2013
DOI: 10.5121/cseij.2013.3601
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Radial Basis Function Process Neural Network Training Based on Generalized FRECHET Distance And GA-SA Hybrid Strategy

Abstract: For learning problem of Radial Basis Function Process Neural Network (RBF-PNN), an optimization training method based on GA combined with SA is proposed in this paper. Through building generalized Fréchet distance to measure similarity between time-varying function samples, the learning problem of radial basis centre functions and connection weights is converted into the training on corresponding discrete sequence coefficients. Network training objective function is constructed according to the least square er… Show more

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