Comparative assessment of rainfall-based water level prediction using machine learning (ML) techniques
Machine learning (ML) techniques are rapidly emerging as effective tools in predicting complex hydrological processes. The present study aims to comparatively assess the efficacy of four machine learning algorithms ? Multi-Layer Perceptron (MLP), Extreme Gradient Boosting (XGBoost), Support Vector R...
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Main Authors: | Pathan A.I., Sidek L.B.M., Basri H.B., Hassan M.Y., Khebir M.I.A.B., Omar S.M.B.A., Khambali M.H.B.M., Torres A.M., Najah Ahmed A. |
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Other Authors: | 57209510674 |
Format: | Article |
Published: |
Ain Shams University
2025
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