Intelligent Farm Relaxation for Smart City based on Internet of Things: Management System and Service Model

Farm relaxation is a type of city tourism. Currently, this type of tourism has demonstrated a series of problems, including blind spots in the service channel, simple one-sided service content and passive service delivery. To address these issues, here the concept of “intelligent farm relaxation” was proposed. In addition, an intelligent farm management system IEFMS was developed based on key techniques from the Internet of Things (IoT) as well as a related service model. This system has five layers, which are, from top to bottom: the presentation layer, the application layer, the application support layer, the data layer, and the infrastructure layer. Based on this, the intelligent farm was divided into four sections and a service model proposed: planting areas, a management services centre, a logistics distribution centre and a data centre. This service model is characterized by digital dynamic management and customized whole-process proactive services. The results of this study will help improve intelligent farm management services for smart city, likewise providing technical and application support for the intelligentization, automation and diversification of intelligent farm relaxation service management, and also to promote adding cultural, ecological, technological and service value to intelligent farm relaxation.

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