과제정보
이 논문은 국토교통부/국토교통과학기술진흥원의 지원에 의해 연구되었음(과제번호 RS-2022-00143336).
참고문헌
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- Suwon-cityhall. (2023), Suwon City holds campaign for 'BOOJ IRUN', https://www.suwon.go.kr/web/board/BD_board.view.do?bbsCd=1043&seq=20230904094532891 (Accessed on Sep, 07th, 2023)
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