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Spatiotemporal Change Analysis of Earthquake Emergency Information Based on Microblog Data: A Case Study of the “8.8” Jiuzhaigou Earthquake

机译:基于微博数据的地震应急信息的时空变化分析 - 以“8.8”九寨沟地震为例

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摘要

Information from social media microblogging has been applied to management of emergency situations following disasters. In particular, such blogs contain much information about the public perception of disasters. However, the effective collection and use of disaster information from microblogs still presents a significant challenge. In this paper, a spatial distribution detection method is established using emergency information based on the urgency degree grading of microblogs and spatial autocorrelation analysis. Moreover, a character-level convolutional neural network classifier is applied for microblog classification in order to mine the spatio-temporal change process of emergency rescue information. The results from the Jiuzhaigou (Sichuan, China) earthquake case study demonstrate that different emergency information types exhibit different time variation characteristics. Moreover, spatial autocorrelation analysis based on the degree of text urgency can exclude uneven spatial distribution influences of the number of microblog users, and accurately determine the level of urgency of the situation. In addition, the classification and spatio-temporal analysis methods combined in this study can effectively mine the required emergency information, allowing us to understand emergency information spatio-temporal changes. Our study can be used as a reference for microblog information applications within the field of emergency rescue activity.
机译:来自社交媒体微博的信息已应用于灾害后紧急情况的管理。特别是,这种博客包含有关公众对灾害感知的更多信息。然而,来自微博的有效收集和使用灾害信息仍然存在重大挑战。本文使用基于微博和空间自相关分析的紧急程度分级,建立了空间分布检测方法。此外,应用了字符级卷积神经网络分类器,用于微博分类,以挖掘紧急救援信息的时空变化过程。 Jiuzhaigou(四川)地震案例研究的结果表明,不同的应急信息类型表现出不同的时间变化特性。此外,基于文本紧迫程度的空间自相关分析可以排除微博用户数量的不均匀空间分布,并准确地确定情况紧急程度。此外,本研究中组合的分类和时空分析方法可以有效地挖掘所需的应急信息,使我们能够了解应急信息时空变化。我们的研究可以用作紧急救援活动领域的微博信息应用的参考。

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