• Title/Summary/Keyword: memristor bridge synapse

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Memristor Bridge Synapse-based Neural Network Circuit Design and Simulation of the Hardware-Implemented Artificial Neuron (멤리스터 브리지 시냅스 기반 신경망 회로 설계 및 하드웨어적으로 구현된 인공뉴런 시뮬레이션)

  • Yang, Chang-ju;Kim, Hyongsuk
    • Journal of Institute of Control, Robotics and Systems
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    • v.21 no.5
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    • pp.477-481
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    • 2015
  • Implementation of memristor-based multilayer neural networks and their hardware-based learning architecture is investigated in this paper. Two major functions of neural networks which should be embedded in synapses are programmable memory and analog multiplication. "Memristor", which is a newly developed device, has two such major functions in it. In this paper, multilayer neural networks are implemented with memristors. A Random Weight Change algorithm is adopted and implemented in circuits for its learning. Its hardware-based learning on neural networks is two orders faster than its software counterpart.

Linearization Effect of Weight Programming about Time in Memristor Bridge Synapse (신경회로망용 멤리스터 브릿지 회로에서 가중치 프로그램의 시간에 대한 선형화 효과)

  • Choi, Hyuncheol;Park, Sedong;Yang, Changju;Kim, Hyongsuk
    • Journal of the Institute of Electronics and Information Engineers
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    • v.52 no.4
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    • pp.80-87
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    • 2015
  • Memristor is a new kind of memory device whose resistance varies depending upon applied charge and whose previous resistance state is preserved even when its power is off. Ordinary memristor has a nonlinear programming characteristics about time when a constant voltage is applied. For the easiness of programming, it is desirable that resistance is programmed linearly about time. We had proposed previously a memristor bridge configuration with which weight can be programmed nicely in positive, negative or zero. In memristor bridge circuit, two memristors are connected in series with different polarity. Memristors are complementary each other and it follows that the memristance variation is linear with respect to time. In this paper, the linearization effect of weight programming of memristor bridge synapse is investigated and verified about both $TiO_2$ memristor from HP and a nonlinear memristor with a window function. Memristor bridge circuit would be helpful to conduct synaptic weight programming.

Floating Memristor Emulator Circuit (비접지형 멤리스터 에뮬레이터 회로)

  • Kim, Yongjin;Yang, Changju;Kim, Hyongsuk
    • Journal of the Institute of Electronics and Information Engineers
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    • v.52 no.8
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    • pp.49-58
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    • 2015
  • A floating type of memristor emulator which acts like the behavior of $TiO_2$ memristor has been developed. Most of existing memristor emulators are grounded type which is built disregarding the connectivity with other memristor or other devices. The developed memristor emulator is a floating type whose output does not need to be grounded. Therefore, the emulator is able to be connected with other devices and be utilized for the interoperability test with various other circuits. To prove the floating function of the proposed memristor emulator, a Wheatstone bridge is built by connecting 4 memristor emulators in series and parallel. Also this bridge circuit suggest that it is possible to weight calculation of the neural network synapse.