Publisher DOI: 10.48550/arXiv.2307.06693
Title: Ageing analysis of embedded SRAM on a large-scale testbed using machine learning
Language: English
Authors: Lanzieri Rodriguez, Leandro 
Kietzmann, Peter 
Fey, Goerschwin 
Schlarb, Holger 
Schmidt, Thomas C.  
Issue Date: 13-Jul-2023
Publisher: Arxiv.org
Journal or Series Name: De.arxiv.org 
Is supplemented by: 10.6084/m9.figshare.22693495.v1
Abstract: 
Ageing detection and failure prediction are essential in many Internet of Things (IoT) deployments, which operate huge quantities of embedded devices unattended in the field for years. In this paper, we present a large-scale empirical analysis of natural SRAM wear-out using 154 boards from a general-purpose testbed. Starting from SRAM initialization bias, which each node can easily collect at startup, we apply various metrics for feature extraction and experiment with common machine learning methods to predict the age of operation for this node. Our findings indicate that even though ageing impacts are subtle, our indicators can well estimate usage times with an R² score of 0.77 and a mean error of 24% using regressors, and with an F1 score above 0.6 for classifiers applying a six-months resolution.
URI: http://hdl.handle.net/20.500.12738/14863
Review status: Only preprints: This version has not yet been reviewed
Institute: Department Informatik 
Fakultät Technik und Informatik 
Type: Preprint
Additional note: L. Lanzieri, P. Kietzmann, G. Fey, H. Schlarb, T. C. Schmidt. Ageing Analysis of Embedded SRAM on a Large-Scale Testbed Using Machine Learning. In Proc. of DSD, IEEE, 2023.
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