A neuromorphic architecture from single transistor neurons with organic bistable devices for weights

Robert A. Nawrocki, S. Shaheen, R. Voyles
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引用次数: 11

Abstract

Artificial Intelligence (AI) has made tremendous progress since it was first postulated in the 1950s. However, AI systems are primarily emulated on serial machine hardware that result in high power consumption, especially when compared to their biological counterparts. Recent interest in neuromorphic architectures aims to more directly emulate biological information processing to achieve substantially lower power consumption for appropriate information processing tasks. We propose a novel way of realizing a neuromorphic architecture, termed Synthetic Neural Network (SNN), that is modeled after conventional artificial neural networks and incorporates organic bistable devices as circuit elements that resemble the basic operation of a binary synapse. Via computer simulation we demonstrate how a single synthetic neuron, created with only a single transistor, a single-bistable-device-per-input, and two resistors, exhibits a behavior of an artificial neuron and approximates the sigmoidal activation function. We also show that, by increasing the number of bistable devices per input, a single neuron can be trained to behave like a Boolean logic AND or OR gate. To validate the efficacy of our design, we show two simulations where SNN is used as a pattern classifier of complicated, non-linear relationships based on real-world problems. In the first example, our SNN is shown to perform the trained task of directional propulsion due to water hammer effect with an average error of about 7.2%. The second task, a robotic wall following, resulted in SNN error of approximately 9.6%. Our simulations and analysis are based on the performance of organic electronic elements created in our laboratory.
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单晶体管神经元的神经形态结构与有机双稳装置的重量
人工智能(AI)自20世纪50年代首次提出以来,已经取得了巨大的进步。然而,人工智能系统主要是在串行机器硬件上模拟的,这导致了高功耗,特别是与生物系统相比。最近对神经形态架构的兴趣旨在更直接地模拟生物信息处理,从而在适当的信息处理任务中实现更低的功耗。我们提出了一种实现神经形态架构的新方法,称为合成神经网络(SNN),它以传统的人工神经网络为模型,并将有机双稳态器件作为电路元件,类似于二元突触的基本操作。通过计算机模拟,我们演示了单个合成神经元是如何由单个晶体管、每个输入一个双稳器件和两个电阻器创建的,它表现出人工神经元的行为,并近似于s型激活函数。我们还表明,通过增加每个输入的双稳态器件的数量,单个神经元可以被训练成一个布尔逻辑与或门。为了验证我们设计的有效性,我们展示了两个模拟,其中SNN被用作基于现实世界问题的复杂非线性关系的模式分类器。在第一个例子中,我们的SNN在水锤效应下执行定向推进的训练任务,平均误差约为7.2%。第二个任务是机器人墙跟踪,SNN误差约为9.6%。我们的模拟和分析是基于我们实验室创造的有机电子元件的性能。
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