Litcius/Paper detail

Multilayer redox-based HfOx/Al2O3/TiO2 memristive structures for neuromorphic computing

Seongae Park, Benjamin Spetzler, Tzvetan Ivanov, Martin Ziegler

2022Scientific Reports19 citationsDOIOpen Access PDF

Abstract

Abstract Redox-based memristive devices have shown great potential for application in neuromorphic computing systems. However, the demands on the device characteristics depend on the implemented computational scheme and unifying the desired properties in one stable device is still challenging. Understanding how and to what extend the device characteristics can be tuned and stabilized is crucial for developing application specific designs. Here, we present memristive devices with a functional trilayer of HfO x /Al 2 O 3 /TiO 2 tailored by the stoichiometry of HfO x ( x = 1.8, 2) and the operating conditions. The device properties are experimentally analyzed, and a physics-based device model is developed to provide a microscopic interpretation and explain the role of the Al 2 O 3 layer for a stable performance. Our results demonstrate that the resistive switching mechanism can be tuned from area type to filament type in the same device, which is well explained by the model: the Al 2 O 3 layer stabilizes the area-type switching mechanism by controlling the formation of oxygen vacancies at the Al 2 O 3 /HfO x interface with an estimated formation energy of ≈ 1.65 ± 0.05 eV. Such stabilized area-type devices combine multi-level analog switching, linear resistance change, and long retention times (≈ 10 7 –10 8 s) without external current compliance and initial electroforming cycles. This combination is a significant improvement compared to previous bilayer devices and makes the devices potentially interesting for future integration into memristive circuits for neuromorphic applications.

Topics & Concepts

Neuromorphic engineeringRedoxComputer scienceMaterials scienceComputer architectureArtificial intelligenceArtificial neural networkMetallurgyAdvanced Memory and Neural ComputingNeuroscience and Neural EngineeringPhotoreceptor and optogenetics research