Deep Learning and Network Analysis: Classifying and Visualizing Geologic Hazard Reports

IF 4.1 2区 地球科学 Q1 GEOSCIENCES, MULTIDISCIPLINARY
Wenjia Li, Liang Wu, Xinde Xu, Zhong Xie, Qinjun Qiu, Hao Liu, Zhen Huang, Jianguo Chen
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引用次数: 0

Abstract

If progress is to be made toward improving geohazard management and emergency decision-making, then lessons need to be learned from past geohazard information. A geologic hazard report provides a useful and reliable source of information about the occurrence of an event, along with detailed information about the condition or factors of the geohazard. Analyzing such reports, however, can be a challenging process because these texts are often presented in unstructured long text formats, and contain rich specialized and detailed information. Automatically text classification is commonly used to mine disaster text data in open domains (e.g., news and microblogs). But it has limitations to performing contextual long-distance dependencies and is insensitive to discourse order. These deficiencies are most obviously exposed in long text fields. Therefore, this paper uses the bidirectional encoder representations from Transformers (BERT), to model long text. Then, utilizing a softmax layer to automatically extract text features and classify geohazards without manual features. The latent Dirichlet allocation (LDA) model is used to examine the interdependencies that exist between causal variables to visualize geohazards. The proposed method is useful in enabling the machine-assisted interpretation of text-based geohazards. Moreover, it can help users visualize causes, processes, and other geohazards and assist decision-makers in emergency responses.

深度学习和网络分析:地质灾害报告的分类和可视化
要想在改进地质灾害管理和应急决策方面取得进展,就必须从过去的地质灾害信息中吸取经验教训。地质灾害报告提供了有关事件发生的有用而可靠的信息来源,以及有关地质灾害状况或因素的详细信息。然而,分析此类报告可能是一个具有挑战性的过程,因为这些文本通常以非结构化的长文本格式呈现,包含丰富的专业和详细信息。自动文本分类通常用于挖掘开放领域(如新闻和微博)中的灾害文本数据。但它在执行上下文远距离依赖关系方面有局限性,而且对话语顺序不敏感。这些缺陷在长文本字段中暴露得最为明显。因此,本文使用来自 Transformers(BERT)的双向编码器表示法对长文本进行建模。然后,利用 softmax 层自动提取文本特征,并在无需人工特征的情况下对地质灾害进行分类。使用潜在 Dirichlet 分配(LDA)模型来检查因果变量之间存在的相互依存关系,从而将地质灾害可视化。所提出的方法有助于对基于文本的地质灾害进行机器辅助解释。此外,它还能帮助用户直观地了解地质灾害的成因、过程和其他地质灾害,并协助决策者做出应急响应。
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
Journal of Earth Science
Journal of Earth Science 地学-地球科学综合
CiteScore
5.50
自引率
12.10%
发文量
128
审稿时长
4.5 months
期刊介绍: Journal of Earth Science (previously known as Journal of China University of Geosciences), issued bimonthly through China University of Geosciences, covers all branches of geology and related technology in the exploration and utilization of earth resources. Founded in 1990 as the Journal of China University of Geosciences, this publication is expanding its breadth of coverage to an international scope. Coverage includes such topics as geology, petrology, mineralogy, ore deposit geology, tectonics, paleontology, stratigraphy, sedimentology, geochemistry, geophysics and environmental sciences. Articles published in recent issues include Tectonics in the Northwestern West Philippine Basin; Creep Damage Characteristics of Soft Rock under Disturbance Loads; Simplicial Indicator Kriging; Tephra Discovered in High Resolution Peat Sediment and Its Indication to Climatic Event. The journal offers discussion of new theories, methods and discoveries; reports on recent achievements in the geosciences; and timely reviews of selected subjects.
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