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Enhancing Emergency Rescue Capability in Scenic Areas Using Big Data Technology: A Case Study of Mount Tai Scenic Area

DOI: 10.4236/oalib.1111775, PP. 1-7

Subject Areas: Big Data Search and Mining

Keywords: Big Data Technology, Scenic Area, Emergency Rescue, Mount Tai Scenic Area

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Abstract

This study takes Mount Tai Scenic Area as a case study to explore how big data technology can enhance the emergency rescue capability of scenic areas. This paper analyzes the methods and means of using big data technology to improve the emergency rescue capability of scenic spots and the shortcomings in the development and design of emergency rescue system. The research findings indicate that big data technology holds significant potential for application in emergency rescue operations in scenic areas, effectively improving the efficiency and accuracy of the scenic area’s response to emergencies.

Cite this paper

Li, T. , Li, B. , Zhang, Y. , Tan, X. and Li, Z. (2024). Enhancing Emergency Rescue Capability in Scenic Areas Using Big Data Technology: A Case Study of Mount Tai Scenic Area. Open Access Library Journal, 11, e1775. doi: http://dx.doi.org/10.4236/oalib.1111775.

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