系列(地层学)
时间序列
计算机科学
环境科学
气象学
机器学习
计量经济学
地质学
数学
地理
古生物学
作者
Van Kwan Zhi Koh,Ye Li,Xing Yong Kek,Ehsan Shafiee,Zhiping Lin,Bihan Wen
标识
DOI:10.1016/j.jhydrol.2025.132909
摘要
Time series forecasting tools, particularly machine learning models, are essential for diverse water applications, including infrastructure management, flood warning systems, and water treatment plant optimization. While standalone models have proven effective, hybridizing multiple models can enhance performance and better meet end-user requirements. Given the commonalities in time series forecasting methodologies across industries and water applications, a comprehensive review of recent novel models can facilitate the cross-pollination of methods. To this end, we review recent works on forecasting water demand, water quality, and hydrological variables. It examines key considerations at different hybridization stages and synthesizes methodological architectures, significant findings, and modeling philosophies. Additionally, the growing availability of data has catalyzed the development of specialized time series forecasting models. This paper analyzes data properties across water-related variables and evaluates recent novel models to assess their potential. By highlighting similarities among various forecasting methodologies, this review provides insights to guide future approaches through leveraging collective knowledge.
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