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  4. A Compact One-Transistor-Multiple-RRAM Characterization Platform
 
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2025
Journal Article
Title

A Compact One-Transistor-Multiple-RRAM Characterization Platform

Abstract
Emerging non-volatile memories (eNVMs) such as resistive random-access memory (RRAM) offer an alternative solution compared to standard CMOS technologies for implementation of in-memory computing (IMC) units used in artificial neural network (ANN) applications. Existing measurement equipment for device characterisation and programming of such eNVMs are usually bulky and expensive. In this work, we present a compact size characterization platform for RRAM devices, including a custom programming unit IC that occupies less than 1mm2 of silicon area. Our platform is capable of testing one-transistor-one-RRAM (1T1R) as well as one-transistor-multiple-RRAM (1TNR) cells. Thus, to the best knowledge of the authors, this is the first demonstration of an integrated programming interface for 1TNR cells. The 1T2R IMC cells were fabricated in the IHP’s 130nm BiCMOS technology and, in combination with other parts of the platform, are able to provide more synaptic weight resolution for ANN model applications while simultaneously decreasing the energy consumption by 50%. The platform can generate programming voltage pulses with a 3.3mV accuracy. Using the incremental step pulse with verify algorithm (ISPVA) we achieve 5non-overlapping resistive states per 1T1R device. Based on those 1T1R base states we measure 15 resulting state combinations in the 1T2R cells.
Author(s)
Uhlmann, Max
Institut fur innovative Mikroelektronik (IHP)
Krysik, Milosz
Fraunhofer-Einrichtung für Energieinfrastrukturen und Geotechnologien IEG  
Wen, Jianan
Institut fur innovative Mikroelektronik (IHP)
Frohberg, Max
Institut fur innovative Mikroelektronik (IHP)
Baroni, Andrea
Institut fur innovative Mikroelektronik (IHP)
Reddy, Keerthi Dorai Swamy
Institut fur innovative Mikroelektronik (IHP)
Pérez, Eduardo
Institut fur innovative Mikroelektronik (IHP)
Ostrovskyy, Philip
Institut fur innovative Mikroelektronik (IHP)
Piotrowski, Krzysztof
Institut fur innovative Mikroelektronik (IHP)
Carta, Corrado
Institut fur innovative Mikroelektronik (IHP)
Wenger, Christian
Institut fur innovative Mikroelektronik (IHP)
Kahmen, Gerhard
Institut fur innovative Mikroelektronik (IHP)
Journal
IEEE Transactions on Circuits and Systems I Regular Papers  
Funder
Deutsche Forschungsgemeinschaft  
DOI
10.1109/TCSI.2025.3555234
Language
English
Fraunhofer-Einrichtung für Energieinfrastrukturen und Geotechnologien IEG  
Keyword(s)
  • Artificial neural network

  • electrical device characterization

  • memristive device

  • neural accelerator

  • RRAM

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