A Geometrical Optimization Rule of the Synaptic Pass-Transistor for a Low Power Analog Accelerator

Autor: Danyoung Cha, Yeonsu Kang, Soobin Lee, Sungsik Lee
Jazyk: angličtina
Rok vydání: 2022
Předmět:
Zdroj: IEEE Access, Vol 10, Pp 35120-35130 (2022)
Druh dokumentu: article
ISSN: 2169-3536
DOI: 10.1109/ACCESS.2022.3162929
Popis: We present a simulation framework on a geometrical optimization rule of the synaptic pass-transistor (SPT) for a low power analog accelerator (AA). Here, the SPT is a synaptic transistor (Syn-Tr) in series with a load resistor to be scaled with respect to a geometrical ratio between a channel length and width of the Syn-Tr. When only the load resistance is increased for the reduction of the power consumption of the SPT, a synaptic characteristics (e.g. a synaptic dynamic ratio, DRw) is hard to be maintained. To overcome this, the channel geometrical ratio and scaling factor of the load resistance are required to be increased equally, thus a geometrical optimization rule. Here, the load resistance is equivalent to a geometric mean where two extreme cases of the synaptic full facilitation and full depression are considered. To verify the proposed rule, we perform a semiconductor device simulation for a static and pulsed characteristics of the SPT. When the SPT is scaled based on the geometrical optimization rule, from the simulation results, it is found that the static-power consumption is decreased while maintaining the DRw. As a trade-off relation, however, the noise power-spectral-density is found to be increased due to a higher thermal noise associated with a higher total resistance of the scaled SPT. Here, the increased noise power-spectral-density of a single SPT may affect the performance of the AA based on the SPT-array, so we also show a crossbar simulation, checking the classification accuracy against a standard dataset (e.g. MNIST).
Databáze: Directory of Open Access Journals