Guan'gai paishui xuebao (Jan 2025)
A review of the determinants and prediction methods for off-channel water demand
Abstract
Off-channel water demand and consumption are critical components of water resource management, influenced by various natural and anthropogenic factors. This study systematically analysed these influencing factors and the methods for predicting off-channel water demand, aiming to provide insights for effective water resource planning and management at the catchment level. The research employed Cite Space for bibliometric analysis to identify current research trends, key hotspots, and systematically categorised the factors that influence the off-channel water demand, as well as the methods used for its prediction. Key factors affecting off-channel water demand in most catchments include population, water pricing, precipitation, and air temperature. Machine learning algorithms have emerged as a prominent tool for predicting off-channel water demand, often used alongside regression analysis to assess the influence of multiple factors. The quota index method remains widely applied in practical water resource management. Additionally, hybrid approaches, combining time series analysis with other methods, address limitations in standalone models and enhance prediction accuracy. Advances in remote sensing, geospatial big data, artificial intelligence, and machine learning algorithms have significantly improved the accuracy of off-channel water demand predictions, particularly at smaller scales. Future research should focus on enhancing the validation of prediction models and ensuring the robust integration of historical data to improve modeling reliability for off-channel water demand and consumption.
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