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  4. A flexible and fast digital twin for RRAM systems applied for training resilient neural networks
 
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2024
Journal Article
Title

A flexible and fast digital twin for RRAM systems applied for training resilient neural networks

Abstract
Resistive Random Access Memory (RRAM) has gained considerable momentum due to its non-volatility and energy efficiency. Material and device scientists have been proposing novel material stacks that can mimic the “ideal memristor” which can deliver performance, energy efficiency, reliability and accuracy. However, designing RRAM-based systems is challenging. Engineering a new material stack, designing a device, and experimenting takes significant time for material and device researchers. Furthermore, the acceptability of the device is ultimately decided at the system level. We see a gap here where there is a need for facilitating material and device researchers with a “push button” modeling framework that allows to evaluate the efficacy of the device at system level during early device design stages. Speed, accuracy, and adaptability are the fundamental requirements of this modelling framework. In this paper, we propose a digital twin (DT)-like modeling framework that automatically creates RRAM device models from device measurement data. Furthermore, the model incorporates the peripheral circuit to ensure accurate energy and performance evaluations. We demonstrate the DT generation and DT usage for multiple RRAM technologies and applications and illustrate the achieved performance of our GPU implementation. We conclude with the application of our modeling approach to measurement data from two distinct fabricated devices, validating its effectiveness in a neural network processing an Electrocardiogram (ECG) dataset and incorporating Fault Aware Training (FAT).
Author(s)
Fritscher, Markus
Institut fur innovative Mikroelektronik (IHP)
Singh, Simranjeet
Indian Institute of Technology Bombay
Rizzi, Tommaso
Institut fur innovative Mikroelektronik (IHP)
Baroni, Andrea
Institut fur innovative Mikroelektronik (IHP)
Reiser, Daniel
Universität Rostock
Mallah, Maen
Fraunhofer-Institut für Integrierte Schaltungen IIS  
Hartmann, David
Fraunhofer-Institut für Integrierte Schaltungen IIS  
Bende, Ankit
Forschungszentrum Jülich GmbH
Kempen, Tim
Forschungszentrum Jülich GmbH
Uhlmann, Max
Institut fur innovative Mikroelektronik (IHP)
Kahmen, Gerhard
Institut fur innovative Mikroelektronik (IHP)
Fey, Dietmar
Friedrich-Alexander-Universität Erlangen-Nürnberg
Rana, Vikas
Indian Institute of Technology Bombay
Menzel, Stephan Bernhard
Forschungszentrum Jülich GmbH
Reichenbach, Marc
Fraunhofer-Institut für Integrierte Schaltungen IIS  
Krstič, Miloš D.
Institut fur innovative Mikroelektronik (IHP)
Merchant, Farhad
Newcastle University
Wenger, Christian
Institut fur innovative Mikroelektronik (IHP)
Journal
Scientific Reports
Funder
Friedrich-Alexander-Universität Erlangen-Nürnberg
Open Access
DOI
10.1038/s41598-024-73439-z
Additional link
Full text
Language
English
Fraunhofer-Institut für Integrierte Schaltungen IIS  
Keyword(s)
  • ANN

  • Digital twin

  • FAT

  • GPU

  • Modelling

  • RRAM

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