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Research on the Application of Mobile Phone Location Signal Data in Earthquake Emergency Work: A Case Study of Jiuzhaigou Earthquake

Overview
Journal PLoS One
Date 2019 Apr 13
PMID 30978244
Citations 1
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Abstract

After an earthquake, the important task of emergency rescue work is to minimize casualties, but due to the suddenness of earthquake disasters, it is difficult to obtain enough disaster information immediately, especially personnel distribution and movement information. The traditional methods of obtaining disaster data are through reports from the disaster area or field investigations by the emergency rescue team; this work lags, and its efficiency is low. This paper analyzes the feasibility of using mobile phone location signal data in earthquake emergency rescue work in several respects, such as quantity, location, change rate, and epicentral distance. The results show that mobile phone location signal data can quickly obtain the situation of personnel distribution and quantity after an earthquake, and we find the change rate, distance, etc., can determine the approximate range of the earthquake impact field. Through the data distribution in different time periods, the movement of personnel after the earthquake can be obtained. Based on several situations, we can determine the basic situation of the disaster-stricken areas in times after the earthquake, especially the personnel relevant to the situation, and these data can provide a scientific basis for emergency rescue decision making.

Citing Articles

Microblog Topic-Words Detection Model for Earthquake Emergency Responses Based on Information Classification Hierarchy.

Su X, Ma S, Qiu X, Shi J, Zhang X, Chen F Int J Environ Res Public Health. 2021; 18(15).

PMID: 34360290 PMC: 8345666. DOI: 10.3390/ijerph18158000.

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