IEEE Trans Biomed Circuits Syst. 2018 Dec;12(6):1410-1421. doi: 10.1109/TBCAS.2018.2867038. Epub 2018 Aug 27.
Recently, a great deal of scientific endeavour has been devoted to developing spin-based neuromorphic platforms owing to the ultra-low-power benefits offered by spin devices and the inherent correspondence between spintronic phenomena and the desired neuronal, synaptic behavior. While domain wall motion-based threshold activation unit has previously been demonstrated for neuromorphic circuits, it remains well known that neurons with threshold activation cannot completely learn nonlinearly separable functions. This paper addresses this fundamental limitation by proposing a novel domain wall motion-based dual-threshold activation unit with additional nonlinearity in its function. Furthermore, a new learning algorithm is formulated for a neuron with this activation function. We perform 100 trials of tenfold training and testing of our neural networks on real-world datasets taken from the UCI machine learning repository. On an average, the proposed algorithm achieves [Formula: see text] lower misclassification rate (MCR) than the traditional perceptron learning algorithm. In a circuit-level simulation, the neural networks with the proposed activation unit are observed to outperform the perceptron networks by as much as [Formula: see text] MCR. The energy consumption of a neuron having the proposed domain wall motion-based activation unit averages to [Formula: see text] approximately.
最近,由于自旋器件提供的超低功耗优势以及自旋电子现象与所需的神经元、突触行为之间的固有对应关系,大量的科学研究致力于开发基于自旋的神经形态平台。虽然基于畴壁运动的门限激活单元已经在神经形态电路中得到了证明,但众所周知,具有门限激活的神经元不能完全学习非线性可分函数。本文通过提出一种具有附加非线性功能的新型基于畴壁运动的双门限激活单元来解决这一基本限制。此外,还为具有这种激活功能的神经元制定了一种新的学习算法。我们在来自 UCI 机器学习存储库的真实数据集上对我们的神经网络进行了 100 次十折训练和测试。平均而言,与传统的感知器学习算法相比,所提出的算法的错误分类率(MCR)低[Formula: see text]。在电路级模拟中,观察到具有所提出的激活单元的神经网络的性能优于感知器网络,MCR 高达[Formula: see text]。具有基于畴壁运动的激活单元的神经元的能量消耗平均约为[Formula: see text]。