Big Data Analytics and Data Science
Vol. 1 No. 2 (2026): June: Big Data Analytics and Data Science

Artificial Intelligence-Based Early Warning System for Disaster Management: A Literature Review Systematic and Bibliometric Analysis

Ridwan Zulkifli (Universitas Komputer Indonesia)
Zainal Arifin Hasibuan (Universitas Komputer Indonesia)
Irawan Afrianto (Universitas Komputer Indonesia)
Bella Hardiyana (Universitas Komputer Indonesia)
Sri Supatmi (Universitas Komputer Indonesia)



Article Info

Publish Date
10 Jun 2026

Abstract

The increasing frequency and intensity of natural disasters globally demands the development of more accurate and responsive Early Warning Systems (EWS). In recent years, Artificial Intelligence (AI) has been increasingly applied in natural disaster mitigation, but the approaches used are still diverse and spread across various domains. This study aims to present a systematic literature review on the application of AI and deep learning in natural disaster early warning systems. This review was conducted following the PRISMA 2020 guidelines by analyzing literature published during the 2020–2025 period. The selection process resulted in 102 studies meeting the inclusion criteria, with 30 full-text articles being analyzed in depth to map disaster types, AI methods, data sources, and characteristics of early warning systems developed in various regions, including Asia and Africa. The review results show the dominance of deep learning approaches, particularly time series-based models such as Long Short-Term Memory (LSTM) and Gated Recurrent Unit (GRU), particularly in flood forecasting and land deformation prediction. More advanced architectures, such as Transformer, are beginning to be adopted to capture long-term temporal patterns, while the combination of convolutional neural networks (CNN) with remote sensing data is widely used for spatial mapping of disaster events. Furthermore, the integration of sensor data and the Internet of Things (IoT) shows potential in supporting more responsive early warning systems. However, most research remains limited to the modeling or simulation stage, with little discussion of the real-time and operational implementation of EWS. This review highlights the gap between AI model development and the implementation of reliable early warning systems and provides a conceptual foundation for the future development of more integrated AI-based disaster mitigation systems.

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Journal Info

Abbrev

BDAS

Publisher

Subject

Description

Aims This journal aims to publish cutting-edge research in big data analytics and data science, emphasizing data-driven methods and intelligent analytics for decision support and innovation. Scope Big data architectures and platforms Data mining and predictive analytics Machine learning for data ...