Evolutionary Algorithm with PID Control System for Central Air-Conditioning Energy Saving

Article Preview

Abstract:

Central air-conditioning energy saving under the control of the process of multi-parameter is a typical time-varying systems and nonlinear complex systems. In this paper, we analyzed and studied the process-oriented control system for central air-conditioning energy saving algorithm and architecture, and used evolutionary algorithm and PID control strategy to improve the existing control system. The new system makes the control system to achieve better function control and energy saving.

You might also be interested in these eBooks

Info:

Periodical:

Advanced Materials Research (Volumes 204-210)

Pages:

981-984

Citation:

Online since:

February 2011

Export:

Price:

Permissions CCC:

Permissions PLS:

Сopyright:

© 2011 Trans Tech Publications Ltd. All Rights Reserved

Share:

Citation:

[1] HUO Xiao-ping, HVAC Automation Control System [M], China Electric Power Press, March . (2004).

Google Scholar

[2] Absorption machine for heating and cooling in future energy system IEA Heat Pump Programme Annex 24 (novem , Netherland : IEA Heat Pump Centre) (2001).

DOI: 10.1016/j.egypro.2012.11.016

Google Scholar

[3] Qiu Dong, Zhang Minghua, Song Qinfeng, Central air conditioning energy saving control strategy [J], Refrigeration Air Conditioning & Electric Power Machinery , May. (2007).

Google Scholar

[4] Zhang Liming, Artificial neural network model and its application [M], Fudan University Press, July. (1993).

Google Scholar

[5] Wepfer, willam J Chilled-water loop optimization Georgia Inst of Technology, USA (1990).

Google Scholar

[6] Tian Fang, Improvement of genetic algorithm and its performance analysis and optimization of compressor applications [D], Northeastern University, (2006).

Google Scholar

[7] Zhang Xiaoji, Dai Guanzhong, Xu Naiping, Genetic Algorithms in extraction and filtering of fuzzy control rules[J], Control and Theory Applications, (1998), pp.379-384.

Google Scholar

[8] P. Heckerling,G. Canaris,S. Flach, T. Tape, R. Wigton, B. Gerber. Predictors of urinary tract infection based on artificial neural networks and genetic algorithms . Int. J. Med. Inf. 2007, 76: 289-296.

DOI: 10.1016/j.ijmedinf.2006.01.005

Google Scholar

[9] Davis,L. Handbook of genetic algorithms[M]. NewYork: Van Nostrand Reinhold, (1991).

Google Scholar

[10] Heat pumps in the UK-a monitoring report General Information Report GIR 72 (2000).

Google Scholar