A Reconfigurable Spiking Neural Network Computing-in-memory Processor using 1T1C eDRAM for Enhanced System-level Efficiency

Spiking Neural Network (SNN) Computing-In-Memory (CIM) achieves high macro-level energy efficiency but struggles with system-level efficiency due to excessive external memory access (EMA) caused by intermediate activation memory demands. To address this, a high-capacity SNN-CIM capable of managing l...

Full description

Saved in:
Bibliographic Details
Published inJournal of semiconductor technology and science Vol. 25; no. 4; pp. 355 - 362
Main Authors Lee, Sangmyoung, Kim, Seryeong, Kim, Soyeon, Um, Soyeon, Kim, Sangjin, Kim, Sanyeob, Jo, Wooyoung
Format Journal Article
LanguageEnglish
Published 대한전자공학회 31.08.2025
Subjects
Online AccessGet full text

Cover

Loading…
More Information
Summary:Spiking Neural Network (SNN) Computing-In-Memory (CIM) achieves high macro-level energy efficiency but struggles with system-level efficiency due to excessive external memory access (EMA) caused by intermediate activation memory demands. To address this, a high-capacity SNN-CIM capable of managing large weight loads is essential. This paper introduces a high-density 1T1C eDRAM-based SNN-CIM processor that significantly enhances system-level energy efficiency through two key features: a high-density, low-power Reconfigurable Neuro-Cell Array (ReNCA) that reuses the 1T1C cell array and employs a charge pump, achieving a 41% area and 90% power reduction and a reconfigurable CIM architecture with dual-mode ReNCA and Dynamic Adjustable Neuron Link (DAN Link) to optimize EMA for activations and weights. These innovations collectively improve system-level energy efficiency by 10×, setting a new benchmark for performance. KCI Citation Count: 0
ISSN:1598-1657
2233-4866
DOI:10.5573/JSTS.2025.25.5.355