Solar Thermal Aquaculture System Controller Based on Artificial Neural Network
Commenced in January 2007
Frequency: Monthly
Edition: International
Paper Count: 32797
Solar Thermal Aquaculture System Controller Based on Artificial Neural Network

Authors: A. Doaa M. Atia, Faten H. Fahmy, Ninet M. Ahmed, Hassen T. Dorrah

Abstract:

Temperature is one of the most principle factors affects aquaculture system. It can cause stress and mortality or superior environment for growth and reproduction. This paper presents the control of pond water temperature using artificial intelligence technique. The water temperature is very important parameter for shrimp growth. The required temperature for optimal growth is 34oC, if temperature increase up to 38oC it cause death of the shrimp, so it is important to control water temperature. Solar thermal water heating system is designed to supply an aquaculture pond with the required hot water in Mersa Matruh in Egypt. Neural networks are massively parallel processors that have the ability to learn patterns through a training experience. Because of this feature, they are often well suited for modeling complex and non-linear processes such as those commonly found in the heating system. Artificial neural network is proposed to control water temperature due to Artificial intelligence (AI) techniques are becoming useful as alternate approaches to conventional techniques. They have been used to solve complicated practical problems. Moreover this paper introduces a complete mathematical modeling and MATLAB SIMULINK model for the aquaculture system. The simulation results indicate that, the control unit success in keeping water temperature constant at the desired temperature by controlling the hot water flow rate.

Keywords: artificial neural networks, aquaculture, forced circulation hot water system,

Digital Object Identifier (DOI): doi.org/10.5281/zenodo.1079754

Procedia APA BibTeX Chicago EndNote Harvard JSON MLA RIS XML ISO 690 PDF Downloads 2002

References:


[1] J. J. Carbajal1, L. P. Sánchez, "Classification based on fuzzy inference systems for artificial habitat quality in shrimp farming", In proc. Of IEEE conference Seventh Mexican International on Artificial Intelligence, 2008.
[2] Xiaojing Shena, Ming Chena, Jiang Yub, "Water Environment Monitoring System Based on Neural Networks for Shrimp Cultivation," In proc. Of IEEE International Conference on Artificial Intelligence and Computational Intelligence, 2009.
[3] Phillip G. Lee, "Process control and artificial intelligence software for aquaculture", Aquacultural Engineering Vol., 23, PP., 13-36, 2000.
[4] S.A. Kalogeria, "Applications of artificial neural networks in energy systems A review", Energy Conversion & Management, Vol., 40, PP., 1073-1087, 1999.
[5] Jin Woo Moon, Sung Kwon Jung, and Jong-Jin Kim, "application of ann (artificial-neural-network) in residential thermal control", building and simulation, in proc of Eleventh International IBPSA Conference Glasgow, Scotland ,2009.
[6] Hossein Mirinejad, Seyed Hossein Sadati, Maryam Ghasemian and Hamid Torab, "control techniques in heating, ventilating and air conditioning (hvac) systems" Journal of Computer Science Vol., 4 (9), PP., 777-783, 2008.
[7] Govind N. Kulkarni, Shireesh B. Kedare, Santanu Bandyopadhyay, "Determination of design space and optimization of solar water heating systems," Solar Energy, Vol. 81, PP. 958-968, 2007.
[8] John Gelegenis a, Paschalis Dalabakis b, Andreas Ilias, " Heating of a fish wintering pond using low-temperature geothermal fluids, Porto Lagos, Greece," Geothermics, Vol. 35, PP. 87-103, 2006.
[9] Duffie, J., Beckman, W., Solar Engineering of Thermal Processes, second ed. John Wiley & Sons Interscience, NewYork, 1991.
[10] Soteris A Kalogiroua, Soa Pantelioub, Argiris Dentsoras, "Artificial neural networks used for the performance prediction of a thermosiphon solar water heater", Renewable Energy, Vol., 18, PP., 87-99, 1999.
[11] James A. Freeman, David M. Skapura, Neural Networks Algorithms, Applications, And Programming Techniques, Addison-Wesley Publishing Company, Inc., Paris, 1991.
[12]
[M.N. Cirstea, A. Dinu, J.G. Khor, M. McCormick, "Neural and Fuzzy Logic Control of Drives and Power Systems", Replika Press Delhi , India, 2002.
[13] Soteris A. Kalogirou, "Prediction of flat-plate collector performance parameters using artificial neural networks", Solar Energy, Vol., 80, PP., 248-259, 2006.
[14] Adnan Sozen, Tayfun Menlik, Sinan Unvar, "Determination of efficiency of flat-plate solar collectors using neural network approach", Expert Systems with Applications, Vol., 35, PP., 1533-1539, 2008.