과제정보
이 논문은 산업통상자원부 '소비재 제품 고객평가 데이터 AI 분석 및 제조 활용 서비스 개발' (Project No: 20 9185), 국토교통부 'AI기반 가스·오일 플랜트 운영·유지관리 핵심기술개발' (Project No: 21ATOG-C161933-01), 산업통상자원부 '화학플랜트 수직형 통합 스마트팩토리 패키지 개발' (Project No: 20009324) 프로젝트에 의해 지원되었음.
참고문헌
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