기본 정보
연구 분야
프로젝트
발행물
구성원
article|
인용수 0
·2026
Data Flow-Aware Weight Remapping for Efficient Fault Tolerance in ReRAM-Based Accelerators
Hyeonsu Bang, Kang Eun Jeon, Jong Hwan Ko
초록

Resistive random-access memory (ReRAM)-based in-memory computing (IMC) systems offer significant advantages for efficient neural network inference. However, these systems are vulnerable to stuck-at faults (SAFs), which degrade inference accuracy-a challenge that becomes more pronounced in multilevel cell (MLC) configurations. A conventional fault mitigation technique, array-wise weight remapping (AWR), addresses SAFs but incurs significant hardware overhead. To overcome these limitations, we propose pseudo-array-wise weight remapping (PAWR), a novel method that integrates mux-wise weight remapping (MWR) and mux group remapping (MGR) to achieve costefficient fault tolerance. Experimental results demonstrate that even at a high 20% SAF rate, PAWR achieves accuracies within 0.7% of AWR, while significantly reducing area overhead by 86.5% and energy overhead by 72.4% compared to AWR.

키워드
Fault toleranceData lossRedundancy (engineering)Reliability (semiconductor)Fault (geology)
타입
article
IF / 인용수
- / 0
게재 연도
2026