Ferroelectric FET analog synapse for acceleration of deep neural network training
University of Notre Dame · Arizona State University
Abstract
The memory requirement of at-scale deep neural networks (DNN) dictate that synaptic weight values be stored and updated in off-chip memory such as DRAM, limiting the energy efficiency and training time. Monolithic cross-bar / pseudo cross-bar arrays with analog non-volatile memories capable of storing and updating weights on-chip offer the possibility of accelerating DNN training. Here, we harness the dynamics of voltage controlled partial polarization switching in ferroelectric-FETs (FeFET) to demonstrate such an analog synapse. We develop a transient Presiach model that accurately predicts minor loop trajectories and remnant polarization charge (P r ) for arbitrary pulse width, voltage, and history. We…
Citation impact
- FWCI
- 21.04
- Percentile
- 100%
- References
- 9
Authors
7Topics & keywords
- Computer science
- Dram
- Neuromorphic engineering
- Artificial neural network
- Electrical engineering
- Artificial intelligence
- Engineering
- Computer hardware
- Affordable and clean energy