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A Memristor-Based Spiking Neural Network With High Scalability and Learning Efficiency

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Spike-timing dependent plasticity (STDP)-based spiking neural network (SNN) is a promising choice to realize unsupervised intelligent systems with a limited power budget. In addition to STDP, another two bio-inspired mechanisms… Click to show full abstract

Spike-timing dependent plasticity (STDP)-based spiking neural network (SNN) is a promising choice to realize unsupervised intelligent systems with a limited power budget. In addition to STDP, another two bio-inspired mechanisms of lateral inhibition and homeostasis are always implemented in the unsupervised training procedure of STDP-based SNNs. However, the existing methods to achieve lateral inhibition necessitate a great number of connections that are proportional to the square of the number of learning neurons, and the existing hardware solution of homeostasis demands complex circuits for each learning neuron, both of which challenge the hardware implementation of STDP-based SNNs. In this brief, we propose a novel SNN using memristor-based inhibitory synapses to realize the mechanisms of lateral inhibition and homeostasis with low hardware complexity. The proposed SNN can improve the network scalability by reducing the connection number for lateral inhibition from $N^{2}$ to $N$ and reduce the hardware overhead by leveraging the circuit of lateral inhibition to achieve homeostasis. Software simulations on the recognition task on MNIST dataset show that the proposed SNN achieves a ~ 2 times higher learning efficiency with comparable accuracy. In addition, the challenging properties of realistic memristor devices, including limited number of resistive states, intrinsic parameter variation, and permanent open device, are added in the simulation to evaluate the robustness of our proposed approach.

Keywords: lateral inhibition; based spiking; memristor; spiking neural; network

Journal Title: IEEE Transactions on Circuits and Systems II: Express Briefs
Year Published: 2020

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