Leveraging artificial intelligence in disaster management: A comprehensive bibliometric review.

IF 1.3 Q2 SOCIAL SCIENCES, INTERDISCIPLINARY
Jamba-Journal of Disaster Risk Studies Pub Date : 2025-04-07 eCollection Date: 2025-01-01 DOI:10.4102/jamba.v17i1.1776
Arief Wibowo, Ikhwan Amri, Asep Surahmat, Rusdah Rusdah
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引用次数: 0

Abstract

The advancement of artificial intelligence (AI) technology presents promising opportunities to improve disaster management's effectiveness and efficiency, particularly with the rising risk of natural hazards globally. This study used the Scopus database to offer a bibliometric review of AI applications in disaster management. Publications were chosen based on research scope (natural hazards), source type (journals and conference proceedings), document type (articles, conference papers and reviews) and language (English). VOSviewer and Biblioshiny were utilised to analyse trends and scientific mapping from 848 publications. The finding shows a rapid increase in AI studies for disaster management, with an annual growth rate of 15.61%. The leading source was the International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences - ISPRS Archives. Amir Mosavi was the most prolific author, with 10 documents. The analysis reveals that China was the most productive country, while the United States was the most cited. Six research clusters were identified through keyword network mapping: (1) disaster monitoring and prediction using IoT networks, (2) AI-based geospatial technology for risk management, (3) decision support systems for disaster emergency management, (4) social media analysis for emergency response, (5) machine learning algorithms for disaster risk reduction, and (6) big data and deep learning for disaster management.

Contribution: This research contributes by mapping the application of AI technology in disaster management based on peer-reviewed literature. This helps identify major developments, research hotspots, and gaps.

利用人工智能在灾害管理:一个全面的文献计量回顾。
人工智能(AI)技术的进步为提高灾害管理的有效性和效率提供了有希望的机会,特别是在全球自然灾害风险不断上升的情况下。本研究使用Scopus数据库对人工智能在灾害管理中的应用进行了文献计量分析。出版物的选择基于研究范围(自然灾害)、来源类型(期刊和会议记录)、文件类型(文章、会议论文和评论)和语言(英语)。利用VOSviewer和Biblioshiny分析848份出版物的趋势和科学地图。这一发现表明,用于灾害管理的人工智能研究迅速增加,年增长率为15.61%。主要来源是国际摄影测量、遥感和空间信息科学档案- ISPRS档案。阿米尔·莫萨维是最多产的作者,有10份文件。分析显示,中国是生产率最高的国家,而美国是被引用最多的国家。通过关键词网络映射,确定了6个研究集群:(1)基于物联网网络的灾害监测与预测,(2)基于人工智能的风险管理地理空间技术,(3)灾害应急管理决策支持系统,(4)应急响应的社交媒体分析,(5)减少灾害风险的机器学习算法,(6)灾害管理的大数据和深度学习。贡献:本研究基于同行评议的文献,绘制了人工智能技术在灾害管理中的应用。这有助于确定主要的发展、研究热点和差距。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Jamba-Journal of Disaster Risk Studies
Jamba-Journal of Disaster Risk Studies SOCIAL SCIENCES, INTERDISCIPLINARY-
CiteScore
2.60
自引率
7.10%
发文量
37
审稿时长
37 weeks
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