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NTIS 바로가기Korean journal of crop science = 韓國作物學會誌, v.65 no.4, 2020년, pp.377 - 385
정재경 (국립 경상대학교 농학과) , 이영훈 (국립 경상대학교 농학과) , 최재은 (국립 경상대학교 농학과) , 송기은 (국립 경상대학교 응용생명과학부 BK21+ 프로그램) , 고종한 (국립 전남대학교 응용식물학과) , 이경도 (농촌진흥청 국립농업과학원 농업환경부) , 심상인 (국립 경상대학교 농학과)
Recently, wheat consumption has been increasing in Korea, requiring increased production. Nitrogen fertilization is a critical determinant in crop yield; therefore, it is necessary to optimize the nitrogen fertilization regime with current trends that emphasize the minimum impact of nitrogen fertili...
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