Smart Agriculture ›› 2023, Vol. 5 ›› Issue (1): 82-98.doi: 10.12133/j.smartag.SA202211004
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Received:
2022-11-11
Online:
2023-03-30
corresponding author:
ZHAO Sijian, E-mail:zhaosijian@caas.cn
About author:
GUI Zechun, E-mail:guizechun2022@163.com
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GUI Zechun, ZHAO Sijian. Research Application of Artificial Intelligence in Agricultural Risk Management: A Review[J]. Smart Agriculture, 2023, 5(1): 82-98.
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