Neural network accommodating parallel synaptic weight adjustment

Electrical transmission or interconnection systems – Nonlinear reactor systems – Parametrons

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395 23, G06G 712

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active

052472060

ABSTRACT:
A neural network providing correlation learning in a synapse cell coupled to a circuit for parallel implementation of weight adjustment provides the learning portion of the synaptic operation and includes a floating gate device having a corresponding floating gate member that stores the connection weight of the cell. Parallel weight adjustments are performed in a single operational cycle utilizing floating gate technology and control signals that facilitate programming/erasing operations.

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Hollis et al., "Artificial Neurons Using Analog Multipliers", Dept. Elect & Computer Eng., N.C. State U, Raleigh, N.C.

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