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Chalcogenide-Based Artificial Intelligence Synaptic Device
2018 14th IEEE International Conference on Solid-State and Integrated Circuit Technology (ICSICT), 2018In this work, we investigated sputtered undoped and N-doped Sb 2 Te 3 chalcogenide phase change films by x-ray diffraction and resistance measurements. The application to artificial intelligence synaptic device is presented as well. Mean crystal size decreased from 6.8 to 2.9 nm and thus crystal growth was significantly suppressed by fine nitrides due
You Yin, Ryoya Satoh, Keita Sawao
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Characterisation & modelling of perovskite-based synaptic memristor device
Microelectronics Reliability, 2020Abstract Neuromorphic computing architectures are required to execute several operations such as forgetting and learning behaviours with high-speed data processing. Due to the rapid advancement in technology, various transistor-based devices like field-effect transistor (FET), complementary metal-oxide-semiconductor (CMOS), etc.
Gupta, V +4 more
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Electroluminescent synaptic devices with logic functions
Nano Energy, 2018Abstract The incorporation of light into synaptic devices for neuromorphic computing with low energy consumption and high intelligence is greatly inspired by the development of optogenetics in neuroscience. However, the use of light as the outputs of synaptic devices has not been demonstrated yet, impeding the full optoelectronic integration of ...
Shuangyi Zhao +8 more
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Artificial Funnel Nanochannel Device Emulates Synaptic Behavior
Nano LettersCreating artificial synapses that can interact with biological neural systems is critical for developing advanced intelligent systems. However, there are still many difficulties, including device morphology and fluid selection. Based on Micro-Electro-Mechanical System technologies, we utilized two immiscible electrolytes to form a liquid/liquid ...
Peiyue Li +6 more
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Silicon-based Heterostructures for Optoelectronic Synaptic Devices
2023Silicon (Si) is one of the most important materials for very large-scale integration (VLSI) circuits, which has achieved great success in microelectronics. The advanced mature technology and the low cost of Si have attracted interest for exploring its use in optoelectronic synaptic devices. Si-based heterostructures with rationally designed energy-band
Yue Wang, Deren Yang, Xiaodong Pi
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ReRAM-based synaptic device for neuromorphic computing
2014 IEEE International Symposium on Circuits and Systems (ISCAS), 2014To compete with nonvolatile FLASH memory technology, we need to develop stackable, cross-point ReRAM device. Although various materials have been reported, it is difficult to meet device criteria such as high speed operation, low power switching, switching uniformity, endurance, long-term retention and selection device for cross-point array.
Jun-Woo Jang +3 more
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Emerging Artificial Synaptic Devices for Neuromorphic Computing
Advanced Materials Technologies, 2019AbstractIn today's era of big‐data, a new computing paradigm beyond today's von‐Neumann architecture is needed to process these large‐scale datasets efficiently. Inspired by the brain, which is better at complex tasks than even supercomputers with much better efficiency, the field of neuromorphic computing has recently attracted immense research ...
Qingzhou Wan +4 more
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Synaptic devices based on purely electronic memristors
Applied Physics Letters, 2016Memristive devices have been widely employed to emulate biological synaptic behavior. In these cases, the memristive switching generally originates from electrical field induced ion migration or Joule heating induced phase change. In this letter, the Ti/ZnO/Pt structure was found to show memristive switching ascribed to a carrier trapping/detrapping of
Ruobing Pan +9 more
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Synaptic Devices Based on Phase-Change Memory
2017The biological brain has the capability of learning, pattern recognition, processing imprecisely defined data, and executing complex computational tasks. Consisting of 1011 neurons and 1015 synapses as the major computational components, the biological brain is extremely power efficient, massively parallel, structurally plastic, and exceptionally ...
Yuhan Shi +3 more
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Synaptic devices based on semiconductor nanocrystals
Frontiers of Information Technology & Electronic Engineering, 2022Mingxuan Bu +6 more
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