Title :
GF(24) multiplier in hardware using discrete neural network
Author :
Reis, Vanderson Lima ; Costa, Wendell E. M. ; Freire, Raimundo Carlos S. ; De Assis, Francisco M. ; Santana, Eder
Author_Institution :
CMDI - IFAM, Manaus, Brazil
Abstract :
This article describes a new structure of finite fields multiplier based on Mastrovito multiplier. This architecture has linear threshold gates as the processing units, which is the basic element of a discrete neural network. One of the great advantages of using neural networks implemented with discrete linear threshold gates is that it reduces the complexity of certain circuits before implemented with traditional logic (AND, OR, and NOT), thus making more complex circuits can be designed in a more simplified form by reducing the number of necessary ports. The entire circuit was designed and simulated using CADENCE tools with technology IBM018.
Keywords :
circuit complexity; logic circuits; logic design; logic gates; neural nets; CADENCE tools; GF(2^4) multiplier; IBM018 technology; Mastrovito multiplier; circuit complexity reduction; circuit design; discrete linear threshold gates; discrete neural network; finite field multiplier; hardware; Clocks; Computer architecture; Galois fields; Logic gates; Neural networks; Ports (Computers); Transistors; GF(24) multiplier; Threshold Logic Gates; discrete neural networks;
Conference_Titel :
Instrumentation and Measurement Technology Conference (I2MTC) Proceedings, 2014 IEEE International
Conference_Location :
Montevideo
DOI :
10.1109/I2MTC.2014.6860922