介电谱
数码产品
电阻抗
印刷电子产品
光谱学
材料科学
光电子学
电气工程
工程类
化学
物理
电极
电化学
量子力学
物理化学
作者
Eunsik Choi,Suwon Choi,Kunsik An,Kyung‐Tae Kang
标识
DOI:10.1038/s41528-025-00382-y
摘要
Abstract The field of printed electronics has been extensively researched for its versatility and scalability in flexible and large-area applications. Impedance is of great importance for the performance and reliability of electronics. However, its measurement requires electrical contacts, which makes it difficult on complex or bio-interfaces. Although the printing process is accessible, impedance characterization may be cumbersome, which can create a bottleneck during the manufacturing process. This paper reports the first effort at developing a convolutional neural network (CNN) based image regression model to replace impedance spectroscopy (IS). In our study, the CNN model learned the features of inkjet-printed electrode images that are dependent on the printing and sintering of nanomaterials and quantitatively predicted the resistance and capacitance of the equivalent circuit of the inkjet-printed lines. The image-based impedance spectroscopy (IIS) is expected to be the cornerstone as a revolutionary approach to electronics research and development enabled by deep neural networks.
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