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Triplet-based Spike Timing Dependent Plasticity Circuit Design for three-terminal Spintronic Synapse

机译:三末末端三端旋转突触的三联峰值截二件依赖性塑性电路设计

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Emerging nonvolatile memory technologies have been much studied to realize massively interconnected Spiking Neural Networks (SNNs) due to its high density, and energy efficiency. Nevertheless, most of the previous studies on utilizing such technologies have focused on implementing a traditional pair-based Spike Timing Dependent Plasticity (STDP) rule, which turned out to fail to reproduce multiple physiological experimental results. In this paper, we present a neuromorphic circuit for a three-terminal spintronic synapse with a triplet-based STDP rule, which is a higher order of learning mechanism. Simulation results indicate that the proposed learning circuit for the triplet-based STDP rule significantly improves learning capability in mimicking the various biological experimental data. We introduce a normalized mean-square error E value to evaluate the performance of each of the learning circuits quantitatively. The proposed learning circuit achieves E value of 1.77, which is far better than the conventional one that achieves E value of 12.2.
机译:已经研究了新兴的非易失性记忆技术,以实现由于其高密度和能效而实现了大规模互连的尖峰神经网络(SNNS)。然而,以前的大多数关于利用这些技术的研究都集中在实施传统的基于对的峰值时序依赖性可塑性(STDP)规则,这结果未能再现多种生理实验结果。在本文中,我们介绍了一种具有三个终端闪光突触的神经形态电路,其基于三重态的STDP规则,这是一种高阶的学习机制。仿真结果表明,基于三态的STDP规则的提出的学习电路显着提高了模拟各种生物实验数据的学习能力。我们介绍了归一化的均方误差e值,以定量评估每个学习电路的性能。所提出的学习电路实现了E值为1.77,远远优于实现E值为12.2的传统。

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