Acta Agronomica Sinica ›› 2020, Vol. 46 ›› Issue (11): 1771-1779.doi: 10.3724/SP.J.1006.2020.94187
• TILLAGE & CULTIVATION·PHYSIOLOGY & BIOCHEMISTRY • Previous Articles Next Articles
YAN Zhuang-Zhuang2(), YAN Xue-Hui2, SHI Jia2, SUN Kai2, YU Jiang-Lin2, ZHANG Zhan-Guo1, HU Zhen-Bang3, JIANG Hong-Wei3, XIN Da-Wei3, LI Yang1, QI Zhao-Ming3, LIU Chun-Yan3, WU Xiao-Xia3, CHEN Qing-Shan3, ZHU Rong-Sheng1,*()
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