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基于电导约束构建高精确度的图像识别网络

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受生物神经系统的启发,神经网络硬件实现采用存算一体的硬件架构和高度适应的并行运算模式,有望显著提高计算机的算力和能效.目前,集成系统级神经形态硬件实现仍存在很大难度,采用突触器件结合神经网络算法的方式能够实现高识别准确率的神经形态计算.提出了一种基于背靠背肖特基结的光学突触器件,器件展现了多种模式的突触可塑性行为,包括兴奋性突触后电流(EPSC)、短期增强(STP)和长期增强(LTP)、间隔依赖的双脉冲易化(PPF)、学习-遗忘等突触行为.此外,通过将器件的电导变化映射为卷积神经网络的权重变化,来构建基于忆阻器的卷积神经网络,并对其在图像识别中的应用进行了评估.实验结果显示图像识别准确率能够达到95.12%,该器件作为人工突触器件在神经形态计算方面有很大的应用潜力.
Conductance Constraint-Based High-Accuracy Image Recognition Network
Objective Inspired by the biological nervous system,the neuromorphic hardware implementation based on compute-in-memory (CIM) architecture and highly adaptive computing mode are promising to significantly improve computer efficiency and performance. At present,it is still a great challenge to integrate system-level neuromorphic hardwares,and neuromorphic computing with high recognition accuracy can be realized by adopting synaptic devices in combination with neural network algorithms. Therefore,an optical synaptic device based on back-to-back Schottky junction (B-B SJ) is presented,and then some common synaptic plasticities are emulated,such as post-excitatory synaptic currents (EPSCs),short-to-long-term plasticity,interval-dependent paired-pulse facilitation (PPF),and learning-forgetting-relearning process. Additionally,the memristor-based convolutional neural network (M-CNN) is constructed by mapping the device conductance change to the weight change of the convolutional neural network,and its applications in image recognition are evaluated. Meanwhile,the experimental results show that the recognition accuracy can reach 95.12% and demonstrate the potential applications of devices in neuromorphic computing.Methods Optical synaptic devices have been proposed based on B-B SJ. The device conductance is modulated by light-induced Schottky barrier modulation,with simultaneous non-volatile conductance state regulation achieved via the silicon dioxide interface trapping effect. Synaptic behavior such as EPSC,PPF,short-to-longterm plasticity,and PPF has been successfully emulated by adopting B-B SJ devices. Furthermore,by extracting the device conductance and mapping the conductance range into the M-CNN algorithm,image information recognition has been accomplished. The results indicate that by adopting the M-CNN algorithm,this neuromorphic device demonstrates outstanding performance in image recognition tasks,with an accuracy of up to 95.12%.Results and Discussions An M-CNN is constructed to test its image recognition performance. The conductance values of the devices are mapped as weight values for image recognition. Figure 4(a) presents a schematic diagram of this process,while Fig. 4(b) shows the feature maps of the convolutional layer. Different numbers of pulses are applied to the device,which results in three distinct conductance ranges as illustrated in Fig. 4(c). The corresponding changes in conductance values for these three scenarios are depicted in Fig. 4(d),indicating that an increase in the pulse number enhances the conductance range of the device. The confusion matrices and accuracy distribution plots for the M-CNN recognition rates corresponding to different pulse numbers are shown in Fig. 5. A comparison with the results in Table 1 reveals that the image recognition network constructed by the B-B SJ artificial synapse device performs well in image recognition tasks,demonstrating high accuracy and further validating the effectiveness of the device for neuromorphic computing.Conclusions A B-B SJ artificial synapse device is fabricated to simulate various plasticity behaviors of biological synapses,including EPSC,short-to-long-term plasticity,interval-dependent PPF,and learning-forgetting-relearning process. Additionally,the corresponding conductance parameters are extracted from this artificial synapse device,and a three-layer CNN based on this device is constructed. This network achieves a recognition accuracy of 95.12% in tests on the MNIST handwritten digit dataset. These results demonstrate the device's advantages in image information processing and confirm its potential as an artificial synapse device for neuromorphic computing applications.

neuromorphic deviceSchottky diodeneuromorphic computingconvolutional neural networkimage recognition

徐丽华、赵益波、杨成东

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南京信息工程大学电子与信息工程学院,江苏 南京 210044

无锡学院电子信息工程学院,江苏 无锡 214105

神经形态器件 肖特基二极管 神经形态计算 卷积神经网络 图像识别

2024

光学学报
中国光学学会 中国科学院上海光学精密机械研究所

光学学报

CSTPCD北大核心
影响因子:1.931
ISSN:0253-2239
年,卷(期):2024.44(21)