과제정보
1. 이 성과는 정부(과학기술정보통신부)의 재원으로 한국연구재단의 지원을 받아 수행된 연구임 (No. 2022 R1F1A1065518) (50%). 2. 본 논문은 2022년도 정부(국토교통부)의 재원으로 국토교통과학기술진흥원의 지원을 받아 수행된 연구입니다 (22UGCP-B157945-03) (50%).
참고문헌
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