Self-Adaptive Spike-Time-Dependent Plasticity of Metal-Oxide Memristors

被引:0
|
作者
M. Prezioso
F. Merrikh Bayat
B. Hoskins
K. Likharev
D. Strukov
机构
[1] University of California at Santa Barbara,Department of Electrical and Computer Engineering
[2] Stony Brook University,Department of Physics and Astronomy
来源
关键词
D O I
暂无
中图分类号
学科分类号
摘要
Metal-oxide memristors have emerged as promising candidates for hardware implementation of artificial synapses – the key components of high-performance, analog neuromorphic networks - due to their excellent scaling prospects. Since some advanced cognitive tasks require spiking neuromorphic networks, which explicitly model individual neural pulses (“spikes”) in biological neural systems, it is crucial for memristive synapses to support the spike-time-dependent plasticity (STDP). A major challenge for the STDP implementation is that, in contrast to some simplistic models of the plasticity, the elementary change of a synaptic weight in an artificial hardware synapse depends not only on the pre-synaptic and post-synaptic signals, but also on the initial weight (memristor’s conductance) value. Here we experimentally demonstrate, for the first time, an STDP behavior that ensures self-adaptation of the average memristor conductance, making the plasticity stable, i.e. insensitive to the initial state of the devices. The experiments have been carried out with 200-nm Al2O3/TiO2−x memristors integrated into 12 × 12 crossbars. The experimentally observed self-adaptive STDP behavior has been complemented with numerical modeling of weight dynamics in a simple system with a leaky-integrate-and-fire neuron with a random spike-train input, using a compact model of memristor plasticity, fitted for quantitatively correct description of our memristors.
引用
收藏
相关论文
共 50 条
  • [1] Self-Adaptive Spike-Time-Dependent Plasticity of Metal-Oxide Memristors
    Prezioso, M.
    Bayat, F. Merrikh
    Hoskins, B.
    Likharev, K.
    Strukov, D.
    [J]. SCIENTIFIC REPORTS, 2016, 6
  • [2] Self-organizing dual coding based on spike-time-dependent plasticity
    Masuda, N
    Aihara, K
    [J]. NEURAL COMPUTATION, 2004, 16 (03) : 627 - 663
  • [3] Floating Gate Synapses With Spike-Time-Dependent Plasticity
    Ramakrishnan, Shubha
    Hasler, Paul E.
    Gordon, Christal
    [J]. IEEE TRANSACTIONS ON BIOMEDICAL CIRCUITS AND SYSTEMS, 2011, 5 (03) : 244 - 252
  • [4] Emergence of synfire chains with triphasic spike-time-dependent plasticity
    Amelia Waddington
    Peter A Appleby
    Marc deKamps
    Netta Cohen
    [J]. BMC Neuroscience, 12 (Suppl 1)
  • [5] The spike-time-dependent plasticity model of retrieval induced forgetting
    Sikstrom, Sverker
    Waldhauser, Gerd
    Johansson, Mikael
    [J]. INTERNATIONAL JOURNAL OF PSYCHOLOGY, 2012, 47 : 571 - 571
  • [6] Reinforcement learning, spike-time-dependent plasticity, and the BCM rule
    Baras, Dorit
    Meir, Ron
    [J]. NEURAL COMPUTATION, 2007, 19 (08) : 2245 - 2279
  • [7] Understanding spike-time-dependent plasticity: A biologically motivated computational model
    Hartley, Matthew
    Taylor, Neill
    Taylor, John
    [J]. NEUROCOMPUTING, 2006, 69 (16-18) : 2005 - 2016
  • [8] Spike-time-dependent plasticity rule in memristor models for circuit design
    Mouna Elhamdaoui
    Faten Ouaja Rziga
    Khaoula Mbarek
    Kamel Besbes
    [J]. Journal of Computational Electronics, 2022, 21 : 1038 - 1047
  • [9] Spike-time-dependent plasticity rule in memristor models for circuit design
    Elhamdaoui, Mouna
    Rziga, Faten Ouaja
    Mbarek, Khaoula
    Besbes, Kamel
    [J]. JOURNAL OF COMPUTATIONAL ELECTRONICS, 2022, 21 (04) : 1038 - 1047
  • [10] Spike sorting using non-volatile metal-oxide memristors
    Gupta I.
    Serb A.
    Khiat A.
    Trapatseli M.
    Prodromakis T.
    [J]. Faraday Discussions, 2019, 213 : 511 - 520