과제정보
본 연구는 산림청(한국임업진흥원) 산림과학기술 연구개발사업(2018113B10-2020-BB01)과 산림과학기술 연구개발사업(2020185D10-2122-AA02)의 지원에 의하여 이루어진 것입니다.
참고문헌
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