Intelligent Aquaculture Monitoring System Based on Fieldbus

Article Preview

Abstract:

This paper analyses the status of aquiculture in China and gives out some of its potential problems. In order to over these problems, Industrial fieldbus and Intranet technology are used in this paper to achieve the hardware and software design, as well as control strategies for factory aquaculture. It applies WEB server, database server and browser to establish the management platform for environment control and production process. The whole system was successfully verified at Zhenjiang production base. Through a real-time control of dissolved oxygen, temperature and PH in pond, this system stabilizes these parameters at each own optimum values, and dramatically improves the overall productivity. The test results show that this system is easy-operated and user friendly, it provides a direct and practical measure for aquiculture, and saves energy as well.

You might also be interested in these eBooks

Info:

Periodical:

Pages:

646-651

Citation:

Online since:

December 2013

Authors:

Export:

Price:

Permissions CCC:

Permissions PLS:

Сopyright:

© 2014 Trans Tech Publications Ltd. All Rights Reserved

Share:

Citation:

* - Corresponding Author

[1] Ma Congguo, Ni Wei. Factorization aquaculture monitoring system design based on PLC, Industry appliance and automation device, 2005, 12(2): 51-53.

Google Scholar

[2] Yang xianhui. Industrial data communications and control network, Beijing Tsinghua University publishing house, (2003).

Google Scholar

[3] Ma Congguo. Aquaculture breeding monitoring system based on fieldbus, agriculture machinery journal, 2007, 20(8): 131-133.

Google Scholar

[4] Cui Jian. Simens industry network communications guide. mechanical industry publishing house, (2004).

Google Scholar

[5] Liu guofan. the realization method of Communications between PC Computer and PLC [J]. Electric Automation, 2002, 20(5): 40-44.

Google Scholar

[6] Wang Dayi, Ma Xingrui. Neuron-Optimal Guidance Law for Lunar Soft Landing [J]. Engineering and Electronic Technology, 2005, 21 (12): 31-34.

Google Scholar

[7] Qi Zhidong, Zhu Xinjian, Zhu Weixing. Integrated Optimization of Neuron-fuzzy Controller Base on Fuzzy Genetic Algorithm [J]. Computer Simulation, 2004, 21 (6): 122 -126.

Google Scholar