DocumentCode :
1983290
Title :
High speed VLSI neural network for high-energy physics
Author :
Masa, P. ; Hoen, K. ; Wallinga, H.
Author_Institution :
MESA Res. Inst., Twente Univ., Enschede, Netherlands
fYear :
1994
fDate :
26-28 Sep 1994
Firstpage :
422
Lastpage :
428
Abstract :
A CMOS neural network IC is discussed which was designed for very high speed applications. The parallel architecture, analog computing and digital weight storage provides unprecedented computing speed combined with ease of use. The circuit classifies up to 70 dimensional vectors within 20 nanoseconds, performing 20 billion (2*1010) multiply-and-add operations per second, and has as high as 28-42 Gbits/second equivalent input bandwidth with less than 1 W dissipation. The synaptic weights can be directly downloaded from a host computer to the on on-chip SRAM. The full-custom, analog-digital chip implements a fully connected feedforward neural network with 70 inputs, 6 hidden layer neurons and one output neuron. A unique solution, a single chip neural network photon trigger for high-energy physics research is provided
Keywords :
CMOS integrated circuits; 1 W; 28 to 42 Gbit/s; CMOS neural network IC; VLSI neural network; analog computing; computing speed; digital weight storage; equivalent input bandwidth; full-custom analog-digital chip; fully connected feedforward neural network; hidden layer neurons; high-energy physics; multiply-and-add operations; parallel architecture; power dissipation; single chip neural network photon trigger; synaptic weights downloading; vector classification; very high speed applications; Analog computers; Application specific integrated circuits; CMOS integrated circuits; Concurrent computing; High speed integrated circuits; Neural networks; Neurons; Physics; Very high speed integrated circuits; Very large scale integration;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Microelectronics for Neural Networks and Fuzzy Systems, 1994., Proceedings of the Fourth International Conference on
Conference_Location :
Turin
Print_ISBN :
0-8186-6710-9
Type :
conf
DOI :
10.1109/ICMNN.1994.593738
Filename :
593738
Link To Document :
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