기본 정보
연구 분야
프로젝트
논문
구성원
article|
인용수 0
·2025
A Self-Recovery Scheme for Fault-Tolerant and Side-Channel Resistant Systolic Arrays
Casper N. Bang, Seokhyun Yoon, Youngwoo Lee
초록

Deep Neural Network (DNN) accelerators are being actively developed with customized architectures for diverse applications. As they are increasingly adopted in security-sensitive and mission-critical systems, security and reliability have become critical requirements. However, satisfying both remains challenging. This paper presents a self-recoverable hardware architecture that achieves fault tolerance and side-channel resistance through symmetric dual-rail precharge logic (DPL). The proposed design maintains computational integrity under various fault scenarios while leveraging secure signal balancing inherent to dual-path execution. It enhances both reliability and security without compromising performance, incurring only a 0.20% increase in power consumption and a 0.89% increase in register usage, making it suitable for deployment in safety-critical and adversarial environments.

키워드
Fault toleranceScheme (mathematics)Computer scienceChannel (broadcasting)CardiologyParallel computingComputer networkMedicineDistributed computingMathematics
타입
article
IF / 인용수
- / 0
게재 연도
2025

주식회사 디써클

대표 장재우,이윤구서울특별시 강남구 역삼로 169, 명우빌딩 2층 (TIPS타운 S2)대표 전화 0507-1312-6417이메일 info@rndcircle.io사업자등록번호 458-87-03380호스팅제공자 구글 클라우드 플랫폼(GCP)

© 2026 RnDcircle. All Rights Reserved.