基于增材制造的高可靠性印刷神经形态电路

IF 2.8 4区 工程技术 Q3 MATERIALS SCIENCE, MULTIDISCIPLINARY
Hai-qiang Zhao, Michael Hefenbrock, M. Beigl, M. Tahoori
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引用次数: 0

摘要

物联网和可穿戴技术等新兴领域的快速发展,需要开发能够以超低成本制造的柔性、可拉伸和无毒设备。印刷电子产品已经成为一种可行的解决方案,它不仅提供了上述功能,而且还提供了高度的定制,从而实现了产品的个性化,并促进了低成本的产品开发过程,即使是小批量的。在印刷电子产品的背景下,印刷神经形态电路提供了高度定制和定制的人工神经网络实现,以通过极少量的硬件组件实现所需的功能。然而,由于使用了模拟元件,印刷的神经形态电路的性能可能受到各种因素的影响。在这项工作中,我们重点关注干扰电路输出与设计值的三个主要因素,即印刷误差引起的变化、印刷电阻器的老化效应以及传感不确定性引起的输入变化。在所描述的方法中,在设计(训练)期间将这些变化考虑在内,以确保印刷的神经形态电路的可靠性。使用这种方法,印刷神经网络的预期精度和鲁棒性可以分别提高27%和74%。此外,消融研究表明,老化效应和印刷变化可能对印刷神经网络的功能产生类似的影响。相反,传感不确定性对印刷神经网络的影响几乎与老化和印刷变化正交。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Highly-dependable printed neuromorphic circuits based on additive manufacturing
The rapid development of emerging domains, such as the Internet of Things and wearable technologies, necessitates the development of flexible, stretchable, and non-toxic devices that can be manufactured at an ultra-low cost. Printed electronics has emerged as a viable solution by offering not only the aforementioned features but also a high degree of customization, which enables the personalization of products and facilitates the low-cost product development process even in small batches. In the context of printed electronics, printed neuromorphic circuits offer highly customized and bespoke realization of artificial neural networks to achieve desired functionality with very small number of hardware components. However, since analog components are utilized, the performance of printed neuromorphic circuits can be influenced by various factors. In this work, we focus on three main factors that perturb the circuit output from the designed values, namely, variations due to printing errors, aging effects of printed resistors, and input variations originating from sensing uncertainty. In the described approach, these variations are taken into account during the design (training) to ensure the dependability of the printed neuromorphic circuits. With this approach, the expected accuracy and the robustness of printed neural networks can be increased by 27% and 74%, respectively. Moreover, the ablation study suggests that, aging effect and printing variation may have similar effects on the functionality of printed neural networks. In contrast, the impact of sensing uncertainty on printed neural networks is almost orthogonal to aging and printing variations.
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来源期刊
Flexible and Printed Electronics
Flexible and Printed Electronics MATERIALS SCIENCE, MULTIDISCIPLINARY-
CiteScore
4.80
自引率
9.70%
发文量
101
期刊介绍: Flexible and Printed Electronics is a multidisciplinary journal publishing cutting edge research articles on electronics that can be either flexible, plastic, stretchable, conformable or printed. Research related to electronic materials, manufacturing techniques, components or systems which meets any one (or more) of the above criteria is suitable for publication in the journal. Subjects included in the journal range from flexible materials and printing techniques, design or modelling of electrical systems and components, advanced fabrication methods and bioelectronics, to the properties of devices and end user applications.
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