Author
Listed:
- Yassine Siari
(Department of Computer Science, University of Mila, Mila 43000, Algeria)
- Arwa Siari
(Department of Computer Science, Abdelhamid Mehri University, Constantine 25000, Algeria)
- Yehya Bouzeraa
(Department of Computer Science, University of Mila, Mila 43000, Algeria
LIRE Laboratory, Abdelhamid Mehri University, Constantine 25000, Algeria)
- Nardjes Bouchemal
(Department of Computer Science, University of Mila, Mila 43000, Algeria
LISI Laboratory of Intelligent Systems and Informatics, University of Mila, Mila 43000, Algeria)
- Galina Ivanova
(Faculty of Electrical Engineering Electronics and Automation, University of Ruse “Angel Kanchev”, 7017 Ruse, Bulgaria)
Abstract
Humanitarian crises such as natural disasters and armed conflicts are increasing in frequency and intensity, posing major challenges to the sustainable protection of vulnerable populations. Rapid and equitable identification of individuals at highest risk is essential for efficient allocation of limited emergency resources and for strengthening community resilience. This study proposes an intelligent, privacy-aware decision-support platform for citizen-level vulnerability assessment that supports social sustainability and resilient crisis management. The platform integrates heterogeneous data from healthcare institutions, municipal civil records, and emergency rescue services to construct multidimensional vulnerability profiles based on social conditions, medical status, and geographical accessibility. The dataset was collected in Algeria in collaboration with the Algerian Civil Protection and consolidated into a fully anonymised dataset of approximately 5000 individual records reflecting realistic crisis scenarios. Five supervised machine learning models (Decision Tree, Random Forest, Support Vector Machine (RBF), XGBoost, and Logistic Regression) were evaluated under class-imbalance conditions using SMOTE and class weighting. The Random Forest model achieved the best performance, with an F1-Macro score of 0.710 and a recall of 0.569 for the high-risk class (95% confidence interval: [0.431, 0.706]). These results demonstrate that the proposed platform enables transparent, data-driven prioritisation of emergency interventions, contributing to sustainable humanitarian response, improved public resource allocation, and enhanced resilience of vulnerable communities.
Suggested Citation
Yassine Siari & Arwa Siari & Yehya Bouzeraa & Nardjes Bouchemal & Galina Ivanova, 2026.
"A Sustainable AI-Driven Platform for Proactive Identification and Management of Vulnerable Populations in Crisis Situations,"
Sustainability, MDPI, vol. 18(4), pages 1-23, February.
Handle:
RePEc:gam:jsusta:v:18:y:2026:i:4:p:1913-:d:1863467
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