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Nonlinear control of an active magnetic bearing system achieved using a fuzzy control with radial basis function neural network
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نویسنده
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chen s.-c. ,nguyen v.-s. ,le d.-k. ,nam n.t.h.
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منبع
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journal of applied mathematics - 2014 - دوره : 2014 - شماره : 0
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چکیده
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Studies on active magnetic bearing (amb) systems are increasing in popularity and practical applications. magnetic bearings cause less noise,friction,and vibration than the conventional mechanical bearings; however,the control of amb systems requires further investigation. the magnetic force has a highly nonlinear relation to the control current and the air gap. this paper proposes an intelligent control method for positioning an amb system that uses a neural fuzzy controller (nfc). the mathematical model of an amb system comprises identification followed by collection of information from this system. a fuzzy logic controller (flc),the parameters of which are adjusted using a radial basis function neural network (rbfnn),is applied to the unbalanced vibration in an amb system. the amb system exhibited a satisfactory control performance,with low overshoot,and produced improved transient and steady-state responses under various operating conditions. the nfc has been verified on a prototype amb system. the proposed controller can be feasibly applied to amb systems exposed to various external disturbances; demonstrating the effectiveness of the nfc with self-learning and self-improving capacities is proven. © 2014 seng-chi chen et al.
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آدرس
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department of electrical engineering,da-yeh university, Taiwan, department of electrical engineering,da-yeh university, Taiwan, department of electrical engineering,da-yeh university, Taiwan, department of electrical engineering,hue industrial college, Viet Nam
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Authors
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