Autores
Aguilar Cruz Karen Alicia
Medel Juárez José de Jesús
Vigueras Velázquez Midory Esmeralda
Título Neural Net Gains Estimation Based on an Equivalent Model
Tipo Revista
Sub-tipo JCR
Descripción Computational Intelligence and Neuroscience
Resumen A model of an Equivalent Artificial Neural Net (EANN) describes the gains set, viewed as parameters in a layer, and this consideration is a reproducible process, applicable to a neuron in a neural net (NN). The EANN helps to estimate the NN gains or parameters, so we propose two methods to determine them. The first considers a fuzzy inference combined with the traditional Kalman filter, obtaining the equivalent model and estimating in a fuzzy sense the gains matrix.. and the proper gain.. into the traditional filter identification. The second develops a direct estimation in state space, describing an EANN using the expected value and the recursive description of the gains estimation. Finally, a comparison of both descriptions is performed; highlighting the analytical method describes the neural net coefficients in a direct form, whereas the other technique requires selecting into the Knowledge Base (KB) the factors based on the functional error and the reference signal built with the past information of the system.
Observaciones DOI 10.1155/2016/1690924
Lugar London
País Reino Unido
No. de páginas Article number UNSP 1690924
Vol. / Cap. v. 2016
Inicio 2016-06-05
Fin
ISBN/ISSN