利用机器学习和深度学习进行水资源预测:科学计量分析

Chanjuan Liu , Jing Xu , Xi’an Li , Zhongyao Yu , Jinran Wu
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引用次数: 0

摘要

水资源预测在现代水资源管理中发挥着至关重要的作用,包括水文模式和需求预测。为了深入了解其当前的重点、现状和新兴主题,本研究分析了从科学网数据库中检索到的 2015 年至 2022 年间发表的 876 篇文章。利用 CiteSpace 可视化软件、文献计量学技术和文献综述方法,该研究利用机器学习和深度学习方法确定了与水预测相关的重要文献。通过综合分析,研究确定了该领域的重要国家、机构、作者、期刊和关键词。通过探索这些数据,研究绘制出了当前趋势和前沿领域,为通过机器学习和深度学习进行水资源预测的研究人员和从业人员提供了宝贵的见解。本研究旨在通过突出关键研究领域和新兴关注领域来指导未来的研究。
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Water resource forecasting with machine learning and deep learning: A scientometric analysis

Water prediction plays a crucial role in modern-day water resource management, encompassing both hydrological patterns and demand forecasts. To gain insights into its current focus, status, and emerging themes, this study analyzed 876 articles published between 2015 and 2022, retrieved from the Web of Science database. Leveraging CiteSpace visualization software, bibliometric techniques, and literature review methodologies, the investigation identified essential literature related to water prediction using machine learning and deep learning approaches. Through a comprehensive analysis, the study identified significant countries, institutions, authors, journals, and keywords in this field. By exploring this data, the research mapped out prevailing trends and cutting-edge areas, providing valuable insights for researchers and practitioners involved in water prediction through machine learning and deep learning. The study aims to guide future inquiries by highlighting key research domains and emerging areas of interest.

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