2022
DOI: 10.1002/pssr.202100616
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Layer‐Dependent Effects of Interfacial Phase‐Change Memory for an Artificial Synapse

Abstract: Recent research on artificial intelligence (AI) has focused on the computational performance of the human brain as a model to process large amounts of data to overcome the limits of current technology. [1,2] This is because the conventional von-Neumann architecture used to operate current AI algorithms causes a performance bottleneck between the computation required and the capacity of memory units. To achieve performance comparable to the biological brain using electronic devices, neuromorphic computing syste… Show more

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Cited by 3 publications
(2 citation statements)
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“…This is first well illustrated through the paper of Zhou et al on the use of AIST‐based photonic memory cells as a promising platform for artificial neural networks and neuromorphic photonic computing hardware. [ 1 ] A similar goal has also motivated the work presented by Kang et al [ 2 ] showing that van der Waals‐layered [(GeTe) 1nm /(Sb 2 Te 3 ) 4nm ] n =4 and 8 super‐lattices, also commonly called iPCM devices, can act as synaptic devices featuring gradual and symmetric conductance update characteristics and can implement multilevel characteristics with quite stable operation. Thus, these results show the potential of iPCMs for applications in neuromorphic computing with high accuracy.…”
mentioning
confidence: 87%
“…This is first well illustrated through the paper of Zhou et al on the use of AIST‐based photonic memory cells as a promising platform for artificial neural networks and neuromorphic photonic computing hardware. [ 1 ] A similar goal has also motivated the work presented by Kang et al [ 2 ] showing that van der Waals‐layered [(GeTe) 1nm /(Sb 2 Te 3 ) 4nm ] n =4 and 8 super‐lattices, also commonly called iPCM devices, can act as synaptic devices featuring gradual and symmetric conductance update characteristics and can implement multilevel characteristics with quite stable operation. Thus, these results show the potential of iPCMs for applications in neuromorphic computing with high accuracy.…”
mentioning
confidence: 87%
“…[5][6][7][8][9][10][11] Since there is an increasing need for processing information, researchers have extended this promising technology to the field of neuromorphic computing because of the perfect performance of the phase-change memory, such as multilevel possibility, large high/low resistance ratio, nonvolatility, and high reliability. [12][13][14][15][16][17][18][19][20] Among these technologies, phase change materials are undoubtedly the most important parameters to realize the functions to store or process information. Conventionally, GeSbTe-based alloys, such as Ge 2 Sb 2 Te 5 , are one of the chalcogenides widely used in phase-change memory or synapse.…”
Section: Introductionmentioning
confidence: 99%