Target Tracking Based on QPSO Algorithm

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This article paper proposes a FCM based QPSO algorithm to establish the mathematical model and simulation including the algorithm introduction, modeling and simulation. In the designed system , data is firstly clustered into classes by c-means algotithm so that each rule defines its own fuzzy sets, the number of fuzzy rules is also determined by the number of clusters..Then Quantum-behaved particle swarm optimization learning algotithm then used for optimising the parameters of the system. We illustrates the algorithm in details with computer simulation to solve nonlinear problems and compare the rusults between basic PSO and our algorithm.

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84-88

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June 2013

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© 2013 Trans Tech Publications Ltd. All Rights Reserved

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