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人工智能在农业生产中的应用进展

刘现 郑回勇 施能强 刘玉梅 林营志

刘现, 郑回勇, 施能强, 刘玉梅, 林营志. 人工智能在农业生产中的应用进展[J]. 福建农业学报, 2013, 28(6): 609-614. doi: 10.19303/j.issn.1008-0384.2013.06.021
引用本文: 刘现, 郑回勇, 施能强, 刘玉梅, 林营志. 人工智能在农业生产中的应用进展[J]. 福建农业学报, 2013, 28(6): 609-614. doi: 10.19303/j.issn.1008-0384.2013.06.021
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

人工智能在农业生产中的应用进展

doi: 10.19303/j.issn.1008-0384.2013.06.021
基金项目: 

福建省财政专项——福建省农业科学院科技创新团队建设项目 (CXTD-1-1310)

福建省科技创新平台建设项目 (2009J1002、2010J1002)

福建省农业科学院科技重大专项 (ZDZX-1302)

详细信息
    作者简介:

    刘现:林营志 (1974-) , 男, 博士, 研究方向:环境感知与智能控制

  • 中图分类号: S126;TP18

Artificial Intelligence in Agricultural Applications

  • 摘要: 本文综述了人工智能技术在农业生产中的应用现状。采用分阶段描述的方法分别详细阐述目前人工智能各种技术在农业生产的产前、产中和产后各阶段的应用情况, 总结人工智能在农业生产应用中的不足并展望其应用前景。由此可得, 随着人工智能技术的不断成熟, 利用人工智能技术提高农业生产的效率和农业生产管理的自动化水平越来越普遍, 人工智能将为我国发展高产、高效、优质、可持续的现代化农业做出巨大贡献。
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出版历程
  • 收稿日期:  2013-04-01
  • 刊出日期:  2013-06-18

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