Back-End-of-Line Integration of Synaptic Weights using HfO2/ZrO2 Nanolaminates

Research output: Contribution to journalResearch articleContributedpeer-review

Contributors

  • Laura Bégon-Lours - , IBM Research Zurich, ETH Zurich (Author)
  • Stefan Slesazeck - , NaMLab - Nanoelectronic materials laboratory gGmbH (Author)
  • Donato Francesco Falcone - , IBM Research Zurich (Author)
  • Viktor Havel - , NaMLab - Nanoelectronic materials laboratory gGmbH (Author)
  • Ruben Hamming-Green - , IBM Research Zurich, University of Groningen (Author)
  • Marina Martinez Fernandez - , IBM Research Zurich (Author)
  • Elisabetta Morabito - , IBM Research Zurich (Author)
  • Thomas Mikolajick - , Chair of Nanoelectronics, NaMLab - Nanoelectronic materials laboratory gGmbH (Author)
  • Bert Jan Offrein - , IBM Research Zurich (Author)

Abstract

In artificial neural networks, the “synaptic weights” connecting the neurons are adjusted during the training. Beyond silicon, functionalizing the back-end-of-line (BEOL) of CMOS circuits with novel materials is a key enabler for deploying neural network accelerators. The hardware implementation of the synaptic weights requires linear and reprogrammable resistive elements. In ferroelectric tunnel junctions, the resistance is programmed by controlling the configuration of the ferroelectric domains with electrical pulses. From ferroelectric HfZrO4 to HfO2–ZrO2 nanolaminates (NL), the crystallization temperature lowers below the upper limit of 400 °C required for CMOS BEOL. The device footprint is reduced, and the maximum-to-minimum conductance ratio increases from 7 to 32. Operated with pulses in the ultra-fast (20 ns) and biological (500 µs) timescales, the synaptic plasticity exhibits several regimes. Dynamic hysteresis mode characterization after up to 1011 switching cycles indicates the coexistence of ferroelectric and non-ferroelectric effects such as defect rearrangement. Temperature-dependent transport measurements in the Ohmic (linear) regime support these conclusions. Multi-level resistive switching is achieved in HfO2–ZrO2 NL co-integrated to CMOS in the BEOL. 1T-1R operation is demonstrated, paving the way for hardware implementation of synaptic weights for in-memory neuromorphic computing.

Details

Original languageEnglish
Article number2300649
JournalAdvanced electronic materials
Volume10
Issue number5
Publication statusPublished - May 2024
Peer-reviewedYes

External IDs

ORCID /0000-0003-3814-0378/work/160050184

Keywords

Keywords

  • back-end-of-line, CMOS, ferroelectrics, hafnia, nanolaminates, superlattices, synaptic weights

Library keywords