应急救援地理空间情报:概念特征、生成技术及应用实践

王勇, 韩遥遥, 刘纪平, 曹元晖, 陈虹宇, 亢孟军, 朱军

王勇, 韩遥遥, 刘纪平, 曹元晖, 陈虹宇, 亢孟军, 朱军. 应急救援地理空间情报:概念特征、生成技术及应用实践[J]. 武汉大学学报 ( 信息科学版).
引用本文: 王勇, 韩遥遥, 刘纪平, 曹元晖, 陈虹宇, 亢孟军, 朱军. 应急救援地理空间情报:概念特征、生成技术及应用实践[J]. 武汉大学学报 ( 信息科学版).
WANG Yong, HAN Yaoyao, LIU Jiping, CAO Yuanhui, CHEN Hongyu, KANG Mengjun, ZHU Jun. Emergency Rescue Geospatial Intelligence: Conceptual Characteristics, Generation Technologies, and Application Practices[J]. Geomatics and Information Science of Wuhan University.
Citation: WANG Yong, HAN Yaoyao, LIU Jiping, CAO Yuanhui, CHEN Hongyu, KANG Mengjun, ZHU Jun. Emergency Rescue Geospatial Intelligence: Conceptual Characteristics, Generation Technologies, and Application Practices[J]. Geomatics and Information Science of Wuhan University.

应急救援地理空间情报:概念特征、生成技术及应用实践

基金项目: 

国家重点研发计划(2022YFC3005705)

详细信息
    作者简介:

    王勇,博士,研究员,研究方向为应急地理信息服务、地理空间大数据汇聚融合与分析挖掘。

    通讯作者:

    韩遥遥,硕士生。hanyaoyao322@163.com

Emergency Rescue Geospatial Intelligence: Conceptual Characteristics, Generation Technologies, and Application Practices

  • 摘要: 自然灾害和事故灾难频繁发生,对应急救援行动的效率和效果提出了更高要求。应急救援情报作为支撑救援行动的先导,其空间化、精准化、即时化的需求愈发迫切。针对目前应急救援情报分类体系欠缺、地理位置信息匮乏、数据来源单一以及融合利用不足等关键问题,提出应急救援地理空间情报(emergency rescue geospatial intelligence,ER-GeoINT)的概念内涵、分类体系和质量评价指标。在此基础上,构建了以全源感知汇集、智能提取分析、多源融合验证为核心的ER-GeoINT智能生成技术框架,并系统分析了相关技术与方法的研究进展。面向典型自然灾害应急救援需求,开发了地理空间情报搜集分析与服务系统,显著提高了应急救援的响应速度和决策准确性。
    Abstract: Objectives: Frequent, large-scale natural disasters inflict substantial harm on modern society, posing serious challenges to emergency decision-making, response, and assessment. During the emergency response processes, geospatial disaster data rapidly expands across physical, social, and information spaces. Despite extensive research on disaster geospatial big data, studies have yet to integrate into a unified intelligence system. As a result, fragmented disaster geospatial data fails to reflect its inherent information value. Converting complex disaster geospatial big data into emergency rescue geospatial intelligence (ER-GeoINT) is an emerging trend in modern emergency rescue. Methods: Firstly, in response to the current challenges such as the difficulty in emergency rescue data integration, the ambiguous application system of emergency intelligence, and the low efficiency of emergency rescue decision-making, we build on existing geospatial data integration processing and analysis methods. By examining the structure and characteristics of current disaster spatiotemporal big data, we propose the concept, features, architecture, sources, and quality metrics for ER-GeoINT. This clarifies the information sources and classification system of ER-GeoINT. Secondly, to address technical challenges in mining and analyzing disaster geospatial big data, we develop a system framework for ER-GeoINT generation technology that supports multiple disaster scenarios. This framework elaborately presents the current research on data perception aggregation, intelligent extraction and analysis of intelligence information, and the integrated intelligence generation technology of spatial intelligence. Results: Focusing on emergency rescue scenarios for typical natural disasters such as forest and grassland fires, earthquakes, and geological hazards, a multi-hazard supported Intelligence Collection and Analysis Service System (ICASS) has been developed. This system integrates geospatial intelligence mining technologies and methods for disaster online monitoring and early warning, multimodal emergency intelligence information extraction, rapid disaster loss assessment, and on-site situation simulation and deduction. Through these integrations, an all-source intelligence database, intelligence collection and analysis service system, and an application demonstration pattern for emergency rescue intelligence demand services have been established. Conclusions: The sources and types of global disaster emergency data are increasingly expanding, while the demands for emergency rescue intelligence are shifting towards more intelligent, spatial, granular, and personalized approaches. Current challenges and opportunities for ER-GeoINT include developing a credible and precise intelligence quality evaluation system, strengthening the "human-in-the-loop" intelligent rescue intelligence generation technology system, enhancing the fine-grained element spatial perception, grid-based intelligence collaborative management, deepening the exploration of value-added spatial intelligence through three-dimensional emergency mapping services and improving the integration with disaster emergency response plans.
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出版历程
  • 收稿日期:  2024-12-24

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