posted on 2023-12-08, 13:36authored byWei Ouyang, Fangyuan Luo, Youbin Yao, Bingbing Qu, Changhao Feng, Yiyuan Xie, Bin Chen
With
more attention on personal privacy and the need
for a security
defense, it is necessary to design an intelligent lock system with
a higher security performance. Here, a novel high security double
lock system integrating triboelectric nanogenerators (TENGs) with
a double bubble structure (DB-TENG) and deep learning models is proposed.
The TENG as a self-powered sensor is developed using silicone rubber
and copper foil. By optimizing the thickness of the top layer film,
surface microstructure, the size of the air bubble, and design of
the double bubble structure, the sensitivity of the DB-TENG reaches
19.08 V/kPa. For the feasibility study, the sensor is fabricated to
a smart belt to collect respiratory behaviors as a respiratory code.
A Long Short-Term Memory network is adopted to identify four typical
respiratory signals with an average accuracy of 97.00%. The system
is deployed on a Raspberry Pi to determine whether the user is permitted
through both the collected respiratory code and the related face image
and will send an alarm message if one of the two does not match. It
is worth mentioning that users can send alarm signals undiscovered
by controlling their respiratory signals. Therefore, the proposed
system has superb potential in security demanding environments.