| Literature DB >> 33804188 |
Panagiotis Bousoulas1, Charalampos Papakonstantinopoulos1, Stavros Kitsios1, Konstantinos Moustakas1, Georgios Ch Sirakoulis2, Dimitris Tsoukalas1.
Abstract
The quick growth of information technology has necessitated the need for developing novel electronic devices capable of performing novel neuromorphic computations with low power consumption and a high degree of accuracy. In order to achieve this goal, it is of vital importance to devise artificial neural networks with inherent capabilities of emulating various synaptic properties that play a key role in the learning procedures. Along these lines, we report here the direct impact of a dense layer of Pt nanoparticles that plays the role of the bottom electrode, on the manifestation of the bipolar switching effect within SiO2-based conductive bridge memories. Valuable insights regarding the influence of the thermal conductivity value of the bottom electrode on the conducting filament growth mechanism are provided through the application of a numerical model. The implementation of an intermediate switching transition slope during the SET transition permits the emulation of various artificial synaptic functionalities, such as short-term plasticity, including paired-pulsed facilitation and paired-pulse depression, long-term plasticity and four different types of spike-dependent plasticity. Our approach provides valuable insights toward the development of multifunctional synaptic elements that operate with low power consumption and exhibit biological-like behavior.Entities:
Keywords: conductance; conducting filament; diffusivity; nanoparticles; plasticity; resistive memories; synapses
Year: 2021 PMID: 33804188 PMCID: PMC7999862 DOI: 10.3390/mi12030306
Source DB: PubMed Journal: Micromachines (Basel) ISSN: 2072-666X Impact factor: 2.891