Pixelation-Free, Monolithic Iontronic Pressure Sensors Enabling Large-Area Simultaneous Pressure and Position Recognition via Machine Learning

Authors
Kim, JuhuiLee, JunseoChoi, Kwang-hunIm, SeongilKim, Jae HongChoi, ChangsoonByun, JunghwanShin, ChanghwanJang, Ho WonJu, HyunsuLim, Jung Ah
Issue Date
2025-12
Publisher
John Wiley & Sons Ltd.
Citation
Advanced Functional Materials
Abstract
Despite significant advances, flexible pressure sensors still face critical limitations, including pixelated architecture and extensive wiring, which hinder their scalability for large-area applications. Here, we present a pixelation-free, monolithic iontronic pressure sensor that simultaneously detects pressure and position over a large area with high sensitivity (4.16 kPa(-1)), a wide detection range (<455 kPa), and excellent durability. The device, consisting of a single ionogel film bridging multiple peripheral electrodes, eliminates the structural complexity of conventional designs. Under AC bias, mechanical pressure releases ions from polymer chains inside the ionogel, increasing ionic conductivity and establishing spatially varying impedance pathways to each electrode. This enables the sensor to capture both spatial and pressure information in the output current. Continuous ion oscillation under AC bias facilitates sustained signal generation under static pressure (>3300 s) without significant degradation, thereby overcoming key limitations of conventional piezoionic pressure sensors. Machine learning algorithms effectively decouple overlapping pressure-position signals from the multichannel outputs, achieving high accuracy in pressure prediction across different spatial positions. Real-time demonstrations, including handwriting recognition with pressure-dependent color variation and simultaneous multi-point detection producing piano sounds of varying tones, highlight the versatility of the device for next-generation large-area and flexible human-machine interfaces.
Keywords
MULTILAYER FEEDFORWARD NETWORKS; flexible pressure sensor; human-machine interface (HMI); ionogel; machine learning; piezoionic; tactile sensor
ISSN
1616-301X
URI
https://pubs.kist.re.kr/handle/201004/153975
DOI
10.1002/adfm.202527178
Appears in Collections:
KIST Article > 2025
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