Research and Design of Embedded Intelligent Monitoring System for Plant Factory

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Abstract:

In order to achieve collection and monitoring environmental parameters of the plant factory , this paper designs an intelligent monitoring system based on embedded system. The system consists of a terminal controller and a centralized controller. STC90C51 microcontroller is used as the MCU of the terminal controller, It is responsible for detecting environmental parameters and the regulation of the red and blue LED lights. The MCU of the centralized controller is an ARM processor named s3c6410, and it implements the function of the image acquisition and Web server. In the LAN users can access the information collected through the browser. The result of the tests shows that the system is stable and have referential significance to the monitoring system in other areas.

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1249-1252

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September 2014

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© 2014 Trans Tech Publications Ltd. All Rights Reserved

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