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Volume 28 Issue 6
Jun.  2013
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Article Contents
LIU Xian, ZHENG Hui-yong, SHI Neng-qiang, LIU Yu-mei, LIN Ying-zhi. Artificial Intelligence in Agricultural Applications[J]. Fujian Journal of Agricultural Sciences, 2013, 28(6): 609-614. doi: 10.19303/j.issn.1008-0384.2013.06.021
Citation: LIU Xian, ZHENG Hui-yong, SHI Neng-qiang, LIU Yu-mei, LIN Ying-zhi. Artificial Intelligence in Agricultural Applications[J]. Fujian Journal of Agricultural Sciences, 2013, 28(6): 609-614. doi: 10.19303/j.issn.1008-0384.2013.06.021

Artificial Intelligence in Agricultural Applications

doi: 10.19303/j.issn.1008-0384.2013.06.021
  • Received Date: 2013-04-01
  • Publish Date: 2013-06-18
  • Artificial intelligence is the forefront of the 21st Century technology development.Using the computer and control sciences, significant social and economic benefits have been realized.Its application to improve the production efficiency and management automation has become an essential task for the agricultural professionals as well.In China, the progress is seen crucial for the modernization and sustainability of its agriculture, and the continual improvements on the high-yield, high-efficiency and high-quality crops.
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