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Utilizing Integrated Public Big Data in the Database System for Analyzing Vehicle Accidents

  • Journal of The Korea Society of Computer and Information
  • Abbr : JKSCI
  • 2017, 22(9), pp.99-105
  • DOI : 10.9708/jksci.2017.22.09.099
  • Publisher : The Korean Society Of Computer And Information
  • Research Area : Engineering > Computer Science
  • Received : February 2, 2017
  • Accepted : April 10, 2017
  • Published : September 29, 2017

Gun-Woo Lee 1 Tae-ho Kim 1 Songi Do 1 Hyun-jin Jun 1 Yoo-Jin Moon 1

1한국외국어대학교

Accredited

ABSTRACT

In this paper, we propose to design and implement the database management system for analyzing vehicle accidents through utilizing integration of the public big data. And the paper aims to provide valuable information for recognizing seriousness of the vehicle accidents and various circumstances at the accident time, and to utilize the produced information for the insurance company policies as well as government policies. For analysis of the vehicle accidents the system utilizes the integrated big data of National Indicator System, the Meteorological Office, National Statistical Office, Korea Insurance Development Institute, Road Traffic Authority, Ministry of Land, Infrastructure and Transport as well as the National Police Agency, which differentiates this system from the previous systems. The system consists of data at the accident time including weather conditions, vehicle models, age, sex, insurance amount etc., by which the database system users are able to obtain the integral information about vehicle accidents. The result shows that the vehicle accidents occur more frequently in the clear weather conditions, in the vehicle to vehicle conditions and in crosswalk & crossway. Also, it shows that the accidents in the cloudy weather leads more seriously to injury and death than in the clear weather. As well, the vehicle accident information produced by the system can be utilized to effectively prevent drivers from dangerous accidents.

Citation status

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