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The construction of personalized virtual landslide disaster environments based on knowledge graphs and deep neural networks.

Authors :
Zhang, Yunhao
Zhu, Jun
Zhu, Qing
Xie, Yakun
Li, Weilian
Fu, Lin
Zhang, Junxiao
Tan, Jianmei
Source :
International Journal of Digital Earth. Dec2020, Vol. 13 Issue 12, p1637-1655. 19p.
Publication Year :
2020

Abstract

Virtual Landslide Disaster environments are important for multilevel simulation, analysis and decision-making about Landslide Disasters. However, in the existing related studies, complex disaster scene objects and relationships are not deeply analyzed, and the scene contents are fixed, which is not conducive to meeting multilevel visualization task requirements for diverse users. To resolve the above issues, a construction method for Personalized Virtual Landslide Disaster Environments Based on Knowledge Graphs and Deep Neural networks is proposed in this paper. The characteristics of relationships among users, scenes and data were first discussed in detail; then, a knowledge graph of virtual Landslide Disaster environments was established to clarify the complex relationships among disaster scene objects, and a Deep Neural network was introduced to mine the user history information and the relationships among object entities in the knowledge graph. Therefore, a personalized Landslide Disaster scene data recommendation mechanism was proposed. Finally, a prototype system was developed, and an experimental analysis was conducted. The experimental results show that the method can be used to recommend intelligently appropriate disaster information and scene data to diverse users. The recommendation accuracy stabilizes above 80% – a level able to effectively support The Construction of Personalized Virtual Landslide Disaster environments. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
17538947
Volume :
13
Issue :
12
Database :
Academic Search Index
Journal :
International Journal of Digital Earth
Publication Type :
Academic Journal
Accession number :
147402361
Full Text :
https://doi.org/10.1080/17538947.2020.1773950