首页> 外文期刊>Journal of nanoscience and nanotechnology >Grayscale Image Recognition Using Spike-Rate-Based Online Learning and Threshold Adjustment of Neurons in a Thin-Film Transistor-Type NOR Flash Memory Array
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Grayscale Image Recognition Using Spike-Rate-Based Online Learning and Threshold Adjustment of Neurons in a Thin-Film Transistor-Type NOR Flash Memory Array

机译:灰度图像识别使用基于Spike率的在线学习和薄膜晶体管式中神经元的阈值调整,或者在薄膜晶体管型和闪存阵列中的神经元

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摘要

As a synaptic device, TFT-type NOR flash memory cell shows reasonable weight levels (50 levels for long-term potentiation (LTP) and 150 levels for long-term depression (LTD)) and large max/min ratio (not equal(sic)50) for synapse weight. Based on the measurement results of the synapse cell, supervised learning process is simulated using software MATLAB. A new pulse scheme is designed for mimicking spike-rate-dependent plasticity (SRDP) algorithm. Through learning and inferencing phase, our (784x100) network achieved 74.08% accuracy on the MNIST benchmark. A new method for adapting the threshold voltage of output neurons for firing is also proposed. This additional adjustment helps to eliminate the exclusive or dormant output neurons by setting the threshold voltage to an appropriate value proportional to the average weight of synapses connected to each neuron. As a result, accuracy increases to 82.54% in the (784x100) network and to 84.14% in the (784x200) network. Moreover, threshold adjustment helped the network to classify completely overlapped patterns in succession.
机译:作为突触装置,TFT型和闪存单元显示合理的重量水平(用于长期增强(LTP)的50级,长期凹陷(LTD))和最大/ min比(不等于(SIC) )50)用于突触重量。根据Synapse小区的测量结果,使用软件MATLAB模拟监督学习过程。设计了一种新的脉冲方案,用于模仿峰值依赖性塑性(SRDP)算法。通过学习和推理阶段,我们(784x100)网络在Mnist基准上实现了74.08%的准确性。还提出了一种适应输出神经元射击射击的新方法。该额外调整有助于通过将阈值电压设定为与连接到每个神经元的突触的平均重量成比例的适当值来消除异或休眠输出神经元。结果,(784x100)网络中的准确度增加到82.54%,(784x200)网络中的84.14%。此外,阈值调整帮助网络连续地分类完全重叠的模式。

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