ON-LINE NEO-PHASE AUTOENKODER FOR SYSTEMS WITH DEEP LEARNING ON THE BASE OF THE KOLMOGOROV’S NEURO-PHASE NETWORK
Journal: TRANSPORT DEVELOPMENT (Vol.1, No. 1)Publication Date: 2017-09-27
Authors : E.V. BODYANSKY O.A. VINOKUROVA D.D. PELESHKO Yu.M. RASHKEVICH;
Page : 60-67
Keywords : Neo-fuzzy autoencoder; deep learning neural network; Kolmogorov’s neuro-fuzzy network; data reduction-compression; machine learning;
Abstract
One of the important problem, which is connected with big high dimensional data processing, is the task of their compression without significant loss of information that is contained in this data. The systems, which solve this problem and are called autoencoders, are the inherent part of deep neural networks. The main disadvantage of well-known autoencoders is low speed of
learning process, which is implemented in the batch mode. In the paper the two-layered autoencoder is proposed. This system is the modification of Kolmogorov's neuro-fuzzy system. Thus, in the paper the hybrid neo-fuzzy systemencoder is proposed that has essentially advantages comparatively with conventional neurocompressors-encoders.
Other Latest Articles
- Design & Development of Suction based Wall-Climbing System
- METHOD FOR ANTIFAULT CONTROL OF COMPLEX TECHNICAL SYSTEMS
- Performance Analysis of Diesel Engine using Biodiesel with the Influence of Dimethyl Ether Blend
- IMPROVING THE CHARACTERISTICS OF EXTRUSION LINES FOR THE PRODUCTION OF PLASTIC PIPES
- Mechanical Behavior and Characterization of Stir Casted AZ31-CaSiO3 Metal Matrix Composites
Last modified: 2022-01-30 02:04:09