loT Research Division, Electronics and Telecommunications Research Institute, Daejeon 34129, Korea.
Department of Agricultural Engineering, National Institute of Agricultural Sciences, Jeollabuk-do 55365, Korea.
Sensors (Basel). 2018 Nov 20;18(11):4051. doi: 10.3390/s18114051.
Crop diseases cannot be accurately predicted by merely analyzing individual disease causes. Only through construction of a comprehensive analysis system can users be provided with predictions of highly probable diseases. In this study, cloud-based technology capable of handling the collection, analysis, and prediction of agricultural environment information in one common platform was developed. The proposed Farm as a Service (FaaS) integrated system supports high-level application services by operating and monitoring farms as well as managing associated devices, data, and models. This system registers, connects, and manages Internet of Things (IoT) devices and analyzes environmental and growth information. In addition, the IoT-Hub network model was constructed in this study. This model supports efficient data transfer for each IoT device as well as communication for non-standard products, and exhibits high communication reliability even in poor communication environments. Thus, IoT-Hub ensures the stability of technology specialized for agricultural environments. The integrated agriculture-specialized FaaS system implements specific systems at different levels. The proposed system was verified through design and analysis of a strawberry infection prediction system, which was compared with other infection models.
仅仅分析单个病因,无法准确预测作物病害。只有通过构建综合分析系统,才能为用户提供高度可能发生的疾病预测。本研究开发了一种基于云技术的综合农业环境信息采集、分析和预测通用平台。所提出的 Farm as a Service(FaaS)集成系统通过操作和监控农场以及管理相关设备、数据和模型,支持高级应用服务。该系统注册、连接和管理物联网(IoT)设备,并分析环境和生长信息。此外,本研究还构建了 IoT-Hub 网络模型。该模型支持为每个物联网设备高效传输数据,并为非标准产品进行通信,即使在通信环境较差的情况下,也能保证高度的通信可靠性。因此,IoT-Hub 确保了农业环境专用技术的稳定性。集成的农业专用 FaaS 系统在不同级别实现了特定系统。该系统通过草莓感染预测系统的设计和分析得到验证,并与其他感染模型进行了比较。