论文标题
对水文和水资源深度学习应用的全面审查
A Comprehensive Review of Deep Learning Applications in Hydrology and Water Resources
论文作者
论文摘要
预计到2025年,全球数字数据的数量预计将达到175个Zettabytes。由于大规模传感器网络,与水有关的数据的数量,品种和速度正在增加,并增加了人们对灾难响应,水资源管理和气候变化等主题的关注。结合计算资源的不断增长和深度学习的普及,这些数据被转变为可行的实用知识,彻底改变了水行业。在本文中,对文献进行了系统的综述,以确定有关水资源的监测,管理,治理和交流,该研究结合了水部门中的深度学习方法。该研究对水行业中最新的深度学习方法进行了全面的综述,用于生成,预测,增强和分类任务,并为如何利用可用的深度学习方法来解决未来水资源挑战的指南。讨论了这些技术在水域中应用的关键问题和挑战,包括这些技术在水资源管理和治理中决策的伦理。最后,我们为在水文和水资源中应用深度学习模型提供了建议和未来的方向。
The global volume of digital data is expected to reach 175 zettabytes by 2025. The volume, variety, and velocity of water-related data are increasing due to large-scale sensor networks and increased attention to topics such as disaster response, water resources management, and climate change. Combined with the growing availability of computational resources and popularity of deep learning, these data are transformed into actionable and practical knowledge, revolutionizing the water industry. In this article, a systematic review of literature is conducted to identify existing research which incorporates deep learning methods in the water sector, with regard to monitoring, management, governance and communication of water resources. The study provides a comprehensive review of state-of-the-art deep learning approaches used in the water industry for generation, prediction, enhancement, and classification tasks, and serves as a guide for how to utilize available deep learning methods for future water resources challenges. Key issues and challenges in the application of these techniques in the water domain are discussed, including the ethics of these technologies for decision-making in water resources management and governance. Finally, we provide recommendations and future directions for the application of deep learning models in hydrology and water resources.