November 22, 2024
Seyed Ehsan Habibi

Seyed Ehsan Habibi

Academic Rank: Assistant professor
Address: -
Degree: Ph.D in -
Phone: -
Faculty: Faculty of Engineering

Research

Title Position and mass identification in nanotube mass sensor using neural networks
Type Article
Keywords
Journal PROCEEDINGS OF THE INSTITUTION OF MECHANICAL ENGINEERS PART C-JOURNAL OF MECHANICAL ENGINEERING SCIENCE
DOI
Researchers Seyed Ehsan Habibi (First researcher) ,

Abstract

Carbon nanotube-based nanosensors have shown many promising potential applications in exploring the nano-world. To benefit the maximum capabilities of the nano mass sensor, it must be able to measure both of the augmented mass and its trapping position. Here, this requirement is fulfilled by employing artificial neural networks as an inverse tool. Accordingly, considering the single-walled carbon nanotube mass sensor as a vibrating Love shell, its equivalent characteristics are obtained by matching the shell response with the corresponding molecular dynamics simulation results. Then, the responses (natural frequencies) at different vibration modes are utilized for training a properly selected neural network. Afterward, the ability of the proposed neural networks to predict the mass and the trapping position of the augmented mass is investigated. The results indicated that the presented method can effectively predict the mass and position of an attached particle