Acknowledgement
본 결과물은 농림축산식품부 및 과학기술정보통신부, 농촌진흥청의 재원으로 농림식품기술기획평가원과 재단 법인 스마트팜연구개발사업단의 스마트팜다부처 패키지혁신기술개발사업의 지원을 받아 연구되었음(423001-02).
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