用于结构神经形态硬件的聚合物有机金属铁电二极管的增材制造

Davin Browner, S. Sareh, Paul Anderson
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引用次数: 0

摘要

在线机器学习应用的硬件设计和实现由于传统人工神经网络(ANN)的许多方面而变得复杂,例如深度神经网络(dnn),例如依赖于非时变局部性,使用大数据集的离线学习,从模型转移到基板的潜在困难,以及使用节能和异步信息处理方式处理噪声感官数据的问题。模拟或混合信号尖峰神经网络(snn)有望实现低功耗、暂时局部化和刺激选择性传感和推理,但难以以低成本制造。研究超越cmos的替代有机衬底对于开发具有伪尖峰动力学的非常规神经形态硬件在生物信号处理和机器人技术中的结构电子集成是有价值的。本文介绍了聚合物有机金属铁电二极管(POMFeDs)用于开发可打印铁电传感器内snn。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Additive manufacture of polymeric organometallic ferroelectric diodes (POMFeDs) for structural neuromorphic hardware
Hardware design and implementation for online machine learning applications is complicated by a number of facets of conventional artificial neural networks (ANN), e.g. deep neural networks (DNNs), such as reliance on atemporal locality, offline learning using large datasets, potential difficulties in transfer from model to substrates, and issues with processing of noisy sensory data using energy-efficient and asynchronous information processing modalities. Analog or mixed-signal spiking neural networks (SNNs) have promise for lower power, temporally localised, and stimuli selective sensing and inference but are difficult fabricate at low cost. Investigation of beyond-CMOS alternative organic substrates may be worthwhile for development of unconventional neuromorphic hardware with pseudo-spiking dynamics for structural electronics integration in bio-signal processing and robotics. Here, polymeric organometallic ferroelectric diodes (POMFeDs) are introduced for development of printable ferroelectric in-sensor SNNs.
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