高分子仿生膜在神经形态回路中的记忆电容装置

Colin M Basham, Megan E. Pitz, J. Najem, S. A. Sarles, Sakib Hasan
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引用次数: 1

摘要

模拟生物突触信号处理、学习和计算能力的双端自适应材料和电路元件对下一代计算系统至关重要。为此,我们最近开发了电阻性(离子通道)和电容性(脂质双分子层)记忆元件,模拟生物突触的组成、结构和可塑性。与固态系统不同,这些生物分子系统具有低功耗、模拟性、低噪声、生物相容性,并且能够表现出短期突触可塑性的多个时间尺度。然而,脂质膜缺乏结构稳定性和模块化必要的一个持久的适应性材料系统。为了解决这个问题,我们提出用两亲性聚合物代替磷脂来制造人工膜,这种人工膜已被证明比磷脂更耐用。以记忆电容器为重点,我们证明了由于电压引起的几何变化,聚合物双层在Q-v平面上可以表现出挤压迟滞。此外,我们证明了记忆电容响应是根据周围的油介质而改变的;较小的油分子以较高的体积保留在膜中,因此较厚的双层具有较低的标称电容,但可以使该值变化超过400%。最后,我们提出了一个基于物理的模型,使我们能够预测器件的面积电压依赖响应。聚合物双层代表了软物质、几何可重构记忆电容器领域的重大进步,其高度可定制的成分将允许精细调谐的电响应,在大脑启发材料和电路中具有未来。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Memcapacitive Devices in Neuromorphic Circuits via Polymeric Biomimetic Membranes
Two-terminal adaptive materials and circuit elements that mimic the signal processing, learning, and computing capabilities of biological synapses are essential for next-generation computing systems. To this end, we have recently developed resistive (ion channel) and capacitive (lipid bilayer) memory elements that mimic the composition, structure, and plasticity of biological synapses. Unlike solid-state counterparts, these biomolecular systems are low-power, analog, less noisy, biocompatible, and capable of exhibiting multiple timescales of short-term synaptic plasticity. However, lipid membranes lack structural stability and modularity necessary for a long-lasting adaptive material system. To address this issue, we propose the replacement of phospholipids with amphiphilic polymers to create artificial membranes, which have been demonstrated to be more durable than phospholipids. With the focus on memory capacitors, we demonstrate that polymeric bilayers can exhibit pinched hysteresis in the Q-v plane because of voltage-induced geometrical changes. Further, we demonstrate that the memcapacitive response is altered based on the surrounding oil medium; smaller oil molecules are retained at higher volume in the membrane, so that thicker bilayers have lower nominal capacitance but can vary this value by over 400%. Finally, we present a physics-based model that enables us to predict the device’s areal voltage-dependent response. Polymeric bilayers represent a significant enhancement in the field of soft-matter, geometrically-reconfigurable memcapacitors, and their highly customizable compositions will allow for a finely tuned electrical response that has a future in brain-inspired materials and circuits.
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