Flood prediction using ensemble machine learning models
Abstract
Frequent and devastating floods in India pose a significant threat to people and
property. Accurate and real-time forecasting of floods is essential to mitigate their
impact. This thesis focuses on evaluating di↵erent machine learning models for flood
prediction in India. The models assessed include K-Nearest Neighbor (KNN), Support
Vector Classifier (SVC), Decision Tree Classifier, Binary Logistic Regression,
and Stacked Generalization (Stacking). The researchers trained and tested these
models using a rainfall dataset. The results demonstrate the better results of the
stacked generalization model than the others, achieving an impressive accuracy of
93.3 per cent with a standard deviation(sd) of 0.098. These findings highlight the
potential of machine learning models to provide precise and timely flood predictions,
empowering the local authorities, specially disaster management ones, to take
necessary actions to avoid destruction and preferably save people.