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Analysis of Transit Passenger Movements within Seoul-Gyeonggi-Incheon Area using Transportation Card

대중교통카드자료를 활용한 수도권 통행인구 이동진단

  • 이미영 (국토연구원 국토계획.지역연구본부) ;
  • 김종형 (인천발전연구원 교통물류연구실)
  • Received : 2016.06.03
  • Accepted : 2016.09.30
  • Published : 2016.10.31

Abstract

An average of 20 million individual transit unit activities per day on the Seoul-Gyeonggi-Incheon public transportation network are provided as transportation card analysis data by the metropolitan district (99.02% by 2014 standard, Humanlive, 2015.4). The metropolitan transportation card data can be employed in a comprehensive analysis of public transportation users' current transit patterns and by means of this, an effective use plan can be explored. In enhancing the existing information on the bus and rail integrated network of the metropolis with public transportation card data, the constraints in the existing methodology of metropolitan transit analysis, which functions on a zone unit origin and destination basis, can be overcome. Framework for metropolitan public transportation card data based integrated public transportation analysis, which consists of bus and rail integrated transport modes, is constructed, and through this, a single passenger's transit behavior transit volume can be approximated. This research proposes that in the use of metropolitan public transportation card data, integrated public transportation usage, as a part of individual passenger spatial movements, can be analyzed. Furthermore, metropolitan public transportation card usage data can provide insights into understanding not only movements of populations taking on transit activities, but also, characteristics of metropolitan local space.

수도권은 1일 평균 2천만여건의 통행이 서울-경기-인천의 통합대중교통망에서 이동하는 상황을 개별통행단위의 교통카드분석자료로 제공되고 있다. 휴먼라이브(2015.4)는 2014년 현재 교통카드 이용률이 99.02%로 발표했는데, 이는 수도권 대중교통카드자료를 이용하여 서울-경기-인천지역의 대중교통통행인구의 이동현황에 대한 종합적인 분석과 이를 통한 효과적 활용방안의 모색이 가능함을 보여준다. 교통카드자료를 이용하여 우선 수도권의 버스와 철도로 구성된 통합교통망에 대중교통카드 정보를 반영하여 기존 존단위 기종점 기반의 수도권 통행분석체계의 한계를 보완할 수 있다. 또한 버스와 철도로 구축된 통합교통수단으로 수도권 대중교통카드자료기반 통합대중교통분석틀을 구축하여 1인 승객의 역간 통행행태별 기종점 통행량의 추정이 가능하다. 본 연구는 수도권에서 제공하는 대중교통카드자료를 활용하는 경우 개별통행자의 공간이동에 대한 버스와 함께 철도로 구성된 통합대중교통에 대한 이용분석이 가능함을 제시하고자 한다. 또한 수도권 대중교통카드 이용자료는 수도권 통행인구의 이동현황 파악뿐만 아니라 수도권 지역공간의 특성에 대한 시사점을 통한 지역의 정책방향을 제시한다.

Keywords

References

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