人民长江 ›› 2021, Vol. 52 ›› Issue (10): 76-83.doi: 10.16232/j.cnki.1001-4179.2021.10.012

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水文水资源领域深度学习研究进展综述

刘攀,郑雅莲,谢康,韩东阳,程潜   

  • 发布日期:2021-11-22

Review of research progress in deep learning for hydrology and water resources

LIU Pan, ZHENG Yalian, XIE Kang, HAN Dongyang, CHENG Qian   

  • Published:2021-11-22

摘要: 现代水文监测技术的迅猛发展产生了海量的水雨情数据,为深度学习理论助力水文水资源领域的研究和生产实践带来了机遇与挑战。从水文模拟、水资源管理、水环境评价3个方面开展文献调研,综述了水文水资源领域的深度学习研究进展。归纳了深度学习方法的优势及应用难点:无需构建物理模型并可深度挖掘数据特征,在物理机制不明晰的问题中具有显著优势;但在应用时存在模型训练数据缺乏、超参数确定具有主观性、可解释性不足、与物理规律不符及泛化能力不足等难点问题。展望了可通过有机结合深度学习与水文物理机制模型,以融合经典水文规律,并开展迁移学习、强化学习以及对抗学习等应用研究,以更好地在水文资源领域探索运用深度学习方法。

关键词: 水文水资源; 深度学习; 数据挖掘; 数据驱动模型; 物理机制模型;

Abstract: With the rapid development of modern hydrological monitoring technology, massive hydrological data are obtained, which brings opportunities and challenges for deep learning in hydrology and water resources.This paper summarizes the research progress of deep learning in hydrology and water resources from three aspects: hydrological simulation, water resources management and water environment evaluation.The advantages of deep learning methods and their application difficulties are: deep learning method does not need to construct a physical model and can automatically recognize data characteristics, and has significant advantages in the problems without a clear physical mechanism; however, it faces defects such as lacking model training data, subjectivity in super-parameter determination, insufficient interpretability, inconsistency with physics laws and lacking generalization ability.At last, we propose prospects of deep learning in hydrology and water resources filed: combining deep learning and hydro-physical mechanism model to integrate classical hydrological laws and doing application researches such as transfer learning, reinforcement learning and adversarial learning to better utilize the deep learning method.

Key words: hydrology and water resources; deep learning; data mining; data driving model; physical mechanism model;