Skip to main navigation Skip to search Skip to main content

Heterogeneous Structure Omnidirectional Strain Sensor Arrays With Cognitively Learned Neural Networks

  • Jun Ho Lee
  • , Seong Hyun Kim
  • , Jae Sang Heo
  • , Jee Young Kwak
  • , Chan Woo Park
  • , Insoo Kim
  • , Minhyeok Lee
  • , Ho Hyun Park
  • , Yong Hoon Kim
  • , Su Jae Lee
  • , Sung Kyu Park
  • Chung-Ang University
  • Electronics and Telecommunications Research Institute
  • Sungkyunkwan University
  • Samsung
  • University of Connecticut

Research output: Contribution to journalArticlepeer-review

Abstract

Mechanically stretchable strain sensors gain tremendous attention for bioinspired skin sensation systems and artificially intelligent tactile sensors. However, high-accuracy detection of both strain intensity and direction with simple device/array structures is still insufficient. To overcome this limitation, an omnidirectional strain perception platform utilizing a stretchable strain sensor array with triangular-sensor-assembly (three sensors tilted by 45°) coupled with machine learning (ML) -based neural network classification algorithm, is proposed. The strain sensor, which is constructed with strain-insensitive electrode regions and strain-sensitive channel region, can minimize the undesirable electrical intrusion from the electrodes by strain, leading to a heterogeneous surface structure for more reliable strain sensing characteristics. The strain sensor exhibits decent sensitivity with gauge factor (GF) of ≈8, a moderate sensing range (≈0–35%), and relatively good reliability (3000 stretching cycles). More importantly, by employing a multiclass–multioutput behavior-learned cognition algorithm, the stretchable sensor array with triangular-sensor-assembly exhibits highly accurate recognition of both direction and intensity of an arbitrary strain by interpretating the correlated signals from the three-unit sensors. The omnidirectional strain perception platform with its neural network algorithm exhibits overall strain intensity and direction accuracy around 98% ± 2% over a strain range of ≈0–30% in various surface stimuli environments.

Original languageEnglish
Article number2208184
JournalAdvanced Materials
Volume35
Issue number13
DOIs
StatePublished - 29 Mar 2023

Keywords

  • direction recognition
  • machine learned strain sensors
  • omnidirectional strain sensors
  • strain sensor
  • stretchable electronics

Fingerprint

Dive into the research topics of 'Heterogeneous Structure Omnidirectional Strain Sensor Arrays With Cognitively Learned Neural Networks'. Together they form a unique fingerprint.

Cite this