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首页> 外文期刊>Electron Device Letters, IEEE >Optimization of Conductance Change in Pr1–xCaxMnO3-Based Synaptic Devices for Neuromorphic Systems
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Optimization of Conductance Change in Pr1–xCaxMnO3-Based Synaptic Devices for Neuromorphic Systems

机译:基于Pr 1– x Ca x MnO 3 的电导率变化的优化用于神经形态系统的突触设备

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摘要

The optimization of conductance change behavior in synaptic devices based on analog resistive memory is studied for the use in neuromorphic systems. Resistive memory based on PrCaMnO (PCMO) is applied to a neural network application (classification of Modified National Institute of Standards and Technology handwritten digits using a multilayer perceptron trained with backpropagation) under a wide variety of simulated conductance change behaviors. Linear and symmetric conductance changes (e.g., self-similar response during both increasing and decreasing device conductance) are shown to offer the highest classification accuracies. Further improvements can be obtained using nonidentical training pulses, at the cost of requiring measurement of individual conductance during training. Such a system can be expected to achieve, with our existing PCMO-based synaptic devices, a generalization accuracy on a previously-unseen test set of 90.55%. These results are promising for hardware demonstration of high neuromorphic accuracies using existing synaptic devices.
机译:研究了基于模拟电阻记忆的突触设备电导变化行为的优化,以用于神经形态系统。在多种模拟电导变化行为下,基于PrCaMnO(PCMO)的电阻存储器被应用于神经网络应用(使用经过反向传播训练的多层感知器对美国国家标准与技术研究院手写数字进行分类)。线性和对称的电导率变化(例如,在增加和减小设备电导率时的自相似响应)显示出最高的分类精度。使用不同的训练脉冲可以获得进一步的改进,但需要在训练期间测量各个电导。可以预期,使用我们现有的基于PCMO的突触设备,这样的系统可以在以前看不见的测试集上实现90.55%的泛化精度。这些结果对于使用现有的突触设备进行高神经形态准确度的硬件演示很有希望。

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