Improved resistive switching and synaptic characteristics using Ar plasma irradiation on the Ti/HfO2 interface
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A. Sokolov | Yu‐Rim Jeon | Sohyeon Kim | B. Ku | C. Choi | Y. Abbas | Yu-Rim Jeon
[1] G. Zha,et al. The resistive switching characteristics of Ni-doped HfO film and its application as a synapse , 2018, Journal of Alloys and Compounds.
[2] Yawar Abbas,et al. Engineering synaptic characteristics of TaOx/HfO2 bi-layered resistive switching device , 2018, Nanotechnology.
[3] Jang‐Sik Lee,et al. Flexible Artificial Synaptic Devices Based on Collagen from Fish Protein with Spike‐Timing‐Dependent Plasticity , 2018, Advanced Functional Materials.
[4] Chang Hwan Choi,et al. Influence of Oxygen Vacancies in ALD HfO 2-x Thin Films on Non-Volatile Resistive Switching Phenomena with a Ti/HfO 2-x /Pt Structure , 2018 .
[5] A. Sokolov,et al. Interface engineering of ALD HfO2-based RRAM with Ar plasma treatment for reliable and uniform switching behaviors , 2018 .
[6] Jang-Sik Lee,et al. Short-Term Plasticity and Long-Term Potentiation in Artificial Biosynapses with Diffusive Dynamics. , 2018, ACS nano.
[7] Yawar Abbas,et al. Compliance-Free, Digital SET and Analog RESET Synaptic Characteristics of Sub-Tantalum Oxide Based Neuromorphic Device , 2018, Scientific Reports.
[8] Byung-Gook Park,et al. Analog Synaptic Behavior of a Silicon Nitride Memristor. , 2017, ACS applied materials & interfaces.
[9] Youngjune Park,et al. Artificial Synapses with Short- and Long-Term Memory for Spiking Neural Networks Based on Renewable Materials. , 2017, ACS nano.
[10] H. Hwang,et al. Linking Conductive Filament Properties and Evolution to Synaptic Behavior of RRAM Devices for Neuromorphic Applications , 2017, IEEE Electron Device Letters.
[11] Resistance Switching Characteristics Induced by O2 Plasma Treatment of an Indium Tin Oxide Film for Use as an Insulator in Resistive Random Access Memory. , 2017, ACS applied materials & interfaces.
[12] Hyunsang Hwang,et al. TiOx-Based RRAM Synapse With 64-Levels of Conductance and Symmetric Conductance Change by Adopting a Hybrid Pulse Scheme for Neuromorphic Computing , 2016, IEEE Electron Device Letters.
[13] Chi Jung Kang,et al. Resistive Switching Characteristics of Tantalum Oxide with Different Top Electrodes , 2016 .
[14] Miaoqiang Lyu,et al. Bifunctional resistive switching behavior in an organolead halide perovskite based Ag/CH3NH3PbI3−xClx/FTO structure , 2016 .
[15] Ru Huang,et al. Engineering incremental resistive switching in TaOx based memristors for brain-inspired computing. , 2016, Nanoscale.
[16] P. McIntyre,et al. Effects of Titanium Layer Oxygen Scavenging on the High-k/InGaAs Interface. , 2016, ACS applied materials & interfaces.
[17] H. Hwang,et al. Improved Synaptic Behavior Under Identical Pulses Using AlOx/HfO2 Bilayer RRAM Array for Neuromorphic Systems , 2016, IEEE Electron Device Letters.
[18] Chi Jung Kang,et al. Resistive switching characteristics in hafnium oxide, tantalum oxide and bilayer devices , 2016 .
[19] Jang‐Sik Lee,et al. Reliable resistive switching memory based on oxygen-vacancy-controlled bilayer structures , 2016 .
[20] Wei Lu,et al. Utilizing multiple state variables to improve the dynamic range of analog switching in a memristor , 2015 .
[21] CF4 plasma treatment of tungsten bottom electrode of Cu/SiOx/W structure for resistive memory applications , 2015 .
[22] Jacques-Olivier Klein,et al. Spin-Transfer Torque Magnetic Memory as a Stochastic Memristive Synapse for Neuromorphic Systems , 2015, IEEE Transactions on Biomedical Circuits and Systems.
[23] Yoon-Ha Jeong,et al. Optimization of Conductance Change in Pr1–xCaxMnO3-Based Synaptic Devices for Neuromorphic Systems , 2015, IEEE Electron Device Letters.
[24] Sungho Kim,et al. Experimental demonstration of a second-order memristor and its ability to biorealistically implement synaptic plasticity. , 2015, Nano letters.
[25] Farnood Merrikh-Bayat,et al. Training and operation of an integrated neuromorphic network based on metal-oxide memristors , 2014, Nature.
[26] A. Gloskovskii,et al. Engineering of the chemical reactivity of the Ti/HfO₂ interface for RRAM: experiment and theory. , 2014, ACS applied materials & interfaces.
[27] Shinhyun Choi,et al. Comprehensive physical model of dynamic resistive switching in an oxide memristor. , 2014, ACS nano.
[28] Shimeng Yu,et al. Synaptic electronics: materials, devices and applications , 2013, Nanotechnology.
[29] C. Wright,et al. Beyond von‐Neumann Computing with Nanoscale Phase‐Change Memory Devices , 2013 .
[30] Shimeng Yu,et al. A Low Energy Oxide‐Based Electronic Synaptic Device for Neuromorphic Visual Systems with Tolerance to Device Variation , 2013, Advanced materials.
[31] Shimeng Yu,et al. A neuromorphic visual system using RRAM synaptic devices with Sub-pJ energy and tolerance to variability: Experimental characterization and large-scale modeling , 2012, 2012 International Electron Devices Meeting.
[32] T. Morie,et al. Three-terminal ferroelectric synapse device with concurrent learning function for artificial neural networks , 2012 .
[33] Shimeng Yu,et al. AlOx-Based Resistive Switching Device with Gradual Resistance Modulation for Neuromorphic Device Application , 2012, 2012 4th IEEE International Memory Workshop.
[34] Wei Lu,et al. Short-term Memory to Long-term Memory Transition in a Nanoscale Memristor , 2022 .
[35] Shimeng Yu,et al. An Electronic Synapse Device Based on Metal Oxide Resistive Switching Memory for Neuromorphic Computation , 2011, IEEE Transactions on Electron Devices.
[36] T. Hasegawa,et al. Learning Abilities Achieved by a Single Solid‐State Atomic Switch , 2010, Advanced materials.
[37] Wei Yang Lu,et al. Nanoscale memristor device as synapse in neuromorphic systems. , 2010, Nano letters.
[38] Qi Liu,et al. Investigation of resistive switching in Cu-doped HfO2 thin film for multilevel non-volatile memory applications , 2010, Nanotechnology.
[39] Dias F. Morgado,et al. Fault Tolerance of Artificial Neural Networks: an Open Discussion for a Global Model , 2010 .
[40] Nektarios Tavernarakis,et al. The role of synaptic ion channels in synaptic plasticity , 2006, EMBO reports.
[41] L. Abbott,et al. Competitive Hebbian learning through spike-timing-dependent synaptic plasticity , 2000, Nature Neuroscience.
[42] G. Bi,et al. Synaptic Modifications in Cultured Hippocampal Neurons: Dependence on Spike Timing, Synaptic Strength, and Postsynaptic Cell Type , 1998, The Journal of Neuroscience.
[43] John Aurie Dean,et al. Lange's Handbook of Chemistry , 1978 .