This work is licensed under the Creative Commons Attribution 4.0 International License.
Chen Shengjie, Shen Xizhong, Zhao Lixin, Zhang Shuxing. Development and application of agricultural intelligent data collection system. Journal of Irrigation and Drainage, 2019, 38(S2): 135-139.Search in Google Scholar
Wang Lingling, Cao Jianhua, Luo Hongxia, Fang Jihua. Research and application of key technologies for agricultural field data acquisition and control. Agricultural Machinery, 2012(26): 172-174.Search in Google Scholar
Califf M E, Mooney R J. Relational learning of pattern-match rules for information extraction. In Proceedings of the Sixteenth National Conference on Artificial Intelligence and Eleventh Conference on Innovative Applications of Artificial Intelligence, 1999:328-334.Search in Google Scholar
Buitelaar P, Cimiano P, Frank A, et al. Ontology-based information extraction and integration from heterogeneous data sources. International Journal of Human-Computer Studies, 2008, 66(11):759-788.Search in Google Scholar
Hui Yinfan. Research and system implementation of personalized recommendation model for agricultural planting technology. Northwest Sci-tech University of Agriculture and Forestry, 2021.Search in Google Scholar
Zhao Di. Design and implementation of an agricultural cultural tourism management platform based on personalized recommendation. Shandong Agricultural University, 2020.Search in Google Scholar
Zheng Xiaonan. Research on personalized collaborative filtering recommendation algorithm based on user preferences. Chongqing University of Posts and Telecommunications, 2020.Search in Google Scholar
Bao T., Cao H., Chen E., et al. An Unsupervised Approach to Modeling Personalized Contexts of Mobile Users. 2010 IEEE International Conference on Data Mining [C]. IEEE, 2010: 38-47.Search in Google Scholar
Zhao Z. Research on Multi-source Heterogeneous Land Data Integration and Cloud Sharing Method. Geomatics & Spatial Information Technology, 2019.Search in Google Scholar
LI Dewei, G Huang. Research on Real-time Processing Technology of Multi-source Heterogeneous Massive Training Data. Computer and Network, 2019, 045(011):58-61.Search in Google Scholar
Wang Y. Research on Construction and Management of Intelligent Agriculture Cloud Platform. 2020 International Conference on Computer Information and Big Data Applications (CIBDA). IEEE, 2020.Search in Google Scholar
Zheng Y, Liu C. Agricultural IoT System Based on Image Processing and Cloud Platform Technology. 2018.Search in Google Scholar
Kanungo T, Mount D M, Netanyahu N S, et al. An efficient k-means clustering algorithm: analysis and implementation. IEEE Transactions on Pattern Analysis & Machine Intelligence, 2002, 24(7):881-892.Search in Google Scholar
Liu Qi. Construction and application of multi-source heterogeneous big data platform. Software Engineering, 2021, 24(10): 54-58.Search in Google Scholar
Li Hanpeng, Wang Yang, Zheng Junxuan, Zhang Xingxing. Research on multi-source heterogeneous detection big data acquisition and storage method. Electronic Quality, 2021(09): 53-55.Search in Google Scholar
Yue Jingwen, Li Xiaoxia, Qin Shaolin. Multi-source heterogeneous data fusion and application technology analysis of Internet information supervision and management big data platform. Yangtze River Information and Communication, 2021, 34(09): 119-122.Search in Google Scholar
Sun Yufei. Research on multi-source heterogeneous data collection and storage mode of government cloud network security situation. Network Security Technology and Application, 2021(08): 78-80.Search in Google Scholar
Liu Yun. Construction of multi-source heterogeneous big data fusion model based on recurrent neural network. Journal of Inner Mongolia University for Nationalities (Natural Science Edition), 2021, 36(03): 204-210.Search in Google Scholar
Zhou Junwu. Research and implementation of ocean element data service platform based on multi-source heterogeneous. Guilin University of Technology, 2021.Search in Google Scholar
Guan Xiaofeng, Lu Linfeng, Wu Xiaoke. The construction and application of a cloud platform for smart agriculture in Zhejiang Province. Zhejiang Agricultural Sciences, 2020, 61(03):595–597+601.Search in Google Scholar
Zhang Qiang. Research and development of a cloud platform for agricultural big data processing and yield prediction integrated with Spark. Jiangxi Normal University, 2019.Search in Google Scholar