Back to Search Start Over

Parallel Signal Processing of a Wireless Pressure‐Sensing Platform Combined with Machine‐Learning‐Based Cognition, Inspired by the Human Somatosensory System

Authors :
Jin Kwan Park
Se Young Kwon
Jong-Gwan Yook
Chorom Jang
Chobi Kim
Steve Park
Gun Hee Lee
Junyoung Byun
Jun Chang Yang
Joo Yong Sim
Source :
Advanced Materials. 32:1906269
Publication Year :
2019
Publisher :
Wiley, 2019.

Abstract

Inspired by the human somatosensory system, pressure applied to multiple pressure sensors is received in parallel and combined into a representative signal pattern, which is subsequently processed using machine learning. The pressure signals are combined using a wireless system, where each sensor is assigned a specific resonant frequency on the reflection coefficient (S11 ) spectrum, and the applied pressure changes the magnitude of the S11 pole with minimal frequency shift. This allows the differentiation and identification of the pressure applied to each sensor. The pressure sensor consists of polypyrrole-coated microstructured poly(dimethylsiloxane) placed on top of electrodes, operating as a capacitive sensor. The high dielectric constant of polypyrrole enables relatively high pressure-sensing performance. The coils are vertically stacked to enable the reader to receive the signals from all of the sensors simultaneously at a single location, analogous to the junction between neighboring primary neurons to a secondary neuron. Here, the stacking order is important to minimize the interference between the coils. Furthermore, convolutional neural network (CNN)-based machine learning is utilized to predict the applied pressure of each sensor from unforeseen S11 spectra. With increasing training, the prediction accuracy improves (with mean squared error of 0.12), analogous to humans' cognitive learning ability.

Details

ISSN :
15214095 and 09359648
Volume :
32
Database :
OpenAIRE
Journal :
Advanced Materials
Accession number :
edsair.doi.dedup.....adb8098a3b299ea7e3645ab79328d9c4
Full Text :
https://doi.org/10.1002/adma.201906269