A Study on Environmental Factor Recommendation Technology based on Deep Learning for Digital Agriculture

Han-Jin Cho
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Abstract

Smart Farm means creating new value in various fields related to agriculture, including not only agricultural production but also distribution and consumption through the convergence of agriculture and ICT. In Korea, a rental smart farm is created to spread smart agriculture, and a smart farm big data platform is established to promote data collection and utilization. It is pushing for digital transformation of agricultural products distribution from production areas to consumption areas, such as expanding smart APCs, operating online exchanges, and digitizing wholesale market transaction information. As such, although agricultural data is generated according to characteristics from various sources, it is only used as a service using statistics and standardized data. This is because there are limitations due to distributed data collection from agriculture to production, distribution, and consumption, and it is difficult to collect and process various types of data from various sources. Therefore, in this paper, we analyze the current state of domestic agricultural data collection and sharing for digital agriculture and propose a data collection and linkage method for artificial intelligence services. And, using the proposed data, we propose a deep learning-based environmental factor recommendation method.
基于深度学习的数字农业环境因子推荐技术研究
智慧农场是指通过农业和信息通信技术的融合,在农业生产、分配、消费等与农业相关的各个领域创造新的价值。韩国通过租赁智慧农场推广智慧农业,建立智慧农场大数据平台促进数据收集和利用。推进农产品流通从生产区向消费区数字化转型,如扩大智能运货中心、运营网上交易所、批发市场交易信息数字化等。因此,虽然农业数据是根据各种来源的特征生成的,但它只是作为一种使用统计和标准化数据的服务。这是因为从农业到生产、分配、消费的分布式数据收集存在局限性,难以从各种来源收集和处理各种类型的数据。因此,本文分析了国内面向数字农业的农业数据采集与共享现状,提出了面向人工智能服务的数据采集与联动方法。在此基础上,提出了一种基于深度学习的环境因子推荐方法。
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