In-Field Monitoring and Preventing Read Disturb Faults in RRAMs
Hanzhi Xun (TU Delft - Computer Engineering)
M. Fieback (TU Delft - Computer Engineering)
S. Yuan (TU Delft - Computer Engineering)
Changhao Wang (Politecnico di Torino)
Erbing Hua (TU Delft - Quantum Circuit Architectures and Technology)
Hassen Aziza (Aix Marseille Université)
Rajendra Bishnoi (TU Delft - Computer Engineering)
M. Taouil (TU Delft - Computer Engineering, CognitiveIC)
Said Hamdioui (TU Delft - Computer Engineering, CognitiveIC)
More Authors (External organisation)
More Info
expand_more
Other than for strictly personal use, it is not permitted to download, forward or distribute the text or part of it, without the consent of the author(s) and/or copyright holder(s), unless the work is under an open content license such as Creative Commons.
Abstract
Addressing non-idealities in Resistive Random Access Memories (RRAMs) is crucial for their successful commercialization. For example, the inherent resistance drift that occurs during consecutive read operations can induce Read Disturb Faults (RDF), leading to functional errors. This paper analyzes and characterizes the resistance drift and the RDF based on data measurements and presents a physics-based RRAM compact model that incorporates these non-idealities. Additionally, an in-field mitigation scheme is proposed, leveraging bidirectional read operations to balance the resistance. The scheme is implemented and validated through circuit simulations, both for RRAM used as memory and for RRAM-based computation-in-memory microarchitectures for deep neural networks. The results demonstrate that RRAM without any mitigation scheme can start failing after 8,000 consecutive reads, while our mitigation scheme ensures that the memory remains functional even after 106 consecutive reads. Furthermore, the results indicate that using the MNIST dataset as a case study, the accuracy can drop significantly from 86% to as low as 12.5% without any mitigation scheme. In contrast, the proposed mitigation scheme improves this accuracy up to 84.2%.
Files
File under embargo until 01-01-2026