Stress-induced artificial neuron spiking in diffusive memristors

D. P. Pattnaik, Y. Sharma, S. Savel’ev, P. Borisov, A. Akhter, A. Balanov, P. Ferreira
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Abstract

Diffusive memristors owing to their ability to produce current spiking when a constant or slowly changing voltage is applied are competitive candidates for development of artificial electronic neurons. These artificial neurons can be integrated into various prospective autonomous and robotic systems as sensors, e.g. ones implementing object grasping and classification. We report here Ag nanoparticle-based diffusive memristor prepared on a flexible polyethylene terephthalate substrate in which the electric spiking behaviour was induced by the electric voltage under an additional stimulus of external mechanical impact. By changing the magnitude and frequency of the mechanical impact, we are able to manipulate the spiking response of our artificial neuron. This functionality to control the spiking characteristics paves a pathway for the development of touch-perception sensors that can convert local pressure into electrical spikes for further processing in neural networks. We have proposed a mathematical model which captures the operation principle of the fabricated memristive sensors and qualitatively describes the measured spiking behaviour. Employing such flexible diffusive memristors that can directly translate tactile information into spikes, similar to force and pressure sensors, could offer substantial benefits for various applications in robotics. Debi Pattnaik and co-authors present a flexible Ag nanoparticle-based diffusive memristor that generates electric spikes in response to both voltage and mechanical impact. Their approach is suitable for touch-sensitive sensors with neural network-based processing.

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扩散式记忆晶体管中应力诱导的人工神经元尖峰脉冲
扩散式忆阻器能够在施加恒定或缓慢变化的电压时产生尖峰电流,因此是开发人工电子神经元的理想候选材料。这些人工神经元可作为传感器集成到各种未来的自主系统和机器人系统中,如实现物体抓取和分类的系统。我们在此报告了在柔性聚对苯二甲酸乙二醇酯基底上制备的基于银纳米粒子的扩散式忆阻器。通过改变机械冲击的大小和频率,我们能够操纵人工神经元的尖峰响应。这种控制尖峰特性的功能为触摸感知传感器的开发铺平了道路,这种传感器可以将局部压力转化为电尖峰,供神经网络进一步处理。我们提出了一个数学模型,它捕捉到了所制造的忆阻传感器的工作原理,并定性地描述了所测量到的尖峰行为。采用这种能直接将触觉信息转化为尖峰的柔性扩散式忆阻器(类似于力和压力传感器),可为机器人技术的各种应用带来巨大好处。Debi Pattnaik 及其合著者展示了一种基于银纳米粒子的柔性扩散式忆阻器,它能对电压和机械冲击产生电尖峰响应。他们的方法适用于基于神经网络处理的触敏传感器。
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