Approaches for enhancing extrapolability in process-based and data-driven models in hydrology

Haiyang Shi
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Abstract

The application of process-based and data-driven hydrological models is crucial in modern hydrological research, especially for predicting key water cycle variables such as runoff, evapotranspiration (ET), and soil moisture. These models provide a scientific basis for water resource management, flood forecasting, and ecological protection. Process-based models simulate the physical mechanisms of watershed hydrological processes, while data-driven models leverage large datasets and advanced machine learning algorithms. This paper reviewed and compared methods for assessing and enhancing the extrapolability of both model types, discussing their prospects and limitations. Key strategies include the use of leave-one-out cross-validation and similarity-based methods to evaluate model performance in ungauged regions. Deep learning, transfer learning, and domain adaptation techniques are also promising in their potential to improve model predictions in data-sparse and extreme conditions. Interdisciplinary collaboration and continuous algorithmic advancements are also important to strengthen the global applicability and reliability of hydrological models.
提高基于过程和数据驱动的水文模型可推断性的方法
基于过程和数据驱动的水文模型的应用在现代水文研究中至关重要,尤其是在预测径流、蒸散(ET)和土壤水分等关键水循环变量方面。基于过程的模型模拟流域水文过程的物理机制,而数据驱动的模型则利用大型数据集和先进的机器学习算法。本文回顾并比较了评估和提高这两类模型外推能力的方法,讨论了它们的前景和局限性。深度学习、迁移学习和领域适应技术在数据稀缺和极端条件下改进模型预测的潜力也令人期待。跨学科合作和算法的不断进步对于加强水文模型的全球适用性和可靠性也很重要。
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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