학술논문

Ionizing Radiation Effects in SONOS-Based Neuromorphic Inference Accelerators
Document Type
Periodical
Source
IEEE Transactions on Nuclear Science IEEE Trans. Nucl. Sci. Nuclear Science, IEEE Transactions on. 68(5):762-769 May, 2021
Subject
Nuclear Engineering
Bioengineering
SONOS devices
Electron traps
Ionizing radiation
Neural networks
Mathematical model
Logic gates
Ion accelerators
Charge trap memory
inference accelerators
ionizing radiation
neural networks
neuromorphic computing
silicon-oxide-nitride-oxide-silicon (SONOS)
total ionizing dose (TID)
Language
ISSN
0018-9499
1558-1578
Abstract
We evaluate the sensitivity of neuromorphic inference accelerators based on silicon-oxide-nitride-oxide-silicon (SONOS) charge trap memory arrays to total ionizing dose (TID) effects. Data retention statistics were collected for 16 Mbit of 40-nm SONOS digital memory exposed to ionizing radiation from a Co-60 source, showing good retention of the bits up to the maximum dose of 500 krad(Si). Using this data, we formulate a rate-equation-based model for the TID response of trapped charge carriers in the ONO stack and predict the effect of TID on intermediate device states between “program” and “erase.” This model is then used to simulate arrays of low-power, analog SONOS devices that store 8-bit neural network weights and support in situ matrix–vector multiplication. We evaluate the accuracy of the irradiated SONOS-based inference accelerator on two image recognition tasks—CIFAR-10 and the challenging ImageNet data set—using state-of-the-art convolutional neural networks, such as ResNet-50. We find that across the data sets and neural networks evaluated, the accelerator tolerates a maximum TID between 10 and 100 krad(Si), with deeper networks being more susceptible to accuracy losses due to TID.