QDeepGR4J:基于分位数的深度学习和GR4J混合降雨径流模型集成,用于不确定量化的极端流量预测

IF 6.3 1区 地球科学 Q1 ENGINEERING, CIVIL
Arpit Kapoor, Rohitash Chandra
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引用次数: 0

摘要

概念性降雨径流模型帮助水文学家和气候科学家建立水流模型,为水管理实践提供信息。深度学习的最新进展揭示了将水文模型与深度学习模型相结合的潜力,以获得更好的可解释性和改进的预测性能。在我们之前的工作中,我们介绍了DeepGR4J,它使用深度学习模型作为路由组件的代理来增强GR4J概念性降雨径流模型。DeepGR4J提高了降雨径流预测的准确性,特别是在干旱的集水区。分位数回归模型已广泛用于量化不确定性,同时帮助极值预测。在本文中,我们使用基于分位数回归的集成学习框架扩展DeepGR4J来量化流预测中的不确定性。我们还利用不确定性界限来识别可能导致洪水的极端流量事件。我们进一步将模型扩展到不确定性边界的多步流预测。我们设计了实验,使用CAMELS-Aus数据集对所提出的框架进行详细评估。结果表明,与基线深度学习模型相比,我们提出的分位数DeepGR4J框架提高了预测精度和不确定性区间质量(区间分数)。在此基础上,利用分位深度gr4j进行洪水风险评价,验证了其作为洪水预警系统的适用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
QDeepGR4J: Quantile-based ensemble of deep learning and GR4J hybrid rainfall-runoff models for extreme flow prediction with uncertainty quantification
Conceptual rainfall-runoff models aid hydrologists and climate scientists in modelling streamflow to inform water management practices. Recent advances in deep learning have unravelled the potential for combining hydrological models with deep learning models for better interpretability and improved predictive performance. In our previous work, we introduced DeepGR4J, which enhanced the GR4J conceptual rainfall-runoff model using a deep learning model to serve as a surrogate for the routing component. DeepGR4J had an improved rainfall-runoff prediction accuracy, particularly in arid catchments. Quantile regression models have been extensively used for quantifying uncertainty while aiding extreme value forecasting. In this paper, we extend DeepGR4J using a quantile regression-based ensemble learning framework to quantify uncertainty in streamflow prediction. We also leverage the uncertainty bounds to identify extreme flow events potentially leading to flooding. We further extend the model to multi-step streamflow predictions for uncertainty bounds. We design experiments for a detailed evaluation of the proposed framework using the CAMELS-Aus dataset. The results show that our proposed Quantile DeepGR4J framework improves the predictive accuracy and uncertainty interval quality (interval score) compared to baseline deep learning models. Furthermore, we carry out flood risk evaluation using Quantile DeepGR4J, and the results demonstrate its suitability as an early warning system.
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来源期刊
Journal of Hydrology
Journal of Hydrology 地学-地球科学综合
CiteScore
11.00
自引率
12.50%
发文量
1309
审稿时长
7.5 months
期刊介绍: The Journal of Hydrology publishes original research papers and comprehensive reviews in all the subfields of the hydrological sciences including water based management and policy issues that impact on economics and society. These comprise, but are not limited to the physical, chemical, biogeochemical, stochastic and systems aspects of surface and groundwater hydrology, hydrometeorology and hydrogeology. Relevant topics incorporating the insights and methodologies of disciplines such as climatology, water resource systems, hydraulics, agrohydrology, geomorphology, soil science, instrumentation and remote sensing, civil and environmental engineering are included. Social science perspectives on hydrological problems such as resource and ecological economics, environmental sociology, psychology and behavioural science, management and policy analysis are also invited. Multi-and interdisciplinary analyses of hydrological problems are within scope. The science published in the Journal of Hydrology is relevant to catchment scales rather than exclusively to a local scale or site.
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