Title :
An analog neural hardware implementation using charge-injection multipliers and neutron-specific gain control
Author :
Massengill, Lloyd W. ; Mundie, David B.
Author_Institution :
Dept. of Electr. Eng., Vanderbilt Univ., Nashville, TN, USA
fDate :
5/1/1992 12:00:00 AM
Abstract :
A neural network IC based on a dynamic charge injection is described. The hardware design is space and power efficient, and achieves massive parallelism of analog inner products via charge-based multipliers and spatially distributed summing buses. Basic synaptic cells are constructed of exponential pulse-decay modulation (EPDM) dynamic injection multipliers operating sequentially on propagating signal vectors and locally stored analog weights. Individually adjustable gain controls on each neutron reduce the effects of limited weight dynamic range. A hardware simulator/trainer has been developed which incorporates the physical (nonideal) characteristics of actual circuit components into the training process, thus absorbing nonlinearities and parametric deviations into the macroscopic performance of the network. Results show that charge-based techniques may achieve a high degree of neural density and throughput using standard CMOS processes
Keywords :
gain control; multiplying circuits; neural nets; analog neural hardware implementation; charge-based multipliers; charge-injection multipliers; exponential pulse-decay modulation; limited weight dynamic range; macroscopic performance; neural density; neural network IC; neutron-specific gain control; parallelism; propagating signal vectors; spatially distributed summing buses; synaptic cells; throughput; CMOS process; Circuit simulation; Dynamic range; Gain control; Neural network hardware; Neural networks; Neutrons; Pulse modulation; Space charge; Throughput;
Journal_Title :
Neural Networks, IEEE Transactions on