Title :
Power efficient hardware implementation of a fuzzy neural network
Author :
Rafał Długosz;Vitaliy Kolodyazhniy;Witold Pedrycz
Author_Institution :
Institute of Microtechnology, Swiss Federal Institute of Technology in Lausanne (EPFL), Neuchatel, Switzerland
Abstract :
This paper presents a digital, transistor level implemented neo-fuzzy neural network. This type of neural network is particularly well suited for real-time applications like those encountered in signal processing and nonlinear system identification. We consider in detail a flexible reconfigurable circuit of a single nonlinear synapse of this network. When combining such circuits, single-layer or multilayer networks can be designed. The advantages of the proposed circuit come in the form of reduced redundancy, high data rate due to parallel operation, low power consumption, and an overall flexibility of system configuration.
Keywords :
"Neurons","Artificial neural networks","Signal resolution","Hardware","Computational modeling","Training","Delay"
Conference_Titel :
Mixed Design of Integrated Circuits and Systems (MIXDES), 2010 Proceedings of the 17th International Conference
Print_ISBN :
978-1-4244-7011-2