A Multi-Source Data-Driven Natural Disaster Emergency Management System: Risk Early Warning Framework, Social Media Opinion Mining, and Monitoring System Development

Authors

DOI:

https://doi.org/10.31181/jidmgc21202644

Keywords:

Natural disasters, Emergency management, Risk warnings

Abstract

In response to the systemic lag and reactive difficulties present in traditional natural disaster management models regarding the timeliness of risk perception, the accuracy of decision-making, and the coordination of emergency responses, this paper constructs a natural disaster risk early warning system framework that spans the entire cycle of pre-disaster prevention, mid-disaster emergency response, and post-disaster recovery, forming a closed-loop governance chain of “monitoring–assessment–release–response–feedback–optimization.” On this basis, taking the “8·21” wildfire in Beibei, Chongqing, China, in 2022 as a typical case, a social media public opinion visualization analysis was conducted based on 5,507 text posts from the Weibo platform. Through word frequency statistics, temporal comment volume analysis, and word cloud visualization, the study reveals the spatially structured characteristics of public attention and the temporal evolution pattern of sentiment tendencies.  Finally, from four dimensions—improving classified monitoring and graded early warning systems, establishing information sharing and hierarchical reporting systems, perfecting early warning release and graded response mechanisms, and advancing the informatization of monitoring, forecasting, and early warning efforts—the paper proposes a development path for a comprehensive natural disaster monitoring and early warning system, aiming to provide theoretical references and practical guidance for advancing the modernization of natural disaster prevention and emergency management capabilities.

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References

Xiong, L., & Guo, J. (2025). Research Hotspots and Prospects of Emergency Management for Sudden Natural Disasters Driven by New Generation Information Technology. Journal of Catastrophology, 40(3), 124-131.

Wang, S., & Pan, D. (2023). Research on emergency management capability evaluation method of natural disasters based on set pair analysis. Journal of Natural Disasters, 32(4), 104-116. https://doi.org/10.13577/j.jnd.2023.0410

Cheng, G., Nie, Y., Zhang, L., Wu, J., Cao, D., Wang, Z., Wu, Y., & Zhang, H. (2025). Research and Application of Spatiotemporal Evolution Mechanism of Slope Based on Fiber Optic Neural Sensing. Water, 17(18), 2710. https://doi.org/10.3390/w17182710

Jia, H., Chen, F., Li, R., Chen, Y., & Wang, L. (2026). Drought-induced disaster Chains: A global perspective of propagation probabilities and mitigation priorities. Journal of Cleaner Production, 563, 148519. https://doi.org/10.1016/J.JCLEPRO.2026.148519

Yang, K., Huang, G., Zhang, L., Song, Z., Li, H., & Gao, X. (2023). Analysis of influencing factors of subway system vulnerability under rainstorm conditions based on DEMATEL-AHDT. Water Resources and Hydropower Engineering, 54(6), 22-33. https://doi.org/10.13928/j.cnki.wrahe.2023.06.003

Bi, K., Xie, L., Zhang, H., Chen, X., Gu, X., & Tian, Q. (2023). Accurate medium-range global weather forecasting with 3D neural networks. Nature, 619(7970), 533-538. https://doi.org/10.1038/S41586-023-06185-3

Ming, X., Liang, Q., Xia, X., Li, D., & Fowler, H. J. (2020). Real-time flood forecasting based on a high-performance 2-D hydrodynamic model and numerical weather predictions. Water Resources Research, 56, e2019WR025583. https://doi.org/10.1029/2019WR025583

Wang, M. (2019). Focusing on the central task and serving the overall situation, making every effort to provide services and support for geological disaster monitoring and early warning — Speech at the Exchange and Promotion Meeting on New Technologies and Methods for Geological Disaster Monitoring. The Chinese Journal of Geological Hazard and Control, 30(6), 5-8.

Wang, C., Qu, S., Yang, R., Ge, B., & Yang, H. (2026). Multidimensional information-based monitoring and early warning technology for tailings ponds. Journal of Mine Automation, 52(4), 11-19. https://doi.org/10.13272/j.issn.1671-251x.2025120078

Tain, J., Zhang, Y., Yan, D., Xu, S., Duan, J., & Li, J. (2026). Exploring the application of large AI models in flash flood risk identification and early warning. Journal of Hydraulic Engineering, 57(5), 675-690.

Lian, H., Yan, T., Yin, S., Xu, B., Kang, J., Zhou, W., & Yan, G. (2025). Research on early warning of roof water inrush in working faces based on a transparent hydrogeological model. Coal Science and Technology, 53(1), 259-271.

Chen, T., Ruan, Y., Sun, X., & Yang, G. (2019). Research on key technologies of integration of urban operation and emergency management. Journal of Safety Science and Technology, 15(4), 5-11.

Jiang, J., Luo, M., Li, X., & Zhang, J. (2026). Network attack pattern recognition and early warning based on multimodal data and artificial intelligence. Discover Computing, 29(1), 121. https://doi.org/10.1007/S10791-026-10006-2

Chen, M., & Cao, X. (2025). Construction of Remote Sensing Early Warning Knowledge Graph Based on Multi-Source Disaster Data. Remote Sensing, 17(21), 3594. https://doi.org/10.3390/RS17213594

Hu, P., & Gao, X. (2026). Rethinking Risk, Emergency, and Crisis Governance through the Lens of the Transition State. Chinese Public Administration, 42(2), 122-130. https://doi.org/10.19735/j.issn.1006-0863.2026.02.12

Xue, L., & Shen, H. (2021). Five Transformations: Renewal of Thoughts in the Construction of Emergency Management System in New Era. Administration Reform, (7), 51-58. https://doi.org/10.14150/j.cnki.1674-7453.2021.07.002

Cheng, G., Wu, Y., Wang, Y., Shi, B., & You, Q. (2025). Research on Retrieval Technology for Geological Disaster Data. Geological Journal of China Universities, 31(6), 756-768. https://doi.org/10.16108/j.issn1006-7493.2025003

Liu, Y., Hu, Z., Han, X., & Wang, J. (2024). Deep Learning Based Fusion and Recommendation of Heterogeneous Multi-Source Intelligence for Emergency Events. Information Science, 42(4), 136-144. https://doi.org/10.13833/j.issn.1007-7634.2024.04.016

Xiong, X., & Huang, Y. (2025). The Framework and Practical Path of Blockchain Empowering the Monitoring and Early Warning Mechanism for Sudden Accidents and Disasters. Journal of Hunan University of Science and Technology (Social Science Edition), 28(2), 177-185. https://doi.org/10.13582/j.cnki.1672-7835.2025.02.021

Zhou, L., & Long, Z. (2017). The Innovation of Early Warning of Disaster in the Age of Big Data: Take the Center of Information Issuing of Early Warning of Disaster of Yangjiang City for Example. Journal of Wuhan University (Philosophy and Social Sciences), 70(3), 121-132. https://doi.org/10.14086/j.cnki.wujss.2017.03.011

Published

2026-07-14

How to Cite

Nie, Y., Cheng, G., Yaxi Wu, Wang, Z., Yang, D., Yang, L., & Long, Z. (2026). A Multi-Source Data-Driven Natural Disaster Emergency Management System: Risk Early Warning Framework, Social Media Opinion Mining, and Monitoring System Development. Journal of Intelligent Decision Making and Granular Computing, 2(1), 187-200. https://doi.org/10.31181/jidmgc21202644