Water-Saving Intelligence Irrigation Systems Design Based on ZigBee Technology

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Abstract:

This paper designed an automatic irrigation system based on ZigBee, and the system is powered by solar energy. It can provide users with an intuitive on-site system management platform to complete node management and data processing functions. This paper develops a server-side information management system software, achieving real-time monitoring and remote monitoring alarm by the Web, and it simplifies the process of installation and disassembly field devices, making it more suitable for a direct connection of the general inconvenience of monitoring occasions. This article will play a reference role in intelligent irrigation.

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3187-3190

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November 2014

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© 2014 Trans Tech Publications Ltd. All Rights Reserved

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