Enforcing Water Balance in Multitask Deep Learning Models for Hydrological Forecasting

IF 3.1 3区 地球科学 Q2 METEOROLOGY & ATMOSPHERIC SCIENCES Journal of Hydrometeorology Pub Date : 2024-01-01 DOI:10.1175/jhm-d-23-0073.1
Lu Li, Yongjiu Dai, Zhongwang Wei, Shangguan Wei, Yonggen Zhang, Nan Wei, Qingliang Li
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Abstract

Accurate prediction of hydrological variables (HVs) is critical for understanding hydrological processes. Deep learning (DL) models have shown excellent forecasting abilities for different HVs. However, most DL models typically predicted HVs independently, without satisfying the principle of water balance. This missed the interactions between different HVs in the hydrological system and the underlying physical rules. In this study, we developed a DL model based on multitask learning and hybrid physically constrained schemes to simultaneously forecast soil moisture, evapotranspiration, and runoff. The models were trained using ERA5-Land data, which have water budget closure. We thoroughly assessed the advantages of the multitask framework and the proposed constrained schemes. Results showed that multitask models with different loss-weighted strategies produced comparable or better performance compared to the single-task model. The multitask model with a scaling factor of 5 achieved the best among all multitask models and performed better than the single-task model over 70.5% of grids. In addition, the hybrid constrained scheme took advantage of both soft and hard constrained models, providing physically consistent predictions with better model performance. The hybrid constrained models performed the best among different constrained models in terms of both general and extreme performance. Moreover, the hybrid model was affected the least as the training data were artificially reduced, and provided better spatiotemporal extrapolation ability under different artificial prediction challenges. These findings suggest that the hybrid model provides better performance compared to previously reported constrained models when facing limited training data and extrapolation challenges.
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在用于水文预测的多任务深度学习模型中强制实现水量平衡
准确预测水文变量(HVs)对于了解水文过程至关重要。深度学习(DL)模型已显示出对不同水文变量的出色预测能力。然而,大多数深度学习模型通常是独立预测水文变量,不符合水量平衡原则。这就忽略了水文系统中不同水文变量之间的相互作用以及潜在的物理规则。在本研究中,我们开发了一种基于多任务学习和混合物理约束方案的 DL 模型,可同时预测土壤水分、蒸散量和径流。模型是利用ERA5-Land数据训练的,该数据具有水预算封闭性。我们全面评估了多任务框架和拟议约束方案的优势。结果表明,与单任务模型相比,采用不同损失加权策略的多任务模型具有相当或更好的性能。在所有多任务模型中,缩放因子为 5 的多任务模型性能最佳,在 70.5% 的网格中性能优于单任务模型。此外,混合约束方案同时利用了软约束模型和硬约束模型的优势,提供了物理上一致的预测,并具有更好的模型性能。在不同的约束模型中,混合约束模型的一般性能和极端性能都是最好的。此外,混合模型在人为减少训练数据时受影响最小,在不同的人工预测挑战下提供了更好的时空外推能力。这些发现表明,与之前报道的约束模型相比,混合模型在面对有限的训练数据和外推挑战时能提供更好的性能。
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来源期刊
Journal of Hydrometeorology
Journal of Hydrometeorology 地学-气象与大气科学
CiteScore
7.40
自引率
5.30%
发文量
116
审稿时长
4-8 weeks
期刊介绍: The Journal of Hydrometeorology (JHM) (ISSN: 1525-755X; eISSN: 1525-7541) publishes research on modeling, observing, and forecasting processes related to fluxes and storage of water and energy, including interactions with the boundary layer and lower atmosphere, and processes related to precipitation, radiation, and other meteorological inputs.
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