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Academic Journal of Computing & Information Science, 2024, 7(6); doi: 10.25236/AJCIS.2024.070601.

Research on the Architecture of Slope Monitoring Platform Based on Edge Computing

Author(s)

Yongli Hu

Corresponding Author:
Yongli Hu
Affiliation(s)

Hunan University of Science and Technology, Xiangtan, China

Abstract

Slope landslide caused by various geological and natural environment factors is a major geological disaster. Automatic monitoring of slope is one of the important measures to prevent landslide. At present, the country has established the norms for the prevention and control of geological disasters, and the natural resources, transportation and other departments for slope monitoring are studying to establish the professional norms for slope prevention and control on the basis of the national norms for the prevention and control of geological disasters, but no consistent norms have been formed. At the same time, there is no unified monitoring platform for all departments, industries and even monitoring units, and the monitoring information is isolated from different monitoring ranges, which is not conducive to the prevention and control of geological disasters. It is of great social and economic significance to establish a global multi-factor slope automatic monitoring platform for the prevention and control of landslide geological disasters. Therefore, based on the edge computing technology, this paper studies the multi-factor automatic monitoring of slope, as follows: 1. Analyze the demand of multi-factor automatic monitoring of slope. 2. The architecture of multi-factor automatic monitoring platform for slope based on edge computing is constructed.

Keywords

edge computing; Slope monitoring; Automatic monitoring; Monitoring platform

Cite This Paper

Yongli Hu. Research on the Architecture of Slope Monitoring Platform Based on Edge Computing. Academic Journal of Computing & Information Science (2024), Vol. 7, Issue 6: 1-6. https://doi.org/10.25236/AJCIS.2024.070601.

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