Published
An Explainable Ensemble Machine Learning Model for Short-Term Flood Occurrence Prediction Using Hydro-Climatic Time-Series Data
Published in July-Dec 2025 (Vol. 1, Issue 1, 2025)

Keywords
Flood PredictionShort-Term ForecastingEarly Warning SystemsEnsemble Machine LearningRandom ForestGradient BoostingHydrological ModelingClimate IndicatorsEnvironmental DataFlood Risk AssessmentProbabilistic PredictionBinary ClassificationFeature NormalizationData PreprocessingNon-linear ModelingHybrid Ensemble ModelReal-time PredictionMATLAB SimulinkDisaster ManagementFlood Alert Systems
Abstract
Floods are really harmful surprise elements of nature, and as such, making short-term flood prediction very accurate is a major requirement of early-warning systems done in such a way as to prevent human and property losses, economic disruption, etc. Still, they are hard to guess due to the very intricate combination of hydrological, climatic, and other environmental factors. The present paper offers an interpretable ensemble machine learning framework for predicting the times of flood events around 1-3 days ahead via the use of hydrology, climate, and environmental indicators together. The method offers great help through data preprocessing, feature normalisation, and the application of various regression models to cost-continuous flood probabilities estimation. Random Forest and Gradient Boosting algorithms are used to find and improve prediction accuracy through capturing non-linear relationships, while a hybrid ensemble method combines the advantages of individual models. Decision-making is made simplistic by the conversion of probabilistic outputs into binary flood alerts at a predetermined fixed threshold. The framework is executed and tested in a MATLAB-Simulink setting, and the analysis confirms its readiness for real-time operations. The results from the experiments indicate that the learning through the ensemble approach has significantly improved the prediction reliability and interpretability as compared to single model techniques.
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Format: PDF
Article Information
Published in:
July-Dec 2025 (Vol. 1, Issue 1, 2025)IRJSRR110013
IRJSRR-01-000013
155-177
2026-03-03
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Downloads:788
How to Cite
Gautam & Mahura & Hajela, S. & Gautam & Mahura & Hajela, S. (2026). An Explainable Ensemble Machine Learning Model for Short-Term Flood Occurrence Prediction Using Hydro-Climatic Time-Series Data. International Research Journal of Scientific Reports and Reviews, 1(1), 155-177. https://irjsrr.com/articles/IRJSRR110013
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