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dc.contributor.author Kumarawadu, S
dc.contributor.author Watanabe, K
dc.contributor.author Kazuo, K
dc.contributor.author Izumi, K
dc.date.accessioned 2013-10-21T02:28:44Z
dc.date.available 2013-10-21T02:28:44Z
dc.identifier.uri http://dl.lib.mrt.ac.lk/handle/123/8538
dc.description.abstract This paper presents the use of neural networks (NNs) and genetic algorithms (GAs) to enhance the output tracking performance of partly known robotic systems. Two of the most potential approaches of adaptive control, i.e., the concept of variable structure control (VSC) and NN-based adaptive control, are ingeniously combined using GAs to achieve high-performance output tracking. GA is used to make the maximum use of different performance characteristics of two self-adaptive NN modules by finding the switching function which best combines them. The method will be valid for any rigid revolute robot system. Computer simulations on our active binocular head are included for illustration and verification.
dc.language en
dc.subject Neural networks
dc.subject genetic algorithms
dc.subject softmax function,
dc.subject gaussian-sum networks
dc.subject robot control
dc.title Neural network-based optimal adaptive tracking using genetic algorithms
dc.type Article-Abstract
dc.identifier.year 2006
dc.identifier.journal Asian Journal of Control
dc.identifier.issue 4
dc.identifier.volume 8
dc.identifier.pgnos 372-384


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