Smart Farming Hydroponic Plants Integrated Cloud Computing Based on Android
Abstract
Purpose: To know the accuracy in presenting information about environmental conditions and controlling misting of hydroponic plants automatically or manually by providing data through RESTful cloud computing integrated services.
Design/Method/Approach: This research uses a RESTful API in the service as a communication bridge between the tool and application. The prototype method is used as a process framework in software development.
Result: Based on API testing carried out on this system, the results show that the response is in accordance with the request sent. This application can provide information related to the environmental conditions of hydroponic plants in real time and make it easier to do misting automatically or manually.
Authenticity/State of the art: The difference between this research and previous research lies in the technology and the object used. The object of this research uses the hydroponic floating raft technique. The application in this research is expected to help users facilitate automatic misting and provide real-time information about the environmental conditions of hydroponic plants. The technology in this research uses Android Studio, which functions as a front end to make the display more comfortable when used by users. While on the back end, using web services as a communication tool in the form of services. The service provided is a RESTful API, because a RESTful API is an implementation of a web service.
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