Deep Learning for Acceleration of Plasmonic Hydrogen Sensors
Licentiatavhandling, 2025

Hydrogen-based technologies have the potential to play an important role in reducing greenhouse gas emissions and supporting a more sustainable future.
A key challenge for implementing such technologies is the high flammability of hydrogen-air mixtures, which demands fast and reliable hydrogen sensors.
Existing sensing solutions, however, fail to meet the required performance targets for response time, accuracy, and sensitivity under technically relevant conditions.
Plasmonic hydrogen sensors, which rely on the change in optical properties of Pd-based nanoparticles as they spontaneously absorb and desorb hydrogen in ambient conditions, have demonstrated fast detection capabilities in vacuum.
In practical operating conditions, however, the presence of other gases can alter the surface chemistry of the sensors, increasing response time and reducing their sensitivity and accuracy.

In this thesis, I develop an approach for accelerating plasmonic hydrogen sensors using deep learning.
I show that by learning the relationship between the temporal evolution of the optical response and the hydrogen concentration, it is possible to speed up the response time of a plasmonic sensor and more quickly discern and quantify small changes in the hydrogen concentration.
I also explore the use of deep learning for accelerating inverse design of plasmonic hydrogen sensors, optimizing nanoparticle composition and arrangement to enhance sensitivity.

neural networks

hydrogen sensing

nanoparticles

plasmonic sensing

deep learning

PJ-salen Fysik Origo
Opponent: Simon Olsson, Chalmers, Sweden

Författare

Viktor Martvall

Chalmers, Fysik, Kondenserad materie- och materialteori

Accelerating Plasmonic Hydrogen Sensors for Inert Gas Environments by Transformer-Based Deep Learning

ACS Sensors,;Vol. 10(2025)p. 376-386

Artikel i vetenskaplig tidskrift

hAIdrogen safety sensors

VINNOVA (2021-02760), 2021-10-25 -- 2024-10-24.

Drivkrafter

Hållbar utveckling

Styrkeområden

Nanovetenskap och nanoteknik

Materialvetenskap

Ämneskategorier (SSIF 2025)

Nanoteknisk materialvetenskap

Artificiell intelligens

Infrastruktur

Chalmers e-Commons (inkl. C3SE, 2020-)

Utgivare

Chalmers

PJ-salen Fysik Origo

Opponent: Simon Olsson, Chalmers, Sweden

Mer information

Skapat

2025-05-21