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Development of 3D Addressing Data Model Based on the IndoorGML

IndoorGML 기반 입체주소 데이터 모델 개발

  • Received : 2020.11.16
  • Accepted : 2020.12.24
  • Published : 2020.12.31

Abstract

The all revision of the Road Name Address Act, which contains the contents to be used by expanding the road name address as a means of indicationg the location, has been resloved by the National Assembly. Addresses will be assigned to large-sized facilities (3D mixed-use complex spaces). Here, the 3D (Three-dimensional) address is assigned an indoor path section in the inner passage, dividing the section at intervals. The 3D address will be built on the address information map. For 3D address, data should be built and managed for a 3D complex space(indoor space). Therefore, in this study, the object of the 3D address is defined based on the address conceptual model defined in the international standard, and the 3D address data model is proposed based on IndoorGML. To this, it is proposed as a method of mapping the Core and Navigation module of IndoorGML so that the entity of the 3D address can be expressed in IndoorGML. This study has a limitation in designing a 3D address data model only, but it is meaningful that it suggested a standard for constructing 3D address data in the future.

도로명주소를 위치를 표시하는 수단으로 확대하여 활용하고자 하는 내용이 담긴 도로명주소법에 대한 전부 개정안이 국회에서 의결되었으며, 개정법에 따라 행정안전부에서는 건물뿐만 아니라 버스정류장이나 택시승강장과 같은 시설물에 주소를 부여하고, 복잡하고 대형화되는 시설물(입체복합공간)에 대해서도 주소를 부여할 계획이다. 여기서 입체주소는 입체복합공간의 내부통로에 실내경로구간을 설정하고, 그 구간을 분할하여 그 간격에 설정된 기초번호를 활용하여 실내경로명과 기초번호로 부여된다. 이렇게 부여된 입체주소는 주소정보기본도에 구축될 예정이다. 입체주소는 입체복합공간(실내공간)을 대상으로 데이터가 구축되고 관리되어야 한다. 따라서 본 연구에서는 국제 표준에 정의된 주소 개념모델을 바탕으로 입체주소의 개체를 정의하고, IndoorGML을 기반으로 입체주소 데이터 모델을 제안하고자 한다. 이를 위하여 입체주소의 개체가 IndoorGML로 표현이 될 수 있도록 IndoorGML의 Core module과 Navigation module로 매핑하는 방식으로 제안하였다. 본 연구는 입체주소 데이터 모델을 설계만 하였다는 한계가 있으나 향후 입체주소 데이터를 구축하는데 기준을 제시하였다는 의의가 있다.

Keywords

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