Biomimetic, Soft-Material Synapse for Neuromorphic Computing: from Device to Network

Md. Sakib Hasan, Catherine D. Schuman, J. Najem, Ryan Weiss, Nicholas D. Skuda, A. Belianinov, C. Collier, Stephen A. Sarles, G. Rose
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引用次数: 18

Abstract

Neuromorphic computing refers to a variety of brain-inspired computers, devices, and models inspired by the interconnectivity, performance, and energy efficiency of the human brain. Unlike the ubiquitous von Neumann computer architectures with complex processor cores and sequential computation, biological neurons and synapses operate by storing and processing information simultaneously with the capacity of flexible adaptation resulting in massive computational capability with much less power consumption. The search for a synaptic material which can closely imitate bio-synapse has led to an alamethicin-doped, synthetic biomembrane which can emulate key synaptic functions due to generic memristive property enabling learning and computation. This two-terminal, biomolecular memristor, in contrast to its solid-state counterparts, features similar structure, switching mechanism, and ionic transport modality as biological synapses while consuming considerably lower power. In this paper, we outline a methodology for using this biomolecular synapse to build neural networks capable of solving real-world problems. The physical mechanism underlying its volatile memristance is explored followed by the development of a model of this device for circuit simulation. We outline a circuit design technique to integrate this synapse with solid-state neuron circuit for hardware implementation. Based on these results, we develop a high level simulation framework and use a training scheme called Evolutionary Optimization for Neuromorphic System (EONS) to generate networks for solving two problems, namely iris dataset classification and EEG classification task. The small network size and comparable to state-of-the-art accuracy of these preliminary networks show its potential to enhance synaptic functionality in next generation neuromorphic hardware.
仿生软材料突触用于神经形态计算:从设备到网络
神经形态计算是指各种受大脑启发的计算机、设备和模型,这些计算机、设备和模型的灵感来自于人脑的互联性、性能和能量效率。与普遍存在的具有复杂处理器内核和顺序计算的冯·诺伊曼计算机体系结构不同,生物神经元和突触通过同时存储和处理信息,并具有灵活适应的能力,从而以更低的功耗实现大量计算能力。为了寻找一种可以近似模拟生物突触的突触材料,一种掺了alamethicin的合成生物膜由于具有学习和计算的通用记忆特性,可以模拟关键的突触功能。与固态忆阻器相比,这种双端生物分子忆阻器具有与生物突触相似的结构、开关机制和离子传输模式,而功耗却低得多。在本文中,我们概述了使用这种生物分子突触来构建能够解决现实世界问题的神经网络的方法。探讨了其挥发性忆阻的物理机制,并建立了该器件的电路仿真模型。我们概述了一种电路设计技术,将这种突触与固态神经元电路集成在硬件实现中。基于这些结果,我们开发了一个高级仿真框架,并使用一种称为神经形态系统进化优化(EONS)的训练方案来生成网络,以解决虹膜数据分类和脑电图分类任务两个问题。这些初步网络的小网络尺寸和可媲美的最先进的精度显示了其在下一代神经形态硬件中增强突触功能的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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