Li Ruiyi, Huang Peng, Feng Yulin, Zhou Zheng, Zhang Yizhou, Ding Xiangxiang, Liu Lifeng, Kang Jinfeng
School of Integrated Circuits, Peking University, Beijing 100871, China.
Micromachines (Basel). 2022 Mar 11;13(3):433. doi: 10.3390/mi13030433.
Neuromorphic computing has shown great advantages towards cognitive tasks with high speed and remarkable energy efficiency. Memristor is considered as one of the most promising candidates for the electronic synapse of the neuromorphic computing system due to its scalability, power efficiency and capability to simulate biological behaviors. Several memristor-based hardware demonstrations have been explored to achieve the capacity of unsupervised learning with the spike-rate-dependent plasticity (SRDP) learning rule. However, the learning capacity is limited and few of the memristor-based hardware demonstrations have explored the online unsupervised learning at the network level with an SRDP algorithm. Here, we construct a memristor-based hardware system and demonstrate the online unsupervised learning of SRDP networks. The neuromorphic system consists of multiple memristor arrays as the synapse and the discrete CMOS circuit unit as the neuron. Unsupervised learning and online weight update of 10 MNIST handwritten digits are realized by the constructed SRDP networks, and the recognition accuracy is above 90% with 20% device variation. This work paves the way towards the realization of large-scale and efficient networks for more complex tasks.
神经形态计算在处理认知任务时展现出了高速和显著能效的巨大优势。忆阻器因其可扩展性、功率效率以及模拟生物行为的能力,被视为神经形态计算系统电子突触最具潜力的候选者之一。人们已经探索了几种基于忆阻器的硬件演示,以通过依赖脉冲率的可塑性(SRDP)学习规则实现无监督学习能力。然而,学习能力有限,且很少有基于忆阻器的硬件演示使用SRDP算法在网络层面探索在线无监督学习。在此,我们构建了一个基于忆阻器的硬件系统,并展示了SRDP网络的在线无监督学习。该神经形态系统由多个作为突触的忆阻器阵列和作为神经元的离散CMOS电路单元组成。通过构建的SRDP网络实现了对10个MNIST手写数字的无监督学习和在线权重更新,在器件变化20%的情况下,识别准确率高于90%。这项工作为实现用于更复杂任务的大规模高效网络铺平了道路。