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Electrohydrodynamic Printing for High Resolution Patterning of Flexible Electronics Toward Industrial Applications

INFOMAT(2024)

Huazhong Univ Sci & Technol

Cited 18|Views17
Abstract
Electrohydrodynamic (EHD) printing technique, which deposits micro/nanostructures through high electric force, has recently attracted significant research interest owing to their fascinating characteristics in high resolution (<1 mu m), wide material applicability (ink viscosity 1-10 000 cps), tunable printing modes (electrospray, electrospinning, and EHD jet printing), and compatibility with flexible/wearable applications. Since the laboratory level of the EHD printed electronics' resolution and efficiency is gradually approaching the commercial application level, an urgent need for developing EHD technique from laboratory into industrialization have been put forward. Herein, we first discuss the EHD printing technique, including the ink design, droplet formation, and key technologies for promoting printing efficiency/accuracy. Then we summarize the recent progress of EHD printing in fabrication of displays, organic field-effect transistors (OFETs), transparent electrodes, and sensors and actuators. Finally, a brief summary and the outlook for future research effort are presented.image
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Key words
display,electrohydrodynamic printing,flexible electronics,organic field-effect transistor,printhead
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