While neuromorphic computing architectures based on Spiking Neural Networks (SNNs) are increasingly gaining interest as a pathway toward bio-plausible machine learning, attention is still focused on computational units like the neuron and synapse. Shifting from this neuro-synaptic perspective, this paper attempts to explore the self-repair role of glial cells, in particular, astrocytes. The work investigates stronger correlations with astrocyte computational neuroscience models to develop macro-models with a higher degree of bio-fidelity that accurately captures the dynamic behavior of the self-repair process. Hardware-software co-design analysis reveals that bio-morphic astrocytic regulation has the potential to self-repair hardware realistic faults in neuromorphic hardware systems with significantly better accuracy and repair convergence for unsupervised learning tasks on the MNIST and F-MNIST datasets.
翻译:虽然基于Spiking神经网络(SNNS)的神经形态计算结构日益受到关注,成为生物可变性机器学习的途径,但注意力仍然集中在神经和突触等计算单位上。从神经合成角度出发,本文件试图探索滑翔细胞,特别是天体细胞的自我修复作用。这项工作调查了与天体细胞计算神经科学模型的更紧密关联,以开发生物纤维性较高的宏观模型,准确捕捉自修复过程的动态行为。硬件软件共同设计分析显示,生物形态的天体调节有可能使神经形态硬件系统中的自修复硬件现实故障更加精确,并修复在MNIST和F-MNIST数据集上不受监督的学习任务的一致性。