Author:
Jin Huaiping,Huang Shuqi,Wang Bin,Chen Xiangguang,Yang Biao,Qian Bin
Funder
Applied Basic Research Key Project of Yunnan
Applied Basic Research Foundation of Yunnan Province
National Natural Science Foundation of China
Subject
Applied Mathematics,Industrial and Manufacturing Engineering,General Chemical Engineering,General Chemistry
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