Binary synaptic connections based on memory switching in a-Si:H for artificial neural networks
Abstract
A scheme for nonvolatile associative electronic memory storage with high information storage density is proposed which is based on neural network models and which uses a matrix of two-terminal passive interconnections (synapses). It is noted that the massive parallelism in the architecture would require the ON state of a synaptic connection to be unusually weak (highly resistive). Memory switching using a-Si:H along with ballast resistors patterned from amorphous Ge-metal alloys is investigated for a binary programmable read only memory matrix. The fabrication of a 1600 synapse test array of uniform connection strengths and a-Si:H switching elements is discussed.
- Publication:
-
NASA STI/Recon Technical Report A
- Pub Date:
- 1987
- Bibcode:
- 1987STIA...8840798T
- Keywords:
-
- Amorphous Semiconductors;
- Memory (Computers);
- Metal Hydrides;
- Neural Nets;
- Silicon;
- Synapses;
- Artificial Intelligence;
- Associative Processing (Computers);
- Binary Data;
- Germanium Alloys;
- Massively Parallel Processors;
- Switching Circuits;
- Electronics and Electrical Engineering