Journal of Zhejiang University SCIENCE A
(Monthly)
2006 Vol. 7 Suppl. II p. 282-286
ISSN 1009-3095(Print), 1862-1775(Online)Perceptron network fault diagnosis on the shutdown of the fan in fan-coil unit
Wang Zhi-Yi†1,2, Chen Guang-Ming1, Gu Jian-Sheng2
(1Institute of Refrigeration & Cryogenics, Zhejiang University, Hangzhou 310027, China)
(2Zhejiang Dun’an Artificial Environmental Equipment Co. Ltd., Zhuji 311835, China)
†E-mail: zywang-wf@163.com
Received Mar. 29, 2006 revision accepted May 23, 2006
Abstract: Fault diagnosis is an important method of improving the safety and reliability of air conditioning systems. When the fan in fan-coil unit is shut down, there are temperature variations in the conditioned space. The heat exchanger efficiency is lower and the temperature in the room will change while the heat load of the room is stable. In this study, fault data are obtained in an experimental test rig. Thermal parameters as suction pressure and room temperature are selected and measured to establish a characteristic description to represent states of system malfunction. A new approach to fault diagnosis is presented by using real data from the test rig. Using the artificial neural network (ANN) in self-learning and pattern recognition modes, the fault is diagnosed with the perceptron (one type of ANN model) suitable for pattern classification problems. The perceptron network is shown to distinguish types of system faults correctly, and to be an artificial neural network architecture especially well suited for fault diagnosis.
Key words: Shutdown of the fan, Fault diagnosis, Perceptron, Neural network
doi:10.1631/jzus.2006.AS0282 CLC number: TB65; TU83
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