과제정보
이 논문은 2022년도 정부(교육부, 산업통상자원부)의 재원으로 K-CCUS 추진단의 지원을 받아 수행된 연구입니다(KCCUS20220001, 온실가스 감축 혁신인재양성사업). 또한, 이 연구를 위해 귀중한 현장 자료를 제공해주신 한국지능정보사회진흥원의 AI 허브와 서울시 도로관리과에 감사를 드립니다.
참고문헌
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