Published January 1, 2024
| Version v1
Journal article
Open
Machine Learning For Water Resource Management
Authors/Creators
Description
Water resource management has become increasingly challenging due to rapid population growth, climate variability, urbanization, and rising agricultural demand. Traditional hydrological models often struggle to capture the complex and nonlinear interactions between environmental variables affecting water systems. Machine Learning (ML) offers powerful data-driven techniques that can analyze large and heterogeneous datasets to support efficient water management. This paper explores the role of machine learning in water resource management, highlighting its applications in hydrological forecasting, irrigation optimization, groundwater monitoring, and water quality assessment. Various ML algorithms such as Artificial Neural Networks, Random Forest, Support Vector Machines, and Deep Learning architectures are examined for their ability to model complex hydrological processes. The study also discusses current challenges including data availability, model interpretability, and integration with existing hydrological frameworks. The findings indicate that ML-based approaches can significantly enhance predictive accuracy, optimize resource utilization, and support sustainable water management strategies.
Files
IJSRET_V10_issue5_511.pdf
Files
(568.4 kB)
| Name | Size | Download all |
|---|---|---|
|
md5:095fcc87a2ad4966828dde951ef6db29
|
568.4 kB | Preview Download |
Additional details
Related works
- Has part
- Journal article: https://ijsret.com/wp-content/uploads/IJSRET_V10_issue5_511.pdf (URL)
- Is identical to
- Journal article: https://ijsret.com/2026/03/14/machine-learning-for-water-resource-management/ (URL)