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거주인구의 시공간 변화 및 영향요인 분석: 전라북도 전주시 사례를 중심으로

Exploring Spatio-temporal Patterns of Population and its Influential Factors in Jeonju

  • 양지철 (한국국토정보공사 공간정보연구원) ;
  • 김주애 (한국국토정보공사 공간정보연구원) ;
  • 조국 (한국국토정보공사 공간정보연구원) ;
  • 이상완 (한국국토정보공사 공간정보연구원)
  • Jicheol Yang (Spatial Information Research Institute, Korea Land and Geospatial Informatix Corporation) ;
  • Jooae Kim (Spatial Information Research Institute, Korea Land and Geospatial Informatix Corporation) ;
  • Kuk Cho (Spatial Information Research Institute, Korea Land and Geospatial Informatix Corporation) ;
  • Sangwan Lee (Spatial Information Research Institute, Korea Land and Geospatial Informatix Corporation)
  • 투고 : 2023.08.17
  • 심사 : 2023.09.07
  • 발행 : 2023.09.30

초록

This study (1) explored spatio-temporal population distribution patterns in Jeonju by using emerging hot spot analysis and (2) identified the influential factors to determine the spatio-temporal patterns by using multinomial logit model. The major findings are as follows. First, the results of emerging hot spot analysis indicated that the 100*100m grid in the urban area of Jeonju was found to have a category of hot spots, whereas most of the cold spot series was concentrated in the outskirts of the city. Also, new towns such as Jeonju Eco City, Jeonbuk Innovation City, and Hyocheon District were persistent or intensifying hot spots, Third, the results of multinomial logit model revealed that the factors influencing deterrmining the spatio-temporal patterns were accessibility to schools, hospitals, parks, and walfare services. This study offered a deeper understanding of urbanization and regional changes in Jeonju, and important information for urban planning.

키워드

과제정보

This study has been supported by a Research Fund of Ministry of Trades, Industry, and Energy (Research TItle: Establishing a Demonstration Infrastructure of Autonomous Cargo Transport ration Service for Commercial Vehicles in Saemangeum; Research Number: P0020670).

참고문헌

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