Acknowledgement
본 연구는 과학기술정보통신부 한국건설기술연구원 연구운영비지원(주요사업)사업으로 수행되었습니다(과제번호 20240104-001, AI기반 지진 시 지반 액상화 평가를 위한 데이터베이스 구축, 과제번호 20240133-001, 지반분야 재난재해 대응과 미래 건설산업 신성장을 위한 지반 기술 연구).
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