虑因果和敏感输入特征精心构建的ML模型提供了一种潜在的方法,不仅可以以合理的精度获得校准的水文模型参数,而且可以绕过当前的校准挑战。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Hydroinformatics
Journal of Hydroinformatics 工程技术-工程:土木
CiteScore
4.80
自引率
3.70%
发文量
59
审稿时长
3 months
期刊介绍: Journal of Hydroinformatics is a peer-reviewed journal devoted to the application of information technology in the widest sense to problems of the aquatic environment. It promotes Hydroinformatics as a cross-disciplinary field of study, combining technological, human-sociological and more general environmental interests, including an ethical perspective.
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